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Gender and the State Politics of Policy Implementation in Education: The Interaction of Bureaucratic and Legislative Representation in India

Published online by Cambridge University Press:  07 April 2022

Kenneth J. Meier*
Affiliation:
Department of Public Administration and Policy, School of Public Affairs, American University, Washington, DC, USA Cardiff School of Business, Cardiff University, Cardiff, UK Institute of Public Administration, Leiden University, Leiden, The Netherlands
Anita Dhillon
Affiliation:
Department of Public Administration and Policy, School of Public Affairs, American University, Washington, DC, USA
*
Corresponding author: Kenneth J. Meier, email: kmeier@american.edu
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Abstract

Representation frequently links state politics to policy. Current research, however, overlooks the interplay between bureaucratic and legislative representation and how local representation may be influenced by state policy environments. There is also a need to test current theories of state politics and policy, driven by the study of US federalism, in different national contexts to indicate how general such theories might be and to provide new insights into the study of US politics and policy. This article studies how gender representation and local policy implementation interacts with state environment factors to affect representation outcomes in K–12 education across 28 states in India. The research points to the generalizability of current theories of representation and state politics across national federal contexts, the conditional nature of the influence of bureaucratic representation on state policy implementation, and the need to better understand the interdependence of representation across political institutions.

Type
Original Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2022. Published by Cambridge University Press on behalf of the State Politics and Policy Section of the American Political Science Association

The literature on state politics and policy has influenced the study of public policy in numerous policy areas including regulation (Barrilleaux Reference Barrilleaux2015; Konisky Reference Konisky2009; Woods 2015), education (Kitchens Reference Kitchens2021; Manna and Harwood Reference Manna and Harwood2011; Ross, Rouse, and Bratton Reference Song2010), immigration (Jaeger Reference Jaeger2016; Ybarra, Sanchez, and Sanchez Reference Zhu and Walker2016), healthcare (Yackee Reference Yackee2015; Zhu and Clark Reference Zhu and Clark2015), welfare (Xu, Garand, and Zhu Reference Zhang2016), and morality politics (Beer and Cruz-Aceves Reference Beer and Cruz-Aceves2018; Kreitzer Reference Kreitzer2015), among others. Central to the link between politics and policy is how representation (Burden Reference Burden2005; Kastellec Reference Kastellec2018; Robinson Reference Singh2002), including gender representation, can influence public policy to benefit the individuals being represented (Kreitzer Reference Kreitzer2015; Uhlaner and Scola Reference Vickers2016). An extensive literature focused on US states examines the influence of female legislators on policy issues that link to women’s interests (Caiazza Reference Caiazza2004; McBride and Mazur Reference McBride and Mazur2010) including reproductive health (Kreitzer Reference Kreitzer2015; Norrander and Wilcox Reference Orey, Smooth, Adams and Harris-Clark1999), violence against women (Htun and Weldon Reference Hueglin and Fenna2012; Weldon Reference Woetzel, Madgavkar, Gupta, Manyika, Ellingrud, Gupta and Krishnan2002), healthcare spending for the poor (Courtemanche and Green Reference Courtemanche and Green2017), elder care policy (Giles-Sims, Green, and Lockhart Reference Giles-Sims, Green and Lockhart2012), gun control laws (Thomas, Miller, and Murphy Reference Vickers, Krook and Mackay2008), and voter registration laws (Hicks, McKee, and Smith Reference Hicks, McKee and Smith2016) among others.Footnote 1

This study addresses three gaps in the state politics literature on gender representation. First, despite the numerous studies on gender representation in the US states, studies on how representation matters in the policy implementation process are relatively rare (see Jaeger Reference Jaeger2016; Keiser 2001; Kim and Fording Reference Kim and Fording2010; Robinson Reference Singh2002; Ross, Rouse, and Bratton Reference Song2010). Second, although local governments are often used to implement state-level policy, only a limited number of studies incorporate local bureaucratic representation (Jaeger Reference Jaeger2016; Robinson Reference Singh2002; Ross, Rouse, and Bratton Reference Song2010) and none seek to integrate local representation with state-level factors and legislative representation. Third, even though federal systems and autonomous subnational governments exist in many nations, the state politics literature is overwhelmingly focused on the US.

We seek to contribute to the state politics and policy literature with a study positioned within these three literature gaps by focusing on bureaucratic gender representation and policy implementation at the local school level as it interacts with more macro state-level political factors in India. Specifically, as Figure 1 depicts, the study addresses how female teachers as street-level bureaucrats (descriptive gender representation) at the local school level through active or symbolic representation can influence the education performance of female students within the political and economic contexts of state politics in 28 Indian states (see Figure 1). We show how policy environments (state gender equity and the socioeconomic environment) and political representation at one level (the state political environment) interact with teacher/bureaucratic representation at a lower level in ways that can enhance or impede the substantive outcomes of representation. Our objectives are both to show how the work in US state politics and policy might be generalized and also to illustrate the potential interplay of representation in various institutions (legislatures and schools) within different environmental contexts.

Figure 1. Interaction of policy and environment and political representation with the bureaucratic representation-academic achievement relationship.

Policy Theory and Representation

Although the study of state politics and policy has evolved to incorporate numerous theories applied to a wide variety of processes and outcomes, it generally retains the generic open systems logic expressed in early work (Dye Reference Dye1969; Sharkansky and Hofferbert Reference Spary, Vickers, Grace and Collier1969). A variety of economic, social, and political factors serve as inputs to political processes and institutions that generate a set of outcomes including public policy. These policies then feed back into the system to affect the original inputs and thus future politics and policy (Pierson Reference Reingold and Smith1993). The literature frequently examines whether a political factor such as representation might influence public policy. Representation studies including those focused on gender examine not just its direct effects, but also how representation might be influenced by other factors such as partisanship (Courtemanche and Green Reference Courtemanche and Green2017; Kreitzer Reference Kreitzer2015), professionalism (Cammisa and Reingold Reference Cammisa and Reingold2004), alliances (McBride and Mazur Reference McBride and Mazur2010), critical mass (Bratton Reference Bratton2005; Dahlerup Reference Dahlerup2006), institutional structures (Hicklin and Meier Reference Hicklin and Meier2008; Weldon Reference Woetzel, Madgavkar, Gupta, Manyika, Ellingrud, Gupta and Krishnan2002), and intersectionality (Fay et al. Reference Fay, Fryar, Meier and Wilkins2021; Orey et al. Reference Pierson2007; Reingold and Smith Reference Ross, Rouse and Bratton2012).

Notwithstanding the extensive literature on representation in the state politics and policy literature, three gaps are apparent. First, despite calls for including bureaucratic representation in studies of gender representation (Meier and Funk Reference Meier and Rutherford2016; Spary Reference Thomas, Miller and Murphy2020; Vickers Reference Weinstein-Tull2020), bureaucratic representation is only rarely examined and then often at an aggregate level that combines many individual bureaucracies (Zhu and Walker Reference Zhu and Walker2013) or only within a single state (Atkins and Wilkins Reference Atkins and Wilkins2013; Wilkins 2007). This gap in the literature is surprising given that federalist countries adopt many policies in education, welfare, public health, and law enforcement that are implemented by local bureaucracies that have discretion to apply policies to individual cases. Bureaucratic representation at the local level is likely to be more influential than bureaucratic representation at the state level given that local bureaucrats will interact directly with clientele and thus have more opportunities to engage in active representation. Similarly, in terms of symbolic representation, individuals have far more opportunities to interact with local bureaucrats than with those at the state level.

Second, studies of representation in the states generally treat environmental factors, whether social or economic, as controls rather than as contexts that might interact with the level of representation to augment or diminish its influence. This is surprising given the logic that representation as a political process seeks to translate inputs into outputs to benefit constituents and that such a process should be enhanced in situations with more available resources or more amenable social environments (Dhillon and Meier Reference Dhillon and Meier2022). Clearly, a state with ample economic resources or a political and social culture that favors government action should provide greater leverage for representatives who seek to use policy instruments to benefit the individuals that they represent.

Among the environmental aspects of representation not systematically addressed is the interaction of representation across institutions. The objectives of legislative and bureaucratic representation often coincide, and this suggests that there are synergies or even the potential for coalitions (Meier and Funk Reference Meier and Rutherford2016; Vickers Reference Weinstein-Tull2020, Reference Giles-Sims, Green and Lockhart26). Legislators seeing compatible bureaucratic representation might be more likely to delegate policy discretion to the bureaucracy (Krause Reference Krause and Durant2010). Similarly, bureaucrats could see representative legislators as both potential allies and as role models for aggressive action (Meier and Rutherford 2017).

Third, despite the extensive literature in US state politics and policy, the United States is only one of many federal systems; and such systems vary dramatically in terms of how they are structured. In some cases such as Canada and Switzerland, the subnational governments have substantially more formal power than the US states (Hueglin and Fenna Reference Htun and Weldon2015). Federal systems vary in how they reflect “constitutional, political, social, economic, cultural, legal, philosophical, and ideological” factors within the country (Burgess Reference Burgess2006, 1). Pushing US theories of state politics and policy into different national contexts, as a result, can indicate how general such theories might be, contribute to a comparative federalism literature, and perhaps also provide insights into new approaches to the study of politics and policy in the US. In the present case, an extensive database in India that permits comparison across local units within and across states allows testing some important theoretical relationships that might be difficult to assess in the US.

Representation: Bureaucratic and Political

Although representation can occur in both political and bureaucratic institutions, the academic study of bureaucratic representation uses somewhat different definitions and terminology despite similar theoretical processes. Both distinguish between a representative “standing for” versus “acting for” the represented (Pitkin Reference Riccucci and Van Ryzin1967). The political representation literature terms the first action “descriptive representation” and the second “substantive representation.” In contrast, the bureaucratic literature (Mosher Reference Nicholson-Crotty and Meier1968) defines the first as “passive representation” but divides the second concept into “active representation” when outcomes change as the result of the action of the representative and “symbolic representation” when the outcomes change because of something the represented does (or in bureaucratic terms the “client”).

The micro theory of substantive representation by the bureaucracy is well established for both active representation (Bishu and Kennedy Reference Bishu and Kennedy2020; Kennedy Reference Kennedy2013; Meier Reference Meier2019) and symbolic representation (Riccucci and Van Ryzin Reference Sharkansky and Hofferbert2017). The literature links descriptive representation (that is, the match up of bureaucrats and clients on various demographic characteristics) to outcomes that benefit the represented clients. Active representation is more likely to occur when a shared identity (race, gender, social class, etc.) is salient to the bureaucrat in a policy area where the bureaucrat has discretion (Keiser et al. Reference Keiser, Wilkins, Meier and Holland2002). Outcomes that benefit clients can also occur by symbolic representation. When clients see bureaucrats who look like them, they sometimes change behavior to either be more cooperative or to coproduce a policy outcome with the end result being some benefit to the client (Riccucci and Van Ryzin Reference Sharkansky and Hofferbert2017).Footnote 2

The specifics of how representation works in practice can be illustrated in the area of education policy, a topic that has generated multiple studies of representation in a wide range of settings including Ghana (Agyapong Reference Agyapong2018), Korea (Song 2018), China (Zhang Reference Zimmerman2019), and India (Dhillon and Meier Reference Dhillon and Meier2020), in addition to multiple studies in the US (Atkins and Wilkins Reference Atkins and Wilkins2013; Keiser et al. Reference Keiser, Wilkins, Meier and Holland2002; Meier Reference Meier1984). As indicated in Figure 1, the influence of female teachers on the performance of female students in classes has been demonstrated with a positive correlation between (a) descriptive representation and (b) education outcomes; this can result from either of two processes. Female teachers are likely to be aware of the pervasive stereotypes in regard to gender and spend more time encouraging female students, changing instructional patterns (see Carlana Reference Carlana2019; Keiser et al. Reference Keiser, Wilkins, Meier and Holland2002; Song 2018) or recommending students for more advanced classes or other opportunities for higher quality education (Grissom, Kern, and Rodriguez Reference Grissom, Kern and Rodriguez2015). The bureaucratic literature would consider this as an active representation. At the same time, the teacher might not act to represent female students at all, but rather simply the presence of a female teacher might motivate a female student to try harder in class, be more cooperative in the learning process (coproduction in public administration terms), or adopt the teacher as a role model (Keiser et al. Reference Keiser, Wilkins, Meier and Holland2002; Marx and Roman Reference Marx and Roman2002). A positive relationship between girls’ performance in schools and female teachers could result from either of these processes or a combination of the two (see Figure 1).Footnote 3

H1: More female teachers will be associated with better school performance by girls.

Given the specification that bureaucratic representation is more likely to occur when issues are salient and bureaucrats have the relevant discretion (Keiser et al. Reference Keiser, Wilkins, Meier and Holland2002), the theory has always recognized that context affects the representation relationship. Originally the theory included elements within the organization (hierarchy, critical mass, and centralization) as well as factors outside the organization that could affect salience or discretion (variation by time and place; see Bishu and Kennedy Reference Bishu and Kennedy2020). Meier (Reference Meier2019) sought to integrate these contextual factors by arguing that representation would be more likely to occur in situations when the benefits of representation to the bureaucrat or the client exceeded the costs.

Three potential contextual factors measured at the state level could affect the relative benefits of representation; all link to the traditional state politics concern with politics and economics—(a) the level of socioeconomic development, (b) the status of women in society, and (c) the political representation of women (see Figure 1). Each contextual variable merits discussion in turn.

For both bureaucrats and clients, representation requires some effort, doing something over and above what they would normally do. Actions include spending more time with students, advocating for a student’s interest, spending more time on homework, and seeking out extra credit or more challenging assignments. Logic suggests that both teachers and students would be more motivated to take this effort when the payoffs to such efforts would be larger. In more direct terms the payoffs to girls staying in school and performing better would be higher in contexts with greater economic development, less poverty, more labor force participation, better health, and other opportunities (see Figure 1: state socioeconomic environment). Teachers would be more likely to see a higher payoff to working more with female students, and students should perceive similar opportunities.

H2: The relationship between female teachers and girls’ school performance will increase as the socioeconomic status of the state increases.

Countries vary substantially in terms of how equally women share in the benefits of society (Ertan Reference Ellis-Petersen and Chaurasia2016; World Economic Forum Reference Yackee2019). In some countries, women still lack fundamental political and economic rights and face strong cultural preferences for male children (Edlund Reference Edlund1999). Evidence of gender-based inequalities in sex ratios, female labor force participation, female literacy, female education attainment, and voter participation can indicate whether either active or symbolic representation might generate future benefits for female students.

The case of gender equity might have different effects depending on whether the teacher engaged in active representation or the student responded to symbolic representation. For active representation, the relative gains from gender equity should outweigh the burden of representation and encourage bureaucrats to invest more time in female students, suggesting a positive relationship.Footnote 4 For symbolic representation, the relationship might actually be reversed. In a situation where women have few economic opportunities, and there are high levels of gender-based violence and restrictive customs, a female teacher might be the only nontraditional role model available to a student, and thus symbolic representation might be enhanced (see Figure 1: state gender equity).

H3: The relationship between female teachers and girls’ school performance will be moderated by the degree of gender equity in the state, and either increase the relationship if active representation occurs or decrease it if the representation is only symbolic.

Bureaucracies are open systems that operate within environments that both constrain and facilitate their actions. Favorable political representation is a potential resource for the representative bureaucrat. In a study of racial representation in US school systems, Meier and Rutherford (2017) show that African American teachers have substantially greater influence on the outcomes of African American students in school districts with favorable political environments using both partisanship and representation as indicators of a favorable environment. Political representation at higher levels might augment the potential for bureaucratic representation in two ways. If political representatives attain a critical mass (Bratton Reference Bratton2005), they could adopt policies that directly address questions of gender equality including access to education. Even without a critical mass, they could serve as highly visible symbols and role models to female teachers and school children (Beaman et al. Reference Beaman, Duflo, Pande and Topalova2012). Although female representation in Indian legislative bodies is low, averaging 10.9% in the lower house of the parliament of India (Lok Sabha) and 9.4% in the state legislative assemblies (Vidhan Sabhas), existing legislation (see below) recognizes the need to improve female educational opportunities so political representation is more likely to be symbolic than reflecting the ability to enact legislation (see also Jacob Reference Jacob2014; see Figure 1: state political environment).

H4: The relationship between female teachers and girls’ school performance will increase in states with more favorable political environments including greater representation of women legislators.

The Indian Context

India is an important case to study both gender representation and how it is affected by differences in state politics and policy given its political and governance system. Substantively, it is the world’s largest functioning democracy with nearly 1.4 billion people governed in a federalist system with lawmaking powers shared between the central government, 29 states, and 7 union territories. The Indian Constitution distributes powers between the central and state governments, with a Union List containing subjects regulated by the Center (examples include defense, foreign affairs, banking, and insurance), and a State List where states have exclusive power (examples include policing, public health, prisons, and local government). A concurrent list of subjects also exists over which both the central and state government have legislative powers and this list includes education, labor welfare, and criminal procedure among others (The Constitution of India, 7th Schedule). Unlike the US, residual lawmaking powers in India rest with the central government, but states have considerable power to create and implement policy in certain areas that could greatly affect gender outcomes, particularly in social policy, public health, education, and law enforcement.

Because the Indian states are mainly divided along linguistic and ethnic lines, federalism and the division of powers creates substantial variation in how political issues are gendered within the subnational units based on how the states use their policy discretion (Vickers Reference White, Ruther, Kahn and Dong2011; Reference Weldon2013). As a result, the country has high levels of gender and socioeconomic disparities that vary significantly across its states and regions (Spary Reference Thomas, Miller and Murphy2020, 279; Vickers Reference Weinstein-Tull2020, Reference Ellis-Petersen and Chaurasia23). Overall, gender is a salient identity in the country. India ranked 127 out of 160 countries on UNDP’s 2018 Gender Inequality Index (United Nations Development Programme Reference Vickers, Vickers, Grace and Collier2018) and 112 out of 163 countries on the 2020 Global Gender Gap Report (World Economic Forum Reference Yackee2019).Footnote 5 India underperformed on a variety of measures including economic participation and opportunity, educational attainment, political empowerment, and health outcomes. Gender disparities begin early with a child sex ratio of 111 male to 100 female births compared to 105 male to 100 female births in the US (World Bank Reference Xu, Garand and Zhu2018). Women are three times less likely to be a part of the labor force (Jayachandran Reference Jayachandran2015), and the gap between male and female labor force participation has been growing over the years (Das et al. Reference Das, Jain-Chandra, Kochhar and Kumar2015). Female children are also allowed little control over personal decisions; and parents, especially mothers, exhibit strong preferences for male children, among other negative gender attitudes (Dhar, Jain, and Jayachandran Reference Dhar, Jain and Jayachandran2018; Jayachandran Reference Jayachandran2015).

In terms of educational outcomes, women’s literacy levels are 16 percentage points below men’s, according to the 2011 Indian Census. Girl students between the ages 8–11 underperform boy students on reading and math achievement tests (White et al. Reference Woods2016), and they are less likely to continue into secondary schooling (Ministry of Human Resource Development 2018). Finally, while India has had a female Prime Minister, political representation in legislative bodies at the Central Government and State Governments and women in ministerial positions tends to be low (World Economic Forum Reference Yackee2019). Only 14% of elected members of parliament and only 9% of the political candidates in the 2019 General Elections were women (Iyer Reference Iyer2019; Jensenius and Verniers Reference Jensenius and Verniers2019).

Gender politics and gender disparities do not manifest equally across the 29 states and 7 Union Territories. As Spary (Reference Thomas, Miller and Murphy2020, 279) contends, “regional differences across India’s 29 regional governments and seven union territories also create different life opportunities, experiences of citizenship, and women’s relationship with central and regional governments.” In the context of health systems and health outcomes including maternal mortality, sex ratio at birth, and neonatal mortality, a 2019 government report found that the best-performing state in the country (Kerala) scored two and a half times higher on a composite health index than the worst-performing state (Uttar Pradesh) (NITI Aayog Reference Ojeda, Whitesell, Berkman and Plutzer2019). A gender parity index using 15 indicators such as labor force participation, child marriage, gender-based violence, and female representation in leadership roles and professional jobs, with a score of 1.0 equaling gender parity, also found wide differences among states ranging from 0.7 in Mizoram to 0.42 in Bihar (Woetzel et al. Reference Ybarra, Sanchez and Sanchez2015). Multiple studies further highlight the economic disparities across states, in terms of income per capita, educational attainment, and overall human development (Bandhyopadhyay Reference Bandhyopadhyay2013; Suryanarayana, Agarwal, and Prabhu Reference Uhlaner and Scola2011).

The Indian Education System

Indian K–12 education is delivered through nearly 1.5 million government-recognized schools with instruction offered in 31 different languages (Meganathan Reference Meganathan2011). Education policy is a concurrent subject, jointly governed by both the central and state governments, with states allowed certain autonomy over subject curricula and high school certificate examinations. The role of the central government in education policy and implementation has led to the creation of a national database of all recognized schools in the country, with annual information collected on school organizational and environmental factors, as well as student academic performance (National Institute of Educational Planning and Administration 2016).

From a policy environment perspective, the desire to reform the education system led the central government to pass the Right to Free and Compulsory Education (RTE) Act in 2009. The RTE Act is the legislative manifestation of an amendment to the Indian Constitution that grants every child the fundamental right to free, compulsory, and full-time education between the ages 6–14. It establishes norms for basic school infrastructure, student–teacher ratios, teacher training requirements, and prohibits corporal punishment among other things (Ministry of Human Resource Development 2019). Beyond the RTE Act, and to specifically tackle the gender inequalities in education, a national campaign called “Beti Bachao, Beti Padhao” (save the girl child, educate the girl child) was also launched in 2014. It aims to coordinate action between ministries to improve the sex ratio as well as ensure the survival and education of the girl child (Ministry of Women and Child Development Reference Monk2018). Both the RTE Act and the national campaign, however, are plagued by implementation issues and variations across states including poor funding, inadequate monitoring and evaluation systems, and unfocused expenditures (Nikore Reference Norrander and Wilcox2019; The Hindu BusinessLine 2017).

The variation in the policy environments and political representation across states and the salience of gender representation especially in the K–12 educational context, therefore, make India an important context in which to study how the two interact to either enhance or impede the outcomes for female students. The greater variation permits analyzing the impact of representation over a wider range of contexts than studies focused on other countries. At the same time, there are theoretical reasons to think that a study of state representation in India might generalize to other federal systems including the US and suggest similar studies in those contexts. Both India and US, for example, are federal systems that enumerate separate powers for the national and state governments as well as a set of shared powers. Although the Indian Constitution and experience vests greater powers in the national government, it is important to note that the relative power of state and national governments varies over time in both countries (Vickers Reference Weinstein-Tull2020, 18). Since 1950 the US system has clearly become more centralized with federal mandates affecting law enforcement policy (Nicholson-Crotty and Meier 2003), voting rights (Weinstein-Tull Reference Wilkins2016), minimum drinking ages (Zimmerman Reference Zimmerman2001), welfare policy (Ojeda et al. Reference Parvaiz2019), the ability to tax (Tax Cut and Jobs Act of 2017), and many other areas. Similarly, with a 1994 Supreme Court case (S.R. Bommai v. Union of India) restricting the central government’s ability to intervene in state affairs, Indian federalism (at least until Narendra Modi became the Prime Minister) was moving toward less centralization (Spary Reference Thomas, Miller and Murphy2020; Vickers Reference Weinstein-Tull2020).

A second argument for application is that the representation theory presented here is general and not country specific. The logic that representation at one level could relate to and interact with representation at another level of government or across institutions is not context-dependent at least among democracies. In the same manner, the idea that representation depends on the relative resources available is inherent in the basic systems notions that underlie much of state policy research. While the US states are far more developed economically than the Indian states, at times the differences are not so extreme as to render the findings completely incomparable. For example, in 2018 five Indian states had lower infant mortality rates than Mississippi; the highest female labor force participation rate in India (53.8%) was not dramatically lower than that for West Virginia (62.9%). Women’s representation in India is lower but the ranges overlap. As an example, state female representation in the US House of Representatives in our time period averaged 19.3% with a range of 0 to 100; the mean for the percentage of women that were elected to each Indian state’s delegation to the Lok Sabha was 10.9% with a range of 0% to 28.6%. In terms of representation in the lower house of the state legislature, West Bengal had better female representation (14%) than three US states (Oklahoma, Louisiana, and Utah). While Indian states are far more diverse in terms of ethnicity, language, and culture than the US states, demographic changes as the result of immigration and differing birth rates among subpopulations, indicate that US states are moving in the direction of greater diversity.

The US and Indian state politics and policy contexts, as a result, are similar enough that analysis in one could be used as a proof of concept for hypotheses in the other. Such an interchange of theory and analysis across federal systems holds potential benefits for the study of subnational politics and federalism.

Data

To analyze the hypotheses in this article, we compiled a dataset containing annual K–12 school organizational data and state-level environmental data from various official Indian Government sources. The school-level dataset was obtained from the Unified Information System for Education (U-DISE) in the Ministry of Human Resource Development. It has annual organizational information of all recognized schools in India (nearly 1.5 million), including infrastructure, demographic make-up, student and teacher counts, academic achievement, and funding (National Institute of Educational Planning and Administration n.d.). Given the data availability for key variables in this study, four years of observations (2014–15 to 2017–18) were retained in the dataset. The unit of analysis for this study, therefore, is an individual K–12 school in each of the four years of observation.

A range of state-level measures that determine socioeconomic health, gender disparity, and political representation of women were collected from various government sources as outlined in Appendix A. Not all state-level measures had information for each year included in our analysis and were therefore interpolated using data from the years closest to those included in the analysis. State-level data was also difficult to obtain for the seven union territories and the state of Telangana that was formed in the year 2014; those jurisdictions were omitted from the analysis, leaving 28 states in the dataset (The state of Jammu and Kashmir, which was included in this analysis, was dissolved in 2019 and reorganized into Union Territories).

The Dependent Variable

Female academic achievement is measured using each school’s eighth grade end-of-year examinations. The eighth-grade examinations are a crucial milestone for Indian students to ensure entry into secondary school (Grades 9–10) where they prepare for centralized public examinations that decide their future academic path. The eighth-grade exam results are, therefore, considered a signal by schools on whether students are ready to sit for those crucial public examinations, making them a salient measure of academic achievement. The U-DISE dataset has information on the number of students who scored 60%+(equivalent to a first-class grade) in their examinations, across all subjects. Given the signaling nature of these scores, we use the 60%+measure as our dependent variable. This also means that our dataset is restricted to those schools that have an eighth grade.

Independent and Moderating Variables

The percentage of female teachers in each school is the main explanatory variable in our model. After grade four, students typically encounter specialized subject teaching and interact with most teachers in their school either through class or through extracurricular and cocurricular activities. We therefore use an organization-wide measure of gender representation to complement the overall academic performance measure (as opposed to subject-specific performance).

To assess the moderating influence of the state’s policy environment, we included several state-level social, economic, and political health measures. First, to estimate the socioeconomic environment of the state, we performed a principal component factor analysis on eight variables for each state: the literacy rate, labor force participation, poverty rate, primary school and higher education enrollment, state domestic product, child stunting, child mortality rate, and the percentage of population living in urban areas. Table A.1 lists these variables and their measures and Table B.1 indicates their factor loadings. The scree plot indicated a one-factor solution with an eigenvalue of 5.2 explaining 58% of the variance; that factor is our measure of state socioeconomic environment. Schools with higher values for this factor are located in states that have higher levels of labor force participation, literacy, education participation, urban population, and per capital domestic product, and lower levels of poverty, child stunting, and child malnutrition.

Second, to specifically measure opportunities for women and their participation in society, we created a factor from five variables measuring the sex ratio, female labor force participation, female literacy rate, female enrollment in higher education institutions for tertiary education, and women’s voter participation rates in the 2014 general election. The analysis generated one factor with an eigenvalue of 2.3 that explained 46% of the variance among the variables (refer to Table B.2 for the factor loadings). This factor was retained as the state female development factor; higher values indicate more economic and social participation by women.

Finally, we used two variables to capture political representation for women. We used the percent of women elected to each state’s delegation to the Lok Sabha (the lower house of India’s parliament) and the percent of women who were elected to their respective state’s Vidhan Sabha (state legislative assembly). The two measures are only moderately correlated with each other (r = 0.2).

Controls

To provide for important school-level factors that may affect student performance and gender representation, we control for student, teacher, and school infrastructure-related characteristics. In terms of student and teacher characteristics, we included the student–teacher ratio, number of instructional days, number of daily hours that teachers work, caste-related diversity in the student body, and the percentage of teachers who were either college graduates or had professional teacher qualifications. In terms of management and infrastructure characteristics, we controlled for English being the medium of instruction, if the school was government-run or privately-run, its location in a rural versus urban area, the ratio of female to male students in the school, and two factors capturing the physical infrastructure availability and management quality of the school (more details on these measures can be found in Dhillon and Meier Reference Dhillon and Meier2020). These variables cover a range of factors that research suggests may affect academic achievement and the ability of teachers to represent (Monk Reference Mosher1989). At the state level, we also control for state expenditures on education and partisanship (both votes and representation for the governing political party [Bharatiya Janata Party]).

Table 1 shows the descriptive statistics for all variables. The numbers showcase the extreme variation in resources and task complexity in K–12 education in India. Since the dataset includes all government-recognized schools that teach eighth grade, it covers areas that were in active armed conflict (Parvaiz Reference Rallings, Thrasher, Johnston and Downe2017), faced natural disasters during certain parts of the year (Paik Reference Pitkin2017), or had very low student populations (Ellis-Petersen and Chaurasia Reference Ertan2020). This is evidenced by some schools having as few as 2 hours of average teaching per day in the school year or only 30 instructional days in the year. Additionally, the chronic shortage of trained teachers in the country has meant that some schools have no teachers with professional qualifications. As of 2017, 1.1 million untrained teachers were in the current workforce despite the RTE Act of 2009 specifying the need for them to gain the required educational qualifications by 2015 (Singh Reference Suryanarayana, Agarwal and Prabhu2017).

Table 1. Descriptive statistics

Method

We analyzed the data in two stages. First, pooled OLS estimates were generated, with year fixed effects to control for any time-dependent variation and standard errors clustered at the state level to adjust for heteroskedasticity across states. This allowed us to estimate the relationship between each state-level moderating variable and female academic achievement. Next, to investigate how various factors can enhance or limit the ability of local bureaucrats to affect policy outcomes, we interacted each of the hypothesized moderating variables with the percentage of female teachers to estimate the marginal effect of the state environment on the representation relationship.Footnote 6

Results

Table 2 contains the results of the clustered OLS model with school and state-level controls. Reflecting the unsupportive environment for gender representation and the status of women in India, the relationship between the percent of female teachers and female academic achievement is modest, a standard deviation change in the percentage of women teachers is associated with an increase of approximately 2.5 percentage points in girls passing at the level of 60%+(column 1).Footnote 7 The addition of state-level controls (column 2) results in only a slight decrease in this relationship (to approximately 2.4 percentage points). These results support hypothesis 1 on the relationship between bureaucratic gender representation and the performance of girls in school. As hypothesized, the substantively modest relationship also highlights the conditional nature of gender representation in schooling in the country.

Table 2. Pooled OLS estimates with school-level and state-level controls

Note. Robust standard errors in parentheses.

*** p < 0.01;

** p < 0.05;

* p < 0.1.

The state-level relationships show that significant variation exists across the states in India. Girls’ academic achievement is positively associated with the socioeconomic development factor, and whether BJP is the majority party at the state level, and negatively associated with the state female development factor and the percent of women elected to the state’s legislative body. The two relationships for the socioeconomic factors are both robust statistically. On average, schools located in states that are more socioeconomically developed have a higher female academic achievement (a one standard deviation increase relates to a 7.7 percentage point increase in female students scoring 60%+in the exam), all other things being equal. Similarly, schools located in states that report better socioeconomic outcomes specifically for women have lower female academic achievement (a 1 SD increase leads to 5.7 percentage point decrease in female students scoring 60%+in the exam). Although the negative relationship for female socioeconomic outcomes might appear counterintuitive, this relationship needs to be interpreted in light of the control for overall socioeconomic development. States can score high on this dimension even if women in the state are worse off than women in other states because the measure is essentially normed to the relative status of women to men within a state.

Both the political relationships are somewhat counterintuitive. In states where BJP holds a majority in the state legislature, academic achievement rates for girls are 9.355 percentage points higher all things being equal, and states with more female members in the state legislative bodies are associated with lower female academic achievement (a 1% increase in seats held by women leads to a 1.2 percentage point decrease in female achievement). There are four reasons to discount these relationships. First, BJP is a right-wing Hindu nationalist party that is not associated with pro-female policy positions. Second, the state and national data for BJP are highly collinear and the coefficient estimate is heavily reliant on a single state (Andhra Pradesh) that has a state BJP majority but not a BJP majority in its national legislative delegation (see Table C.1). When that state is omitted from the analysis, the coefficient effectively drops to zero (t = 0.07). Third, the percentages of female legislators are well below any critical mass needed to pass positive legislation and might also simply reflect other state conditions that permit modest levels of gender representation along with low test scores. Finally, neither relationship is particularly robust rising only to the 0.10 level of statistical significance, a low standard given the large number of cases.

Table 3 models the interactive relationships between female teacher percentage and the relevant state-level variables, to explore the contextual variation in the overall development climate and its influence on the ability of female teachers to represent. Since interactions between continuous variables can be difficult to interpret, Figure 2 plots the average marginal relationship between female teachers and female academic performance at different levels for each of the moderating variables. Figure 2a shows that the state socioeconomic factor has a positive moderating influence on the representation relationship. This moderating influence is modest, however, owing to few states exhibiting higher levels of socioeconomic development.Footnote 8

Table 3. Moderating relationship between gender representation and state characteristics

Note. Standard errors in parentheses.

*** p < 0.01;

** p < 0.05;

* p < 0.1.

Figure 2. Moderating influence of state characteristics on the representation relationship at 90% confidence intervals.

The three measures depicting female economic and political participation, however, have a stronger moderating influence on the representation relationship. Figure 2b shows that at low values of the female development factor, indicating low levels of female economic and political participation, the relationship between female teacher percentages and female student academic achievement is not significant. The relationship becomes significant in states that report better outcomes for females, and the coefficient more than doubles (0.18) for those states with the highest factor values (supporting hypothesis 3). Similarly, while the representation relationship is insignificant in states where less than 8% of women hold state legislative seats and less than 5% hold Lok Sabha seats, the states with the highest percentages of elected women lawmakers see a significant and stronger than the average relationship between female teachers’ percentages and female academic achievement (Figure 2c,d). Both of these representational interactions support hypothesis 4.Footnote 9

Discussion and Conclusion

This study examined female bureaucratic representation in several hundred thousand schools over four years across 28 states in India. The primary objective was to determine how contextual factors such as economic resources, gender equality, and legislative representation influenced the effectiveness of local bureaucratic representation. Consistent with a growing literature, the study shows that female teachers are associated with higher test scores for female students and this bureaucratic representation exists even though representation in either state legislatures or the national legislature has no direct positive effect. The representation influence of female teachers on female students, however, is sensitive to environmental conditions that provide a favorable context for the representation. The estimated influence of female bureaucratic representation increases in states with greater gender equity and in states with more female legislative representation at the state and national levels. These results have implications for both the study of representation and the general study of state politics and policy.

First, bureaucratic representation and legislative representation are separate but interdependent processes. In the Indian case, direct bureaucratic representation exists even though there is no positive association between female legislative representation at either state or national levels and female student results. Although generalizing from one case is always speculative, a reasonable hypothesis going forward is that bureaucratic representation can operate separately from legislative representation and that there might be cases where the two can substitute for each other. Equally important, the influence of bureaucratic representation was greater in states where women were better represented in the state delegation to the national legislature and in the state legislature. This suggests that the representation processes are interdependent. The exact nature of this interdependence, however, needs to be theorized. Is it the result of coalitions among bureaucrats and legislators, the result of teachers reacting to the symbolic representation of women legislators, or perhaps the result of students reacting to symbolic representation of both female politicians and female teachers? Both additional empirical tests and developing more nuanced theory are necessary.

Second, if the representation of a street-level bureaucracy at the local level can be moderated by representation at a much higher level that is well removed from actual bureaucratic actions, then it is feasible that representation processes in all institutions might perform similar functions. Within public administration, representation at the local level could be affected by representation at the state level either through direct interaction, policy making by the higher level, or simply symbolic representation. Similarly, legislative representatives are likely to have their influence increased to the extent they operate in contexts with greater bureaucratic representation (at career or political executive levels), with greater interest group representation, and perhaps even with greater intergovernmental representation.

Third, representation is a process, and as a process, it translates inputs to policy outputs and outcomes. Logic suggests, therefore, that representation should reflect the inputs that it has at its disposal similar to how teacher representation was enhanced by a more gender-equitable environment. The implication is that strategic legislators or other representatives are likely to be aware of the potential resources they might tap into or the policy areas where a representative nudge might produce greater total benefits. This logic is highly consistent with the research showing that female legislative representation is influenced by partisanship (Courtemanche and Green Reference Courtemanche and Green2017; Kreitzer Reference Kreitzer2015), professionalism (Cammisa and Reingold Reference Cammisa and Reingold2004), critical mass (Bratton Reference Bratton2005), institutional structures (Hicklin and Meier Reference Hicklin and Meier2008), and intersectionality (Orey et al. Reference Pierson2007; Reingold and Smith Reference Ross, Rouse and Bratton2012).

Fourth, the theories and logic of US state politics and policy can be applied fruitfully outside the US context. The scholarly advantages of a comparative interchange are numerous. Subnational structures exist in a wide variety of countries and application of US theories to such cases can determine how general our theories and methods are. Our review of the articles published in State Politics and Policy Quarterly, however, found only two studies using non-US data (Beer and Cruz-Aceves Reference Beer and Cruz-Aceves2018; Rallings et al. Reference Robinson2004). Across countries, subnational governments vary in their level of autonomy relative to national governments, and this can turn factors that are constant or nearly so in the US (bicameralism) into variables to study. Non-US cases can at times bring better or more appropriate data to important questions in US state politics. The current study, for example, would be difficult to conduct in the US given its reliance on outcomes that are not easily comparable across states. Similarly, many countries can provide more fine-grained data that permit examining the match between bureaucratic and client characteristics at the individual level (see Guul Reference Guul2018).

Fifth, although the specific study dealt with gender representation in India with a focus on education, the theoretical arguments were presented in general terms and should be testable in many different areas. The logic of representatives in different institutions having multiplicative effects could be applied to representation in race, ethnicity, sexual orientation, or other politically salient identities. Similarly, the idea that representatives use the contextual resources at their disposal to enhance their influence appears to be a reasonable strategy whether the representative is a legislator, a street-level bureaucrat, an elected executive, a politically appointed executive, or an interest group leader. Positioning other studies such as this one in other national contexts could also contribute to a more general understanding of how representatives can effectively represent.

Finally, the substantive and theoretical importance of India for the student of gender equity and representation should be underscored. As the world’s largest federal democracy, even the relatively modest impact of female teachers on female students has a cumulative impact on millions of people. Theoretically, the case of India has far more variation on both independent and dependent variables than those that are more frequent in the literature. As such, it allows a greater understanding of how representation and gender interact in conditions that are more representative of the world than cases from highly developed Western nations.

Despite these advantages, the current study is only a small step on what could be a massive research agenda. It is possible that teachers are an exceptional case of individuals who are knowledgeable about politics and attuned to the benefits of symbolic representation. Only studies in other policy areas can determine this, and street-level bureaucracies in US states in other countries exercise substantial discretion in health policy, employment, social welfare, and other areas. Gender is also only one identity among many that might be salient in different country contexts. Finally, the various institutions that represent and their relative strength varies across nations.

Data Availability Statement

Replication materials are available on SPPQ Dataverse as Meier and Dhillon (Reference Dhillon and Meier2022) at https://doi.org/10.15139/S3/LW9D7D.

Funding Statement

The authors received no financial support for the research, authorship, and/or publication of this article.

Conflict of Interest

The authors declared no potential conflicts of interest with respect to the research, authorship, and/or publication of this article.

Acknowledgments

We would like to thank Charles Barrilleaux, Daniel Hawes, Chris Mooney, and Rene Rocha for helpful comments on an earlier draft.

Appendix A. Information on Variables

Table A.1. Description of and source for each variable used in the analysis

Appendix B. Information on State-Generated Factors

Table B.1. Factor loadings for the state socioeconomic factor

Table B.2. Factor loadings for state female development factor

Appendix C. Sensitivity Analysis for the Relationship Between Political Factors and Female Academic Achievement

Table C.1. Pooled OLS estimates with a dummy variable for Andhra Pradesh state

Note. Robust standard errors in parentheses.

Author Biographies

Kenneth J. Meier is a Distinguished Scholar in Residence at the School of Public Affairs, American University, Professor of Bureaucracy and Democracy at Leiden University (the Netherlands), and a Professor of Public Management at the Cardiff School of Business, Cardiff University (Wales). His research interests include public management, the role of bureaucracy in democratic systems, comparative public administration, and behavioral approaches to public administration.

Anita Dhillon is a PhD candidate in public administration and public policy at the School of Public Affairs, American University. Her research interests focus on social welfare policies, human resource management, nonprofits, and organizations under stress. Her dissertation is on child protective services in the US and she has previously published in International Public Management Journal.

Footnotes

1 Although our focus is on gender representation at the state and local levels, there is an extensive literature on gender representation in a wide variety of political institutions that is both nation specific and cross-national in approach (see Dahlerup Reference Dahlerup1988; Gray Reference Gray2006; Htun and Weldon Reference Hueglin and Fenna2012; Mansbridge Reference Mansbridge1999).

2 Passive descriptive representation can also result in the client perceiving the bureaucrat’s action as more legitimate and generating diffuse support for the bureaucracy. This is similar to the literature that shows same race and gender candidates for office influencing the attitudes of individuals about the political system or willingness to participate (Barreto Reference Barreto2007; Gilliam Reference Gilliam1996; Uhlaner and Scola Reference Vickers2016).

3 Most datasets simply do not have sufficient information on both the individual actions of the bureaucrats and the clients to distinguish between the two processes. Guul (Reference Guul2018) is able to get leverage on this question in the case of employment counseling and finds both processes at work.

4 Recent theory (Meier Reference Meier2019) argues that bureaucratic representation responds to the level of inequality which suggests that there might be nonlinearities in the linkage between representation and the environment.

5 The US ranks 17th and 53rd on these respective indexes.

6 Detailed analytic steps, including the corresponding dataset, can be found in the SPPQ Dataverse page for this manuscript.

7 We also tested this relationship for a critical mass by adding the percentage of female teachers squared. While the estimate was significant, the impact was very gradual and appeared to be more diminishing marginal returns than a critical mass effect.

8 Of the 28 states included in the analysis, 20 states have a socioeconomic factor measure between −0.5 and 1.5, with only 3 states having a measure above 1.5.

9 The interaction terms in Table 3 are not significant for three of the four moderators because the marginal effects across the range of the moderating variable values are themselves are not statistically significantly different from one another. Our hypotheses are, however, supported by the evidence that at the representation relationship becomes significant and positive at the higher values of the moderating variables, thereby highlighting the conditional nature of gender representation.

*** p < 0.01;

** p < 0.05;

* p < 0.1.

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Figure 0

Figure 1. Interaction of policy and environment and political representation with the bureaucratic representation-academic achievement relationship.

Figure 1

Table 1. Descriptive statistics

Figure 2

Table 2. Pooled OLS estimates with school-level and state-level controls

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Table 3. Moderating relationship between gender representation and state characteristics

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Figure 2. Moderating influence of state characteristics on the representation relationship at 90% confidence intervals.

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Table A.1. Description of and source for each variable used in the analysis

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Table B.1. Factor loadings for the state socioeconomic factor

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Table B.2. Factor loadings for state female development factor

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Table C.1. Pooled OLS estimates with a dummy variable for Andhra Pradesh state