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Better Know Your Dependent Variable: A Multination Analysis of Government Support Measures in Economic Popularity Models

Published online by Cambridge University Press:  10 February 2010

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References

1 Nadeau, Richard, Niemi, Richard and Amato, Timothy, ‘Prospective and Comparative or Retrospective and Individual? Party Leaders and Party Support in Great Britain’, British Journal of Political Science, 26 (1996), 245258CrossRefGoogle Scholar; Clarke, Harold, Mishler, William and Whiteley, Paul, ‘Recapturing the Falklands: Models of Conservative Popularity, 1979–1983’, British Journal of Political Science, 20 (1990), 6381CrossRefGoogle Scholar; and Crespi, Irving, ‘The Case of Presidential Popularity’, in A. Cantril, eds, Polling on the Issues (Washington, D.C.: Seven Locks Press, 1980)Google Scholar.

2 Bingham Powell, G. and Whitten, Guy, ‘A Cross-National Analysis of Economic Voting: Taking Account of the Political Context’, American Journal of Political Science, 37 (1993), 391414CrossRefGoogle Scholar; and Persson, Torsten and Tabellini, Guido, Political Economics: Explaining Economic Policy (Cambridge, Mass.: MIT Press, 2000)Google Scholar.

3 For example, compare vote choice studies, such as Fiorina, Morris P., ‘Economic Retrospective Voting in American National Elections: A Micro-Analysis’, American Journal of Political Science, 22 (1978), 426443CrossRefGoogle Scholar; Fiorina, Morris P., Retrospective Voting in American National Elections (New Haven, Conn.: Yale University Press, 1981)Google Scholar; and Kiewiet, D. R., Macroeconomics and Micropolitics: The Electoral Effects of Economic Issues (Chicago: University of Chicago Press, 1983)Google Scholar, to presidential approval studies, such as MacKuen, Michael B., Erikson, Robert S. and Stimson, James A., ‘Peasants or Bankers? The American Electorate and the US Economy’, American Political Science Review, 86 (1992), 597611CrossRefGoogle Scholar.

4 Paldam, Martin, ‘How Robust Is the Vote Function? A Study of 17 Nations over Four Decades’, in Helmut Norpoth, Michael S. Lewis-Beck and Jean-Dominique LaFay, eds, Economics and Politics: The Calculus of Support (Ann Arbor: The University of Michigan Press, 1991).Google Scholar

5 Key, V. O. Jr, The Responsible Electorate: Rationality in Presidential Voting: 1936–1960 (Cambridge, Mass.: The Belknap Press of Harvard University Press, 1966)CrossRefGoogle Scholar; Key, V. O. Jr, Politics, Parties, and Pressure Groups, 5th edn (New York: Thomas Y. Crowell, 1964)Google Scholar; and Downs, Anthony, An Economic Theory of Democracy (New York: Harper and Row, 1957)Google Scholar. Important works that are motivated in this way include: Norpoth, Helmut, ‘Presidents and the Prospective Voter’, Journal of Politics, 58 (1996), 776792; MacKuen, Erikson and Stimson, ‘Peasants or Bankers?’CrossRefGoogle Scholar; Chappell, Henry W. and Keech, William R., ‘A New View of Political Accountability for Economic Performance’, American Political Science Review, 79 (1985), 1027CrossRefGoogle Scholar; and Beck, Nathaniel, ‘The Economy and Presidential Approval: An Information Theoretical Perspective’, in Norpoth, Lewis-Beck and LaFay, eds, Economics and PoliticsGoogle Scholar. There are also, of course, well-known examples of US economic popularity studies that are explicitly concerned with presidential approval and are motivated as such. For example: Hibbs, Douglas A. Jr, ‘On the Domain for Economic Outcomes: Macroeconomic Performance and Mass Political Support in the United States, Great Britain, and Germany’, Journal of Politics, 44 (1982), 426462CrossRefGoogle Scholar; and Kernell, Samuel, ‘Explaining Presidential Popularity’, American Political Science Review, 72 (1978), 506522CrossRefGoogle Scholar.

6 For example, Key, , The Responsible Electorate, pp. 5862.Google Scholar

7 For example, Norpoth, Helmut, ‘Presidents and the Prospective Voter’, and Morris Fiorina, Retrospective Voting in American National Elections New Haven, Conn.: Yale University Press, 1981).Google Scholar

8 For example, Frey, Bruno and Schneider, Friedrich, ‘An Empirical Study of Political-Economic Interaction in the United States’, Review of Economics and Statistics, 60 (1978), 174183; MacKuen, Erikson and Stimson, ‘Peasants or Bankers?’CrossRefGoogle Scholar; and Mueller, John E., ‘Presidential Popularity from Truman to Johnson’, American Political Science Review, 64 (1970), 1834CrossRefGoogle Scholar.

9 Beck, , ‘The Economy and Presidential Approval’.Google Scholar

10 On the dampening of vote intention volatility produced by partisan identification see: Converse, Philip E. and Dupeux, Georges, ‘Politicization of the Electorate in France and the United States’, Public Opinion Quarterly, 26 (1962), 123CrossRefGoogle Scholar; and Kayser, Mark and Wlezien, Christopher, ‘Performance Pressure: Patterns of Partisanship and the Economic Vote’ (unpublished manuscript, 2007)Google Scholar.

11 On vote choice: Fiorina, ‘Economic Retrospective Voting in American National Elections’; Fiorina, Retrospective Voting in American National Elections; and Kiewiet, Macroeconomics and Micropolitics. On presidential approval: MacKuen, Erikson and Stimson, ‘Peasants or Bankers?’

12 Erikson, Robert S. and Wlezien, Christopher, ‘Presidential Polls as a Timeseries: The Case of 1996’, Public Opinion Quarterly, 63 (1999), 163177CrossRefGoogle Scholar; Jackman, Simon, ‘Pooling the Polls over an Election Campaign’, Australian Journal of Political Science, 40 (2005), 499517CrossRefGoogle Scholar; Pickup, Mark and Johnston, Richard, ‘Campaign Trial Heats as Election Forecasts: Measurement Error and Bias in 2004 Presidential Campaign Polls’, International Journal of Forecasting, 24 (2008), 272284CrossRefGoogle Scholar; and Pickup, Mark and Johnston, Richard, ‘Campaign Trial Heats as Election Forecasts: Evidence from the 2004 and 2006 Canadian Elections’, Electoral Studies, 26 (2007), 460476CrossRefGoogle Scholar.

13 Campbell, James E., ‘Forecasting the Presidential Vote in 2004: Placing Preference Polls in Context’, PS: Political Science & Politics, 37 (2004), 763767Google Scholar; Campbell, James E., ‘Evaluating the Trial-Heat and Economy Forecast of the 2004 Presidential Vote: All’s Well that Ends Well’, PS: Political Science & Politics, 38 (2006), 763767Google Scholar; Whiteley, Paul, ‘Electoral Forecasting from Poll Data: The British Case’, British Journal of Political Science, 9 (1979), 219236CrossRefGoogle Scholar; and Kayser and Wlezien, ‘Performance Pressure: Patterns of Partisanship and the Economic Vote’.

14 Erikson, Robert S., Bafumi, Joseph and Wilson, Bret, ‘Could the Close 2000 Elections Have Been Predicted?’, PS: Political Science and Politics, 34 (2001), 815819.Google Scholar

15 Wlezien, Christopher and Erikson, Robert S., ‘Temporal Horizons and Presidential Election Forecasts’, American Politics Quarterly, 24 (1996), 492505.CrossRefGoogle Scholar

16 Christopher Wlezien graciously provided the necessary data.

17 Samuel, Kernell and Douglas, Hibbs Jr, ‘A Critical Threshold Model of Presidential Popularity’, in D. A. Hibbs, Jr and H. Fassbender, eds, Contemporary Political Economy (Amsterdam: North-Holland, 1981).Google Scholar

18 Campbell, Angus, Converse, Philip, Miller, Warren and Stokes, Donald, The American Voter (New York: Wiley, 1960)Google Scholar; Miller, Warren E. and Stokes, Donald E., ‘Constituency Influence in Congress’, American Political Science Review, 57 (1963), 4556CrossRefGoogle Scholar; Butler, David and Stokes, Donald, Political Change in Britain: The Evolution of Electoral Choice (London: Macmillan, 1974)CrossRefGoogle Scholar; and Budge, Ian, Crewe, Ivor and Farlie, Dennis, Party Identification and beyond: Representations of Voting in the Party Competition (London: John Wiley, 1976)Google Scholar.

19 The two inequalities simply require that a government identifier is not going to vote for an opposition party/candidate while still approving of the government and an opposition identifier is not going to vote for the government while they disapprove of it.

20 See Appendix, Note 1, in the Supplementary Materials on the website 〈journals.cambridge.org/jps〉 for a demonstration of why this is always true.

21 Butler, David and Stokes, Donald, Political Change in Britain (New York: St Martin’s, 1969); and Budge, Crewe and Farlie, Party Identification and Beyond.Google Scholar

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25 Plots of the data and the rationale for the time period studied for each case is provided in the Appendix, Note 2, in the Supplementary Materials on the website 〈journals.cambridge.org/jps〉.

26 Note 8, in the Supplementary Materials on the website 〈journals.cambridge.org/jps〉.

27 The mean squared perturbation is similar to the variance but squares the difference between a month’s value and the previous month’s rather than the series’ mean. This is more appropriate in this context, as it is the month-to-month stability that is of greatest interest and the variance will overstate the month-to-month instability in a series that trends.

28 Further details are provided in the Appendix, Note 3, in the Supplementary Materials on the website 〈journals.cambridge.org/jps〉.

29 FPE = final prediction error, AIC = Akaike’s information criterion, SBIC = Schwarz’s Bayesian information criterion and HQIC = Hannan and Quinn information criterion.

30 This produces a structural VAR that has a recursive structure and so a causal interpretation can be applied.

31 For a description of the economic data used in these models, see Appendix, Note 4, in the Supplementary Materials on the website 〈journals.cambridge.org/jps〉.

32 The post-election trending is modelled using three count variables that begin the month after each election.

33 Clarke, Harold and Lebo, Matthew, ‘Fractional (Co)integration and Governing Party Support in Britain’, British Journal of Political Science, 33 (2003), 283301.CrossRefGoogle Scholar

34 The impact of 9/11 is estimated using a dummy that equals one for the month of the event and the four months following. The impact of the second Iraq war is estimated by a variable that equals the cumulative number of British casualties in Iraq.

35 The Appendix, Note 5, in the Supplementary Materials on the website 〈journals.cambridge.org/jps〉, describes the transformation for this particular ECM. For further details, see Banerjee, Anindya, Dolado, Juan, Galbraith, John W. and Hendry, David F., Co-integration, Error-Correction, and the Econometric Analysis of Non-Stationary Data (Oxford: Oxford University Press, 1993)CrossRefGoogle Scholar; and Hendry, David F., Dynamic Econometrics (Oxford: Oxford University Press, 1995)CrossRefGoogle Scholar. For an example of the use of the dead-start autoregressive distributive-lag model in the British context, see David Sanders, ‘The Real Economy and the Perceived Economy in Popularity Functions: How Much Do Voters Need to Know? A Study of British Data, 1974–97’, Electoral Studies, 19 (2000), 275294Google Scholar.

36 The ECMs were estimated in WinBUGS. See the Appendix, Note 6, in the Supplementary Materials on the website 〈journals.cambridge.org/jps〉 for further estimation details.

37 The direction of the effect is as we would expect for unemployment but a little peculiar for inflation.

38 Note that the largest one-month increase during this period is 0.2 percentage points.

39 Norpoth, Helmut, ‘Party Identification in West Germany: Tracing an Elusive Concept’, Comparative Political Studies, 11 (1978), 3661.CrossRefGoogle Scholar

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41 The Appendix, Note 3, in the Supplementary Materials on the website 〈journals.cambridge.org/jps〉, provides a translation of these questions.

42 These complications include the fact that the New Federal States (former East Germany) are substantively different, both economically and politically, than the Old Federal States (Feld, Lars P. and Kirchgässner, Gebhard, ‘Official and Hidden Unemployment in the Popularity of the Government: An Econometric Analysis for the Kohl Government’, Electoral Studies, 19 (2000), 333347.CrossRefGoogle Scholar

43 See the Appendix, Note 2, in the Supplementary Materials on the website 〈journals.cambridge.org/jps〉, for the relevant figure.

44 The cycling is captured by including two terms in the regression: [Θ1(sin (λθ)] and [Θ2(cos (λθ)], where Θ1 and Θ2 are the parameters to be estimated and λ is the frequency (1/wavelength) of the popularity cycle, which is defined by the length of the inter-election period. Estimated parameters Θ1 and Θ2 can be used to calculate the phase for the inter-election cycle.

45 The correlation is also relatively large at the individual level, ranging in any given month from 0.6 to 0.7.

46 As before, the assumption of covariance stationarity requires that non-stationary dynamics be accounted for in the models. As it turns out though, once economic variables are included in the following models, the inter-election cycle is statistically insignificant. Therefore, for the sake of efficiency, the ECMs only include the trending term.

47 For a description of the economic data used in these models, see the Appendix, Note 4, in the Supplementary Materials on the website 〈journals.cambridge.org/jps〉.

48 Campbell, Converse, Miller and Stokes, The American Voter.

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53 See Johnston, Richard, ‘Party Identification: Unmoved Mover or Sum of Preferences?’, Annual Review of Political Science, 9 (2006), 329351CrossRefGoogle Scholar. There is evidence that the strength of partisan attachment can be relatively volatile (Allsop, Dee and Weisberg, Herbert, ‘Measuring Change in Party Identification in an Election Campaign’, American Journal of Political Science, 32 (1988), 9961017CrossRefGoogle Scholar; and Brody, Richard A. and Rothenberg, Lawrence S., ‘The Instability of Partisanship: An Analysis of the 1980 Presidential Election’, British Journal of Political Science, 18 (1988), 445465CrossRefGoogle Scholar), but it is the stability of the individual level direction that is of relevance here.

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57 Data obtained from Polling Report Web Site: www.pollingreport.com/BushJob.htm.

58 Pickup and Johnston, ‘Campaign Trial Heats as Election Forecasts’; Erikson and Wlezien, ‘Presidential Polls As a Timeseries’; Converse, Philip E. and Traugott, Michael W., ‘Assessing the accuracy of polls and surveys’, Science, No. 234, 28 November 1986, pp. 10941098CrossRefGoogle Scholar; and Lau, Richard R., ‘An Analysis of the Accuracy of “Trial Heat” Polls during the 1992 Presidential Election’, Public Opinion Quarterly, (58 (1994), 220.CrossRefGoogle Scholar

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60 No constant is included in the model, so no month needs to be excluded as a reference.

61 As this is a fairly standard technique discussed at length elsewhere, the details of the estimation are relegated to the Appendix, Note 7, in the Supplementary Materials on the website 〈journals.cambridge.org/jps〉. For a more lengthy discussion on this technique, see Pickup and Johnston, ‘Campaign Trial Heats as Election Forecasts’.

62 For a description of the economic data, see the Appendix, Note 4, in the Supplementary Materials on the website 〈journals.cambridge.org/jps〉.

63 France: Lafay, J.-D., ‘Political Change and Stability of the Popularity Function: The French General Election of 1981’, in H. Eulau and M.S. Lewis-Beck, eds, Economic Conditions and Electoral Outcomes: The United States and Western Europe (New York: Agathon, 1985), pp.7897Google Scholar; and Lafay, J.-D., ‘Political Dyarchy and Popularity Functions: Lessons from the 1986 French Experience’, in Norpoth, Lewis-Beck, and Lafay, eds, Economics and Politics, pp. 123139Google Scholar. Latin America: Weyland, Kurt, ‘Peasants or Bankers in Venezuela? Presidential Popularity and Economic Reform Approval, 1989–1993’, Political Research Quarterly, 51 (1998), 341362CrossRefGoogle Scholar; and Davis, Charles L. and Langley, Ronald E., ‘Presidential Popularity in a Context of Economic Crisis and Political Change: The Case of Mexico’, Studies in Comparative International Development, 30 (1995), 2448CrossRefGoogle Scholar.

64 Edwards, George C. III, ‘Riding High in the Polls: George W. Bush and Public Opinion’, in Colin Campbell and Bert Rockman, eds, The George W. Bush Presidency: Appraisals and Prospects (Washington, D.C.: Congressional Quarterly Press, 2004), pp. 1645Google Scholar; Edwards, George C. III, Presidential Influence in Congress (San Francisco: W. H. Freeman, 1980)Google Scholar; and Brace, Paul and Hinckley, Barbara, Follow the Leader: Opinion Polls and the Modern Presidents (New York: Basic Books, 1992)Google Scholar.

65 Nannestad, Peter and Paldam, Martin, ‘The VP-function: A Survey of the Literature on Vote and Popularity Functions after 25 Years’, Public Choice, 79 (1994), 213245.CrossRefGoogle Scholar

66 Such models use actual electoral outcomes as the dependent variable.

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