Hostname: page-component-76fb5796d-skm99 Total loading time: 0 Render date: 2024-04-25T09:19:22.547Z Has data issue: false hasContentIssue false

Clocks, Not Dartboards: A Tale of Students, Statistics, and the Pedagogical Challenges of Randomness

Published online by Cambridge University Press:  14 July 2006

David C. Earnest
Affiliation:
Old Dominion University

Extract

What is the probability of students cheating?

I found myself asking this question quite literally recently, when 10 of my students in an upper-level undergraduate methods course turned in identical results for a take-home exercise. Of course, on some exercises I expect students to produce identical findings, such as when I ask for the mean and variance of a particular variable. In this case, however, I had asked students to produce a new random variable and to summarize its values in a frequency distribution. My initial reaction was to suspect the students of collaborating on the exercise (contrary to my syllabus and the assignment's instructions), though the number of students who produced identical results—10 out of a class of 30—made me skeptical that so many students could conspire so effectively. The very nature of the students made it unlikely that they collaborated together. I teach at a large public-service university, with students that represent a broad variety of backgrounds, nationalities, interests, and ages. The course also is cross-listed among disciplines, so the 10 students included both political science and geography majors. My review of the names of the 10 students persuaded me that it was highly unlikely that they cheated. I have found, furthermore, that many students will not voluntarily work in groups. So how did this diverse group of students produce an identical “random” variable?

My investigation of this question took me well beyond issues of student conduct. To answer the question to my satisfaction, I found I had to understand how campus computer networks operate and ultimately how the statistical software my students use works. My journey took me into the arcane world of “random” numbers in computers, and required me to understand how statistical software generates so-called pseudo-random numbers. When I finally found an answer to my puzzle, I learned that the problem was not with my students, but with the software on which we all rely for research and, increasingly, pedagogy. Many researchers today know there is no such thing as a computer-generated truly random number. Although many political scientists know this has profound consequences for their work—whether for sampling purposes or Monte Carlo experiments—to my knowledge instructors of quantitative methods courses have given little thought to its implications in the classroom. For one, it is easy and tempting to mistake the problems of pseudo-random number generation for student malfeasance. For another, it speaks to the students' (and instructor's) conceptual grasp of the slippery idea of “randomness.” For this reason, I offer my own experience as a cautionary tale.

Type
THE TEACHER
Copyright
© 2006 The American Political Science Association

Access options

Get access to the full version of this content by using one of the access options below. (Log in options will check for institutional or personal access. Content may require purchase if you do not have access.)

References

Altman, Micah, and Michael P. McDonald. 2001. “Choosing Reliable Statistical Software.” PS: Political Science and Politics 34 (September): 681687.CrossRefGoogle Scholar
Beck, Nathaniel. 1995. “What Software Do Political Scientists Use?The Political Methodologist 7 (fall): 2327.Google Scholar
Cohen, G. L., and E. Tonkes. 2001. “Dartboard Arrangements.” Electronic Journal of Combinatorics 8 (2). Electronic resource available online at www.combinatorics.org/Volume_8/PDF/v8i2r4.pdf.CrossRefGoogle Scholar
Cusack, Thomas R., and Richard J. Stoll. 1994. “Collective Security and State Survival in the Interstate System.” International Studies Quarterly 38 (March): 3359.Google Scholar
Drury, A. Cooper. 2001. “Sanctions as Coercive Diplomacy: The U.S. President's Decision to Initiate Economic Sanctions.” Political Research Quarterly 54 (September): 485508.CrossRefGoogle Scholar
Farkas, Andrew. 1996. “Evolutionary Models in Foreign Policy Analysis.” International Studies Quarterly 40 (3). Special Issue: Evolutionary Paradigms in the Social Sciences (September): 343361.Google Scholar
Gordon, Sanford C. 2002. “Stochastic Dependence in Competing Risks.” American Journal of Political Science 46 (January): 200217.Google Scholar
Lehmer, D. H. 1951. “Mathematical Methods in Large-scale Computing Units.” Proceedings of the 2nd Symposium on Large-Scale Digital Calculating Machinery, Cambridge, MA, 1949. Cambridge: Harvard University Press, 141146.Google Scholar
Marchenko, Yulia. 2005. Personal emails to the author. “Re: Stata v. 8: Non-random numbers generated by uniform().” July 18.Google Scholar
Mason, Robert D., Douglas A. Lind, and William G. Marchal. 1994. Statistics: An Introduction. Fort Worth, TX: Harcourt Brace & Company.Google Scholar
McClendon, McKee J. 2004. Statistical Analysis in the Social Sciences. Belmont, CA: Wadsworth.Google Scholar
McCullough, B. D. 1998. “Assessing the Reliability of Statistical Software: Part I.” American Statistician 52 (November): 358366.Google Scholar
McCullough, B. D. 1999. “Assessing the Reliability of Statistical Software: Part II.” American Statistician 53 (May): 149159.Google Scholar
Park, Stephen K., and Keith W. Miller. 1988. “Random Number Generators: Good Ones Are Hard to Find.” Communications of the Association of Computing Machinery 31 (October): 11921201.Google Scholar
Pollock, Philip H. 2003a. The Essentials of Political Analysis. Washington, D.C.: CQ Press.Google Scholar
Pollock, Philip H. 2003b. An SPSS Companion to Political Analysis. Washington, D.C.: CQ Press.Google Scholar
Reiter, Dan, and Allan C. Stam III 1998. “Democracy and Battlefield Military Effectiveness.” Journal of Conflict Resolution 42 (3). Special Issue: Opening up the Black Box of War: Politics and the Conduct of War (June): 259277.CrossRefGoogle Scholar
Rosenau, James et al. 2005. On the Cutting Edge of Globalization: An Inquiry into American Elites. Boulder, CO: Rowman & Littlefield.Google Scholar
Sawitzki, G. 1985. “Another Random Number Generator Which Should Be Avoided.” Statistical Software Newsletter 11: 8182.Google Scholar
SPSS 11.0 Syntax Reference Guide. 2001. Chicago: SPSS Inc.Google Scholar
SPSS 14.0 Base User's Guide. 2005. Chicago: SPSS Inc.Google Scholar
SPSS for Windows v. 11 through v. 14 [Computer software]. 2001–2005. Chicago: SPSS Inc.Google Scholar
Stata for Windows v. 8.1 [Computer software]. 2003. College Station, TX: Stata Corporation.Google Scholar