Sense and sensitivity in pooled analysis of political data

Authors
Publication date 1999
Journal European Journal of Political Research
Volume | Issue number 35 | 2
Pages (from-to) 225-253
Number of pages 29
Organisations
  • Faculty of Social and Behavioural Sciences (FMG) - Amsterdam Institute for Social Science Research (AISSR)
Abstract
In recent years, pooled time-series cross-section data analysis has been advocated as a method for overcoming the small N, many variables problem in comparative political economy in order to derive valid inferences from statistical comparisons of nation states. Moreover, the approach seemed promising in handling both comparisons among different countries and developments over time. However, due to the complex structure of pooled data sets, this approach cannot simply be regarded as a convenient way of increasing the number of cases and getting more significant results. This paper exemplifies the fallacies of pooled data sets by reanalyzing a study done by Paul Boreham and Hugh Compston on the effect of labour participation in policy formation on unemployment. Reanalysis of their data set controlling for the panel structure of the data by using panel corrected standard errors and a more detailed analysis of the bivariate relationships show that the causal effect is less clear-cut than suggested and becomes considerably weaker during the 1980s. These dynamics are simply averaged out by pooled analysis. This leads to the conclusion that the currently most popular approach to pooled time-series cross-section analysis in comparative political economy - the constant-coefficients model - neither solves the small-N problem nor draws attention to dynamics over time. Thus, the article concludes that a sensitive interpretation of the findings obtained by advanced statistical methodology in comparative political economy is still dependent on small-N comparative analysis.
Document type Article
Published at https://doi.org/10.1023/A:1006914424403
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