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Building Better Models

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  • Matthew Hindman

Abstract

Analytic techniques developed for big data have much broader applications in the social sciences, outperforming standard regression models even—or rather especially—in smaller datasets. This article offers an overview of machine learning methods well-suited to social science problems, including decision trees, dimension reduction methods, nearest neighbor algorithms, support vector models, and penalized regression. In addition to novel algorithms, machine learning places great emphasis on model checking (through holdout samples and cross-validation) and model shrinkage (adjusting predictions toward the mean to reduce overfitting). This article advocates replacing typical regression analyses with two different sorts of models used in concert. A multi-algorithm ensemble approach should be used to determine the noise floor of a given dataset, while simpler methods such as penalized regression or decision trees should be used for theory building and hypothesis testing.

Suggested Citation

  • Matthew Hindman, 2015. "Building Better Models," The ANNALS of the American Academy of Political and Social Science, , vol. 659(1), pages 48-62, May.
  • Handle: RePEc:sae:anname:v:659:y:2015:i:1:p:48-62
    DOI: 10.1177/0002716215570279
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    References listed on IDEAS

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