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Automated Classification of Modes of Moral Reasoning in Judicial Decisions

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  • Ash, Elliott
  • Chen, Daniel L.
  • Mainali, Nischal
  • Meier, Liam

Abstract

What modes of moral reasoning do judges employ? We construct a linear SVM classifier for moral reasoning mode trained on applied ethics articles written by consequentialists and deontologists. The model can classify a paragraph of text in held out data with over 90 percent accuracy. We then apply this classifier to a corpus of circuit court opinions. We show that the use of consequentialist reasoning has increased over time. We report rankings of relative use of reasoning modes by legal topic, by judge, and by judge law school.

Suggested Citation

  • Ash, Elliott & Chen, Daniel L. & Mainali, Nischal & Meier, Liam, 2018. "Automated Classification of Modes of Moral Reasoning in Judicial Decisions," IAST Working Papers 18-92, Institute for Advanced Study in Toulouse (IAST).
  • Handle: RePEc:tse:iastwp:33158
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    Cited by:

    1. Aaron Nicholas & Birendra Rai, 2019. "Are Efficient Bargaining Power Disparities Unfair? An Experimental Test," Monash Economics Working Papers 02-19, Monash University, Department of Economics.

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