Analysis of vocal implicit bias in SCOTUS decisions through predictive modelling

Authors

  • Ramya Vunikili Department of Computer Science, New York University, USA Author
  • Hitesh Ochani Department of Computer Science, New York University, USA Author
  • Divisha Jaiswal Department of Computer Science, New York University, USA Author
  • Richa Deshmukh Department of Computer Science, New York University, USA Author
  • Daniel L. Chen University Toulouse Capitole, France Author
  • Elliott Ash Center for Law and Economics, ETH Zurich, Switzerland Author

DOI:

https://doi.org/10.36505/ExLing-2018/09/0029/000362

Keywords:

Speech analysis, Implicit gender bias, Machine learning, SCOTUS, FAVE

Abstract

Several existing pen-and-paper tests designed to measure implicit bias have been found to contain discrepancies. This could be largely due to the fact that subjects are aware they are being tested and consciously choose to alter their answers. To address this limitation, we have leveraged machine learning techniques to detect bias in the judicial context by examining oral arguments. Because the adverse implications of implicit bias in judicial decisions can have far-reaching consequences, this study aims to determine whether the vocal intonations of Justices and lawyers at the Supreme Court of the United States can serve as a reliable indicator for predicting case outcomes.

References

Chen, D.L., Halberstam, Y., & Yu, A.C. 2016. *Covering: Mutable Characteristics and Perceptions of Voice in the US Supreme Court* (TSE Working Paper No. 16-180). Toulouse: Toulouse School of Economics.

Klofstad, C.A., Anderson, R.C., & Peters, S. 2012. Sounds like a winner: Voice pitch influences perception of leadership capacity in both men and women. *Proceedings of the Royal Society B: Biological Sciences*, 279(1738), 2698–2704.

Tigue, C.C., Borak, D.J., O’Connor, J.J.M., Schandl, C., & Feinberg, D.R. 2012. Voice pitch influences voting behavior. *Evolution and Human Behavior*, 33(3), 210–216.

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Published

01-01-2018

How to Cite

Analysis of vocal implicit bias in SCOTUS decisions through predictive modelling. (2018). Linguistic Proceedings Series, 9(1), 1-6. https://doi.org/10.36505/ExLing-2018/09/0029/000362

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