Machine Advice with a Warning about Machine Limitations: Experimentally Testing the Solution Mandated by the Wisconsin Supreme Court

IF 3 1区 社会学 Q1 LAW Journal of Legal Analysis Pub Date : 2021-03-23 DOI:10.1093/jla/laab001
C. Engel, Nina Grgic-Hlaca
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引用次数: 2

Abstract

The Wisconsin Supreme Court allows machine advice in the courtroom only if accompanied by a series of warnings. We test 878 US lay participants with jury experience on fifty past cases where we know ground truth. The warnings affect their estimates of the likelihood of recidivism and their confidence, but not their decision whether to grant bail. Participants do not get better at identifying defendants who recidivated during the next two years. Results are essentially the same if participants are warned in easily accessible language, and if they are additionally informed about the low accuracy of machine predictions. The decision to grant bail is also unaffected by the warnings mandated by the Supreme Court if participants do not first decide without knowing the machine prediction. Oversampling cases where defendants committed violent crime does not change results either, whether coupled with machine predictions for general or for violent crime. Giving participants feedback and incentivizing them for finding ground truth has a small, weakly significant effect. The effect becomes significant at conventional levels when additionally using strong graphical warnings. Then participants are less likely to follow the advice. But the effect is counterproductive: they follow the advice less if it actually is closer to ground truth.
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机器建议和机器限制警告:威斯康星州最高法院授权的实验测试解决方案
威斯康星州最高法院允许机器在法庭上提供建议,但必须附带一系列警告。我们测试了878名有陪审团经验的美国外行参与者,他们在过去的50个案件中我们知道基本事实。警告会影响他们对再犯可能性的估计和他们的信心,但不会影响他们是否批准保释的决定。参与者在识别在接下来的两年中再犯的被告方面并没有变得更好。如果用容易理解的语言警告参与者,并且额外告知他们机器预测的低准确性,那么结果基本上是相同的。如果参与者在不知道机器预测的情况下没有首先做出决定,那么给予保释的决定也不会受到最高法院强制警告的影响。被告犯下暴力犯罪的过采样案件也不会改变结果,无论是结合机器对一般犯罪还是暴力犯罪的预测。给予参与者反馈并激励他们寻找基础真相的效果很小,但并不显著。在常规水平上,如果再使用强烈的图形警告,效果就会变得显著。那么参与者就不太可能遵循这些建议。但其效果适得其反:如果建议实际上更接近事实,他们就不太会听从。
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来源期刊
CiteScore
4.10
自引率
0.00%
发文量
3
审稿时长
16 weeks
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