Statistical evidence and algorithmic decision-making

被引:0
作者
Sune Holm
机构
[1] University of Copenhagen,Department of Food and Resource Economics
来源
Synthese | / 202卷
关键词
AI; Statistical evidence; Fairness; Decision-making; Algorithm;
D O I
暂无
中图分类号
学科分类号
摘要
The use of algorithms to support prediction-based decision-making is becoming commonplace in a range of domains including health, criminal justice, education, social services, lending, and hiring. An assumption governing such decisions is that there is a property Y such that individual a should be allocated resource R by decision-maker D if a is Y. When there is uncertainty about whether a is Y, algorithms may provide valuable decision support by accurately predicting whether a is Y on the basis of known features of a. Based on recent work on statistical evidence in epistemology this article presents an argument against relying exclusively on algorithmic predictions to allocate resources when they provide purely statistical evidence that a is Y. The article then responds to the objection that any evidence that will increase the proportion of correct decisions should be accepted as the basis for allocations regardless of its epistemic deficiency. Finally, some important practical aspects of the conclusion are considered.
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