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Creating Unbiased Machine Learning Models by Design

机译:通过设计创建非偏见的机器学习模型

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Unintended bias against protected groups has become a key obstacle to the widespread adoption of machine learning methods. This work presents a modeling procedure that carefully builds models around protected class information in order to make sure that the final machine learning model is independent of protected class status, even in a nonlinear sense. This procedure works for any machine learning method. The procedure was tested on subprime credit card data combined with demographic data by zip code from the US Census. The census data serves as an imperfect proxy for borrower demographics but serves to illustrate the procedure.
机译:免于受保护的团体的偏见已成为机器学习方法广泛采用的关键障碍。 这项工作介绍了一个建模过程,仔细构建受保护的类信息周围的模型,以确保即使在非线性意义上也是与受保护的类状态无关的。 此过程适用于任何机器学习方法。 该过程在次锁信用卡数据上测试了由美国人口普查的邮政编码与人口统计数据相结合。 人口普查数据用作借款人口统计数据的不完美代理,但是用于说明该过程。

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