RAWLSNET: Altering Bayesian Networks to Encode Rawlsian Fair Equality of Opportunity

David Liu, Zohair Shafi, W. Fleisher, Tina Eliassi-Rad, Scott Alfeld
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引用次数: 7

Abstract

We present RAWLSNET, a system for altering Bayesian Network (BN) models to satisfy the Rawlsian principle of fair equality of opportunity (FEO). RAWLSNET's BN models generate aspirational data distributions: data generated to reflect an ideally fair, FEO-satisfying society. FEO states that everyone with the same talent and willingness to use it should have the same chance of achieving advantageous social positions (e.g., employment), regardless of their background circumstances (e.g., socioeconomic status). Satisfying FEO requires alterations to social structures such as school assignments. Our paper describes RAWLSNET, a method which takes as input a BN representation of an FEO application and alters the BN's parameters so as to satisfy FEO when possible, and minimize deviation from FEO otherwise. We also offer guidance for applying RAWLSNET, including on recognizing proper applications of FEO. We demonstrate the use of RAWLSNET with publicly available data sets. RAWLSNET's altered BNs offer the novel capability of generating aspirational data for FEO-relevant tasks. Aspirational data are free from biases of real-world data, and thus are useful for recognizing and detecting sources of unfairness in machine learning algorithms besides biased data.
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RAWLSNET:改变贝叶斯网络编码罗尔斯公平机会均等
RAWLSNET是一个改进贝叶斯网络(BN)模型以满足罗尔斯公平机会均等原则的系统。RAWLSNET的BN模型生成理想的数据分布:生成的数据反映理想的公平,feo满意的社会。FEO指出,每个人都有同样的才能和意愿去使用它,应该有同样的机会获得有利的社会地位(例如,就业),而不管他们的背景环境(例如,社会经济地位)。满足FEO需要改变社会结构,比如学校作业。本文描述了RAWLSNET方法,该方法将FEO应用的BN表示作为输入,并改变BN的参数,使其尽可能满足FEO,否则尽量减少与FEO的偏差。我们还提供了应用RAWLSNET的指导,包括识别FEO的适当应用。我们演示了使用公开可用的数据集来使用RAWLSNET。RAWLSNET的改进型bn提供了为feo相关任务生成理想数据的新能力。理想数据没有现实世界数据的偏见,因此除了偏见数据之外,对于识别和检测机器学习算法中的不公平来源非常有用。
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