Performance analysis of machine learning algorithms trained on biased data

Renata Sendreti Broder, Lilian Berton
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引用次数: 0

Abstract

The use of Artificial Intelligence and Machine Learning algorithms in everyday life is common nowadays in several areas, bringing many possibilities and benefits to society. However, since there is room for learning algorithms to make decisions, the range of related ethical issues was also expanded. There are many complaints about Machine Learning applications that identify some kind of bias, disadvantaging or favoring some group, with the possibility of causing harm to a real person. The present work aims to shed light on the existence of biases, analyzing and comparing the behavior of different learning algorithms – namely Decision Tree, MLP, Naive Bayes, Random Forest, Logistic Regression and SVM – when being trained using biased data. We employed pre-processing algorithms for mitigating bias provided by IBM's framework AI Fairness 360.
有偏差数据训练的机器学习算法的性能分析
人工智能和机器学习算法在日常生活中的应用在许多领域都很普遍,给社会带来了许多可能性和好处。然而,由于有学习算法做出决策的空间,相关伦理问题的范围也扩大了。人们对机器学习应用程序有很多抱怨,这些应用程序识别出某种偏见,不利于或偏袒某些群体,有可能对真人造成伤害。目前的工作旨在阐明偏差的存在,分析和比较不同学习算法(即决策树,MLP,朴素贝叶斯,随机森林,逻辑回归和支持向量机)在使用有偏差数据训练时的行为。我们采用了由IBM的AI Fairness 360框架提供的预处理算法来减轻偏见。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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