BiasHeal: On-the-Fly Black-Box Healing of Bias in Sentiment Analysis Systems

Zhou Yang, Harshit Jain, Jieke Shi, Muhammad Hilmi Asyrofi, D. Lo
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引用次数: 9

Abstract

Although Sentiment Analysis (SA) is widely applied in many domains, existing research has revealed that the unfairness in SA systems can be harmful to the welfare of less privileged people. Several works propose pre-processing and in-processing methods to eliminate bias in SA systems, but little attention is paid to utilizing post-processing methods to heal bias. Postprocessing methods are particularly important for systems that use third-party SA services. Systems that use such services have no access to the SA engine or its training data and thus cannot apply pre-processing nor in-processing methods. Therefore, this paper proposes a black-box post-processing method to make an SA system heal bias and construct fair results when bias is detected. We propose and investigate six self-healing strategies. Our evaluation results on two datasets show that the best strategy can construct fair results and improve accuracy on the two datasets by 2.76% and 2.85%, respectively. To the best of our knowledge, our work is the first self-healing method that can be deployed to ensure SA fairness without requiring access to the SA engine or its training data.
BiasHeal:情绪分析系统中偏见的即时黑盒治疗
尽管情感分析在许多领域得到了广泛的应用,但已有的研究表明,情感分析系统中的不公平性可能会损害弱势群体的福利。一些研究提出了预处理和处理中方法来消除SA系统中的偏见,但很少关注利用后处理方法来治愈偏见。后处理方法对于使用第三方SA服务的系统尤为重要。使用此类服务的系统无法访问SA引擎或其训练数据,因此无法应用预处理或处理中的方法。因此,本文提出了一种黑盒后处理方法,使自动识别系统在检测到偏差时能够消除偏差并构建公平的结果。我们提出并研究了六种自我修复策略。我们在两个数据集上的评估结果表明,最佳策略可以构建公平的结果,并将两个数据集的准确率分别提高2.76%和2.85%。据我们所知,我们的工作是第一个可以在不需要访问SA引擎或其训练数据的情况下确保SA公平性的自我修复方法。
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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