减少风险投资成功预测模型中的歧视性偏见

Yiea-Funk Te, Michèle Wieland, Martin Frey, Helmut Grabner
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引用次数: 0

摘要

基于机器学习的决策支持系统的公平性已经成为一个关键问题,在预测风险投资创业公司成功的领域也是如此。在歧视性偏见的推动下,风险资本配置不当可能导致错失投资机会和糟糕的投资决策。尽管许多研究已经解决了风险资本分配和决策支持模型中普遍存在的偏见,但很少有研究解决了将公平性纳入建模过程的重要性。在这项研究中,我们利用不变特征表示学习来开发一个创业成功预测模型,使用Crunchbase数据,同时满足群体公平。我们的研究结果表明,在对模型性能影响最小的情况下,可以显著减少歧视性偏见。此外,我们通过同时减轻多种偏见来展示我们方法的多功能性。这项工作强调了在决策支持模型中解决公平性问题的重要性,以确保风险投资的公平结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mitigating Discriminatory Biases in Success Prediction Models for Venture Capitals
The fairness of machine learning-based decision support systems has become a critical issue, also in the field of predicting the success of venture capital investment startups. Inappropriate allocation of venture capital, fueled by discriminatory biases, can lead to missed investment opportunities and poor investment decisions. Despite numerous studies that have addressed the prevalence of biases in venture capital allocation and decision support models, few have addressed the importance of incorporating fairness into the modeling process. In this study, we leverage invariant feature representation learning to develop a startup success prediction model using Crunchbase data, while satisfying group fairness. Our results show that discriminatory bias can be significantly reduced with minimal impact on model performance. Additionally, we demonstrate the versatility of our approach by mitigating multiple biases simultaneously. This work highlights the significance of addressing fairness in decisionsupport models to ensure equitable outcomes in venture capital investments.
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