AI Fairness: Designing Equal Opportunity Algorithms
暫譯: AI 公平性:設計平等機會演算法

Leben, Derek

相關主題

商品描述

A theory of justice for AI models making decisions about employment, lending, education, criminal justice, and other important social goods.

Decisions about important social goods like education, employment, housing, loans, health care, and criminal justice are all becoming increasingly automated with the help of AI. But because AI models are trained on data with historical inequalities, they often produce unequal outcomes for members of disadvantaged groups. In AI Fairness, Derek Leben draws on traditional philosophical theories of fairness to develop a framework for evaluating AI models, which can be called a theory of algorithmic justice--a theory inspired by the theory of justice developed by the American philosopher John Rawls.

For several years now, researchers who design AI models have investigated the causes of inequalities in AI decisions and proposed techniques for mitigating them. It turns out that in most realistic conditions it is impossible to comply with all metrics simultaneously. Because of this, companies using AI systems will have to choose which metric they think is the correct measure of fairness, and regulators will need to determine how to apply currently existing laws to AI systems. Leben provides a detailed set of practical recommendations for companies looking to evaluate their AI systems and regulators thinking about laws around AI systems, and he offers an honest analysis of the costs of implementing fairness in AI systems--as well as when these costs may or may not be acceptable.

商品描述(中文翻譯)

針對 AI 模型在就業、貸款、教育、刑事司法及其他重要社會資源做出決策的正義理論。

關於教育、就業、住房、貸款、醫療保健和刑事司法等重要社會資源的決策,隨著 AI 的幫助,正變得越來越自動化。然而,由於 AI 模型是基於具有歷史不平等的數據進行訓練的,因此它們經常為弱勢群體的成員產生不平等的結果。在 AI 公平性 一書中,Derek Leben 借鑒傳統的公平性哲學理論,發展出一個評估 AI 模型的框架,這可以稱為算法正義理論——這一理論受到美國哲學家 John Rawls 所提出的正義理論的啟發。

幾年來,設計 AI 模型的研究人員一直在調查 AI 決策中不平等的原因,並提出減輕這些不平等的技術。事實證明,在大多數現實條件下,同時遵守所有指標是不可能的。因此,使用 AI 系統的公司必須選擇他們認為正確的公平性衡量標準,而監管機構則需要確定如何將現有法律應用於 AI 系統。Leben 為希望評估其 AI 系統的公司和考慮 AI 系統法律的監管機構提供了一套詳細的實用建議,並對在 AI 系統中實施公平性的成本進行了誠實的分析——以及這些成本在何時可能是可接受的,何時又可能不是。

作者簡介

Derek Leben is Associate Teaching Professor of Business Ethics at the Tepper School of Business at Carnegie Mellon University. As founder of the consulting group Ethical Algorithms, he has worked with governments and companies to develop policies on fairness and benefit for AI and autonomous systems.

作者簡介(中文翻譯)

德瑞克·勒本(Derek Leben)是卡內基梅隆大學泰珀商學院的商業倫理副教授。作為顧問團隊「倫理算法」(Ethical Algorithms)的創始人,他曾與政府和企業合作,制定有關人工智慧(AI)和自主系統的公平性和利益的政策。