Embed systemic equity throughout industrial ecology applications: How to address machine learning unfairness and bias.

IF 4.9 3区 环境科学与生态学 Q2 ENGINEERING, ENVIRONMENTAL
Journal of Industrial Ecology Pub Date : 2024-12-01 Epub Date: 2024-06-18 DOI:10.1111/jiec.13509
Joe F Bozeman, Catharina Hollauer, Arjun Thangaraj Ramshankar, Shalini Nakkasunchi, Jenna Jambeck, Andrea Hicks, Melissa Bilec, Darren McCauley, Oliver Heidrich
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引用次数: 0

Abstract

Recent calls have been made for equity tools and frameworks to be integrated throughout the research and design life cycle -from conception to implementation-with an emphasis on reducing inequity in artificial intelligence (AI) and machine learning (ML) applications. Simply stating that equity should be integrated throughout, however, leaves much to be desired as industrial ecology (IE) researchers, practitioners, and decision-makers attempt to employ equitable practices. In this forum piece, we use a critical review approach to explain how socioecological inequities emerge in ML applications across their life cycle stages by leveraging the food system. We exemplify the use of a comprehensive questionnaire to delineate unfair ML bias across data bias, algorithmic bias, and selection and deployment bias categories. Finally, we provide consolidated guidance and tailored strategies to help address AI/ML unfair bias and inequity in IE applications. Specifically, the guidance and tools help to address sensitivity, reliability, and uncertainty challenges. There is also discussion on how bias and inequity in AI/ML affect other IE research and design domains, besides the food system-such as living labs and circularity. We conclude with an explanation of the future directions IE should take to address unfair bias and inequity in AI/ML. Last, we call for systemic equity to be embedded throughout IE applications to fundamentally understand domain-specific socioecological inequities, identify potential unfairness in ML, and select mitigation strategies in a manner that translates across different research domains.

在工业生态应用中嵌入系统公平:如何解决机器学习的不公平和偏见。
最近有人呼吁在整个研究和设计生命周期(从概念到实施)中整合公平工具和框架,重点是减少人工智能(AI)和机器学习(ML)应用中的不平等。然而,简单地说公平应该贯穿始终,在工业生态学(IE)研究人员、从业者和决策者试图采用公平做法时,还有很多需要改进的地方。在这篇论坛文章中,我们使用一种批判性的回顾方法来解释社会生态不平等是如何通过利用食品系统在ML应用的整个生命周期阶段出现的。我们举例说明了使用全面的问卷来描述跨数据偏差、算法偏差以及选择和部署偏差类别的不公平机器学习偏差。最后,我们提供了统一的指导和量身定制的策略,以帮助解决IE应用中AI/ML的不公平偏见和不平等问题。具体来说,指南和工具有助于解决敏感性、可靠性和不确定性挑战。还讨论了AI/ML中的偏见和不平等如何影响食品系统之外的其他IE研究和设计领域,例如生活实验室和循环。最后,我们解释了IE应该采取的未来方向,以解决AI/ML中的不公平偏见和不平等。最后,我们呼吁将系统公平嵌入到IE应用程序中,以从根本上理解特定领域的社会生态不平等,识别ML中潜在的不公平,并选择在不同研究领域转换的缓解策略。
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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来源期刊
Journal of Industrial Ecology
Journal of Industrial Ecology 环境科学-环境科学
CiteScore
11.60
自引率
8.50%
发文量
117
审稿时长
12-24 weeks
期刊介绍: The Journal of Industrial Ecology addresses a series of related topics: material and energy flows studies (''industrial metabolism'') technological change dematerialization and decarbonization life cycle planning, design and assessment design for the environment extended producer responsibility (''product stewardship'') eco-industrial parks (''industrial symbiosis'') product-oriented environmental policy eco-efficiency Journal of Industrial Ecology is open to and encourages submissions that are interdisciplinary in approach. In addition to more formal academic papers, the journal seeks to provide a forum for continuing exchange of information and opinions through contributions from scholars, environmental managers, policymakers, advocates and others involved in environmental science, management and policy.
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