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Advancing Equitable Decisionmaking for the Department of Defense Through Fairness in Machine Learning / Irineo Cabreros, [and four others].

Lippincott Library HF5549.2.U5 C33 2023
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Format:
Book
Author/Creator:
Cabreros, Irineo, author.
Snoke, Joshua, author.
Osoba, Osonde, author.
Khan, Inez, author.
Elliott, Marc N., 1966- author.
Contributor:
United States. Department of the Air Force
Project Air Force (U.S.)
Rand Corporation
Language:
English
Subjects (All):
United States. Department of Defense--Personnel management.
United States.
Personnel management--United States.
Personnel management.
Racial justice--United States.
Racial justice.
Machine learning.
Physical Description:
xiii, 64 pages : Illustrations (color) ; 25 cm
Place of Publication:
Santa Monica, CA : RAND, [2023]
Summary:
The U.S. Department of Defense (DoD) places a high priority on promoting diversity, equity, and inclusion at all levels throughout the organization. Simultaneously, it is actively supporting the development of machine learning (ML) technologies to assist in decisionmaking for personnel management. There has been heightened concern about algorithmic bias in many non-DoD settings, whereby ML-assisted decisions have been found to perpetuate or, in some cases, exacerbate inequities. This report is an attempt to equip both policymakers and developers of ML algorithms for DoD with the tools and guidance necessary to avoid algorithmic bias when using ML to aid human decisions. The authors first provide an overview of DoD's equity priorities, which typically are centered on issues of representation and equal opportunity within personnel. They then provide a framework to enable ML developers to develop equitable tools. This framework emphasizes that there are inherent trade-offs to enforcing equity that must be considered when developing equitable ML algorithms. The authors enable the process of weighing these trade-offs by providing a software tool, called the RAND Algorithmic Equity Tool, that can be applied to common classification ML algorithms that are used to support binary decisions. This tool allows users to audit the equity properties of their algorithms, modify algorithms to attain equity priorities, and weigh the costs of attaining equity on other, non-equity priorities. The authors demonstrate this tool on a hypothetical ML algorithm used to influence promotion selection decisions, which serves as an instructive case study.
Contents:
Chapter One: Introduction
Chapter Two: The Department of Defense's Investment in Equity
Chapter Three: Machine Learning as an Aid to Decisionmaking
Chapter Four: Approaches to Auditing Machine Learning or Constraining It to Be Fair
Chapter Five: A Framework for Developing Equitable Machine Learning Algorithms
Chapter Six: Demonstration of Equity Framework Through a Hypothetical Case Study
Chapter Seven: Conclusions
Appendix A: Overview of Technical Equity Definitions
Appendix B: Technical Description of Post-Processing Methods
Appendix C: Machine Learning in the Department of Defense for Nonpersonnel Issues.
Notes:
Title from PDF document (title page; viewed June 19, 2023)
Includes bibliographical references (pages 59-64)
ISBN:
1977410251
9781977410252
OCLC:
1390654272

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