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Building Human Values into Recommender Systems: An Interdisciplinary Synthesis

Authors :
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer Science
Stray, Jonathan
Halevy, Alon
Assar, Parisa
Hadfield-Menell, Dylan
Boutilier, Craig
Ashar, Amar
Bakalar, Chloe
Beattie, Lex
Ekstrand, Michael
Leibowicz, Claire
Moon Sehat, Connie
Johansen, Sara
Kerlin, Lianne
Vickrey, David
Singh, Spandana
Vrijenhoek, Sanne
Zhang, Amy
Andrus, McKane
Helberger, Natali
Proutskova, Polina
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer Science
Stray, Jonathan
Halevy, Alon
Assar, Parisa
Hadfield-Menell, Dylan
Boutilier, Craig
Ashar, Amar
Bakalar, Chloe
Beattie, Lex
Ekstrand, Michael
Leibowicz, Claire
Moon Sehat, Connie
Johansen, Sara
Kerlin, Lianne
Vickrey, David
Singh, Spandana
Vrijenhoek, Sanne
Zhang, Amy
Andrus, McKane
Helberger, Natali
Proutskova, Polina
Source :
Association for Computing Machinery
Publication Year :
2023

Abstract

Recommender systems are the algorithms which select, filter, and personalize content across many of the world?s largest platforms and apps. As such, their positive and negative effects on individuals and on societies have been extensively theorized and studied. Our overarching question is how to ensure that recommender systems enact the values of the individuals and societies that they serve. Addressing this question in a principled fashion requires technical knowledge of recommender design and operation, and also critically depends on insights from diverse fields including social science, ethics, economics, psychology, policy and law. This paper is a multidisciplinary effort to synthesize theory and practice from different perspectives, with the goal of providing a shared language, articulating current design approaches, and identifying open problems. We collect a set of values that seem most relevant to recommender systems operating across different domains, then examine them from the perspectives of current industry practice, measurement, product design, and policy approaches. Important open problems include multi-stakeholder processes for defining values and resolving trade-offs, better values-driven measurements, recommender controls that people use, non-behavioral algorithmic feedback, optimization for long-term outcomes, causal inference of recommender effects, academic-industry research collaborations, and interdisciplinary policy-making.

Details

Database :
OAIster
Journal :
Association for Computing Machinery
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1434012257
Document Type :
Electronic Resource