A Taxonomy of Human and ML Strengths in Decision-Making to Investigate Human-ML Complementarity
April 22, 2022 ยท The Cartographer ยท ๐ Proceedings of the AAAI Conference on Human Computation and Crowdsourcing
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"Title-pattern auto-detect: A Taxonomy of Human and ML Strengths in Decision-Making to Investigate Human-ML Complementarity"
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Authors
Charvi Rastogi, Liu Leqi, Kenneth Holstein, Hoda Heidari
arXiv ID
2204.10806
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.LG
Citations
24
Venue
Proceedings of the AAAI Conference on Human Computation and Crowdsourcing
Last Checked
23 hours ago
Abstract
Hybrid human-ML systems increasingly make consequential decisions in a wide range of domains. These systems are often introduced with the expectation that the combined human-ML system will achieve complementary performance, that is, the combined decision-making system will be an improvement compared with either decision-making agent in isolation. However, empirical results have been mixed, and existing research rarely articulates the sources and mechanisms by which complementary performance is expected to arise. Our goal in this work is to provide conceptual tools to advance the way researchers reason and communicate about human-ML complementarity. Drawing upon prior literature in human psychology, machine learning, and human-computer interaction, we propose a taxonomy characterizing distinct ways in which human and ML-based decision-making can differ. In doing so, we conceptually map potential mechanisms by which combining human and ML decision-making may yield complementary performance, developing a language for the research community to reason about design of hybrid systems in any decision-making domain. To illustrate how our taxonomy can be used to investigate complementarity, we provide a mathematical aggregation framework to examine enabling conditions for complementarity. Through synthetic simulations, we demonstrate how this framework can be used to explore specific aspects of our taxonomy and shed light on the optimal mechanisms for combining human-ML judgments
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