Human adaptation to adaptive machines converges to game-theoretic equilibria
Benjamin J. Chasnov, Lillian J. Ratliff, Samuel A. Burden

TL;DR
This paper demonstrates that machine learning algorithms in adaptive machines can guide human behavior towards game-theoretic equilibria, enabling predictable and optimal co-adaptive interactions without explicitly modeling human utility functions.
Contribution
It introduces machine learning algorithms that directly observe human actions to steer interactions towards game-theoretic equilibria, advancing understanding of human-machine co-adaptation.
Findings
Algorithms can steer human-machine interactions to equilibria.
Machines can control human actions while humans respond optimally.
Game theory effectively predicts co-adaptive outcomes.
Abstract
Adaptive machines have the potential to assist or interfere with human behavior in a range of contexts, from cognitive decision-making to physical device assistance. Therefore it is critical to understand how machine learning algorithms can influence human actions, particularly in situations where machine goals are misaligned with those of people. Since humans continually adapt to their environment using a combination of explicit and implicit strategies, when the environment contains an adaptive machine, the human and machine play a game. Game theory is an established framework for modeling interactions between two or more decision-makers that has been applied extensively in economic markets and machine algorithms. However, existing approaches make assumptions about, rather than empirically test, how adaptation by individual humans is affected by interaction with an adaptive machine.…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Experimental Behavioral Economics Studies · Decision-Making and Behavioral Economics
