Stackelberg Punishment and Bully-Proofing Autonomous Vehicles

August 23, 2019 Β· Declared Dead Β· πŸ› International Conference on Software Reuse

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Authors Matt Cooper, Jun Ki Lee, Jacob Beck, Joshua D. Fishman, Michael Gillett, ZoΓ« Papakipos, Aaron Zhang, Jerome Ramos, Aansh Shah, Michael L. Littman arXiv ID 1908.08641 Category cs.HC: Human-Computer Interaction Cross-listed cs.AI, cs.GT Citations 8 Venue International Conference on Software Reuse Last Checked 4 months ago
Abstract
Mutually beneficial behavior in repeated games can be enforced via the threat of punishment, as enshrined in game theory's well-known "folk theorem." There is a cost, however, to a player for generating these disincentives. In this work, we seek to minimize this cost by computing a "Stackelberg punishment," in which the player selects a behavior that sufficiently punishes the other player while maximizing its own score under the assumption that the other player will adopt a best response. This idea generalizes the concept of a Stackelberg equilibrium. Known efficient algorithms for computing a Stackelberg equilibrium can be adapted to efficiently produce a Stackelberg punishment. We demonstrate an application of this idea in an experiment involving a virtual autonomous vehicle and human participants. We find that a self-driving car with a Stackelberg punishment policy discourages human drivers from bullying in a driving scenario requiring social negotiation.
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