Robust Multi-agent Counterfactual Prediction
Peysakhovich, Alexander, Kroer, Christian, Lerer, Adam
–Neural Information Processing Systems
We consider the problem of using logged data to make predictions about what would happen if we changed the rules of the game' in a multi-agent system. This task is difficult because in many cases we observe actions individuals take but not their private information or their full reward functions. In addition, agents are strategic, so when the rules change, they will also change their actions. They make counterfactual predictions by using observed actions to learn the underlying utility function (a.k.a. This approach imposes heavy assumptions such as the rationality of the agents being observed and a correct model of the environment and agents' utility functions.
Neural Information Processing Systems
Mar-20-2020, 13:19:12 GMT
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