Publication | Open Access
Strategic Classification from Revealed Preferences
101
Citations
15
References
2018
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningBehavioral Decision MakingGame TheoryAlgorithmic LearningRevealed PreferenceData SciencePreference LearningPolicy RegretRobot LearningStrategic AgentsDecision TheoryMechanism DesignPreference ModelingStrategic ClassificationComputational Learning TheoryOnline AlgorithmPredictive AnalyticsStrategyComputer ScienceSequential Decision MakingExploration V ExploitationBusinessBusiness StrategyOptimal ClassifierDecision Science
We study an online linear classification problem in which the data is generated by strategic agents who manipulate their features in an effort to change the classification outcome. In rounds, the learner deploys a classifier, then an adversarially chosen agent arrives and possibly manipulates her features to optimally respond to the learner's choice of classifier. The learner has no knowledge of the agents' utility functions or "real" features, which may vary widely across agents. Instead, the learner is only able to observe their "revealed preferences", i.e., the manipulated feature vectors they provide. For a broad family of agent cost functions, we give a computationally efficient learning algorithm that is able to obtain diminishing "Stackelberg regret" --- a form of policy regret that guarantees that the learner is realizing loss nearly as small as that of the best classifier in hindsight, even allowing for the fact that agents would have best-responded differently to the optimal classifier.
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