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Causal Strategic Linear Regression

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 نشر من قبل Yonadav Shavit
 تاريخ النشر 2020
  مجال البحث الهندسة المعلوماتية
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In many predictive decision-making scenarios, such as credit scoring and academic testing, a decision-maker must construct a model that accounts for agents propensity to game the decision rule by changing their features so as to receive better decisions. Whereas the strategic classification literature has previously assumed that agents outcomes are not causally affected by their features (and thus that strategic agents goal is deceiving the decision-maker), we join concurrent work in modeling agents outcomes as a function of their changeable attributes. As our main contribution, we provide efficient algorithms for learning decision rules that optimize three distinct decision-maker objectives in a realizable linear setting: accurately predicting agents post-gaming outcomes (prediction risk minimization), incentivizing agents to improve these outcomes (agent outcome maximization), and estimating the coefficients of the true underlying model (parameter estimation). Our algorithms circumvent a hardness result of Miller et al. (2020) by allowing the decision maker to test a sequence of decision rules and observe agents responses, in effect performing causal interventions through the decision rules.


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