Gaming Helps! Learning from Strategic Interactions in Natural Dynamics
This addresses challenges in scenarios like credit assessment and school admissions where strategic behavior complicates learning, offering a novel approach to leverage such interactions for feature recovery.
The paper tackles the problem of online regression where individuals strategically manipulate their features to improve predicted scores, showing that such manipulations can help the learner recover meaningful features that affect true labels, with results including accurate recovery and incentivizing agents to invest in these features.
We consider an online regression setting in which individuals adapt to the regression model: arriving individuals are aware of the current model, and invest strategically in modifying their own features so as to improve the predicted score that the current model assigns to them. Such feature manipulation has been observed in various scenarios -- from credit assessment to school admissions -- posing a challenge for the learner. Surprisingly, we find that such strategic manipulations may in fact help the learner recover the meaningful variables -- that is, the features that, when changed, affect the true label (as opposed to non-meaningful features that have no effect). We show that even simple behavior on the learner's part allows her to simultaneously i) accurately recover the meaningful features, and ii) incentivize agents to invest in these meaningful features, providing incentives for improvement.