LGGTSep 16, 2021

Incentives in Two-sided Matching Markets with Prediction-enhanced Preference-formation

arXiv:2109.07835v1
Originality Incremental advance
AI Analysis

This work addresses a previously unexplored strategic issue in matching markets like school choice, which is incremental by combining separate analyses of matching and prediction mechanisms.

The paper tackles the problem of strategic behavior in two-sided matching markets where prediction mechanisms assist agents in forming preferences, revealing that agents (e.g., schools) can exploit this by engaging in adversarial interaction attacks to manipulate future predictions, which increases inequality among students as prediction accuracy and trust rise.

Two-sided matching markets have long existed to pair agents in the absence of regulated exchanges. A common example is school choice, where a matching mechanism uses student and school preferences to assign students to schools. In such settings, forming preferences is both difficult and critical. Prior work has suggested various prediction mechanisms that help agents make decisions about their preferences. Although often deployed together, these matching and prediction mechanisms are almost always analyzed separately. The present work shows that at the intersection of the two lies a previously unexplored type of strategic behavior: agents returning to the market (e.g., schools) can attack future predictions by interacting short-term non-optimally with their matches. Here, we first introduce this type of strategic behavior, which we call an `adversarial interaction attack'. Next, we construct a formal economic model that captures the feedback loop between prediction mechanisms designed to assist agents and the matching mechanism used to pair them. This economic model allows us to analyze adversarial interaction attacks. Finally, using school choice as an example, we build a simulation to show that, as the trust in and accuracy of predictions increases, schools gain progressively more by initiating an adversarial interaction attack. We also show that this attack increases inequality in the student population.

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