Sequential Strategic Classification with Multi-Stage Selective Classifiers
Ziyuan Huang, Lina Alkarmi, Mingyan Liu

TL;DR
This paper models multi-stage strategic classification where agents adapt their behavior over time, using selective classifiers to incentivize genuine effort and improve long-term decision outcomes.
Contribution
It introduces a sequential, multi-stage model of strategic classification with selective classifiers, analyzing agent behavior and long-term utility in dynamic settings.
Findings
Characterized optimal agent actions under selective classifiers.
Compared long-term utility of no-improvement vs. no-gaming policies.
Identified design principles for classifiers that promote genuine effort.
Abstract
Strategic classification studies the problem where self-interested individuals or agents manipulate their response to obtain favorable decision outcomes made by classifiers, typically turning to dishonest actions when they are less costly than genuine efforts. Prior works have demonstrated a fundamental inability to get out of this conundrum by only focusing on the design of a classifier. We note that prior work also heavily focuses on either one-shot settings or repeated interaction with the same classifier. Real-world decision making is often multi-stage, involving a sequence of potentially different classifiers as an agent progresses. This paper introduces a sequential, stochastic, multi-stage model of strategic classification, by capturing how agents adapt their behavior, through improvement actions (enhancing both observable features and true attributes) and gaming actions…
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