Saved in:
Bibliographic Details
Main Authors: Lv, Xinpeng, Mao, Yunxin, Xu, Renzhe, Zheng, Chunyuan, Chen, Yikai, Li, Haoxuan, Shi, Yang, Yang, Jinxuan, Lin, Zhouchen, Chen, Yuanlong, Zhang, Yuanxing, Yang, Shaowu, Yang, Wenjing, Wang, Haotian
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.19674
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910236244180992
author Lv, Xinpeng
Mao, Yunxin
Xu, Renzhe
Zheng, Chunyuan
Chen, Yikai
Li, Haoxuan
Shi, Yang
Yang, Jinxuan
Lin, Zhouchen
Chen, Yuanlong
Zhang, Yuanxing
Yang, Shaowu
Yang, Wenjing
Wang, Haotian
author_facet Lv, Xinpeng
Mao, Yunxin
Xu, Renzhe
Zheng, Chunyuan
Chen, Yikai
Li, Haoxuan
Shi, Yang
Yang, Jinxuan
Lin, Zhouchen
Chen, Yuanlong
Zhang, Yuanxing
Yang, Shaowu
Yang, Wenjing
Wang, Haotian
contents Strategic classification(SC) studies the interaction between decision models and agents who strategically manipulate their features for favorable outcomes. Existing SC frameworks typically rely on the idealized assumption that agents are strictly rational. However, evidence from behavioral economics and psychology consistently shows that real-world decision-making is often shaped by cognitive biases, deviating from pure rationality. To formalize this limitation, we identify and define a new problem setting, termed the behaviorally realistic strategic classification problem, where agents' strategic manipulations deviate from full rationality due to psychological biases. Motivated by the identified limitation, we propose the Prospect-Guided Strategic Framework (Pro-SF) to address the problem, a principled framework grounded in prospect theory to model and learn under behaviorally realistic strategic responses. Specifically, to capture behaviorally realistic strategic manipulations, our framework reformulates the Stackelberg-style interaction between agents and the decision-maker by incorporating three key mechanisms inspired by prospect theory, including the asymmetry between benefits and costs, different subjective reference points, and non-rational probability distortion. Experiments on synthetic and real-world datasets establish Pro-SF as a behaviorally grounded approach to strategic classification, bridging machine learning and behavioral economics for more reliable deployment in the real world.
format Preprint
id arxiv_https___arxiv_org_abs_2605_19674
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Beyond Rational Illusion: Behaviorally Realistic Strategic Classification
Lv, Xinpeng
Mao, Yunxin
Xu, Renzhe
Zheng, Chunyuan
Chen, Yikai
Li, Haoxuan
Shi, Yang
Yang, Jinxuan
Lin, Zhouchen
Chen, Yuanlong
Zhang, Yuanxing
Yang, Shaowu
Yang, Wenjing
Wang, Haotian
Artificial Intelligence
Strategic classification(SC) studies the interaction between decision models and agents who strategically manipulate their features for favorable outcomes. Existing SC frameworks typically rely on the idealized assumption that agents are strictly rational. However, evidence from behavioral economics and psychology consistently shows that real-world decision-making is often shaped by cognitive biases, deviating from pure rationality. To formalize this limitation, we identify and define a new problem setting, termed the behaviorally realistic strategic classification problem, where agents' strategic manipulations deviate from full rationality due to psychological biases. Motivated by the identified limitation, we propose the Prospect-Guided Strategic Framework (Pro-SF) to address the problem, a principled framework grounded in prospect theory to model and learn under behaviorally realistic strategic responses. Specifically, to capture behaviorally realistic strategic manipulations, our framework reformulates the Stackelberg-style interaction between agents and the decision-maker by incorporating three key mechanisms inspired by prospect theory, including the asymmetry between benefits and costs, different subjective reference points, and non-rational probability distortion. Experiments on synthetic and real-world datasets establish Pro-SF as a behaviorally grounded approach to strategic classification, bridging machine learning and behavioral economics for more reliable deployment in the real world.
title Beyond Rational Illusion: Behaviorally Realistic Strategic Classification
topic Artificial Intelligence
url https://arxiv.org/abs/2605.19674