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Main Authors: Li, Xiang, Huang, Jianwei, Yang, Kai, Fan, Chenyou
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.07510
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author Li, Xiang
Huang, Jianwei
Yang, Kai
Fan, Chenyou
author_facet Li, Xiang
Huang, Jianwei
Yang, Kai
Fan, Chenyou
contents Machine learning (ML) model trading, known for its role in protecting data privacy, faces a major challenge: information asymmetry. This issue can lead to model deception, a problem that current literature has not fully solved, where the seller misrepresents model performance to earn more. We propose a game-theoretic approach, adding a verification step in the ML model market that lets buyers check model quality before buying. However, this method can be expensive and offers imperfect information, making it harder for buyers to decide. Our analysis reveals that a seller might probabilistically conduct model deception considering the chance of model verification. This deception probability decreases with the verification accuracy and increases with the verification cost. To maximize seller payoff, we further design optimal pricing schemes accounting for heterogeneous buyers' strategic behaviors. Interestingly, we find that reducing information asymmetry benefits both the seller and buyer. Meanwhile, protecting buyer order information doesn't improve the payoff for the buyer or the seller. These findings highlight the importance of reducing information asymmetry in ML model trading and open new directions for future research.
format Preprint
id arxiv_https___arxiv_org_abs_2601_07510
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Machine Learning Model Trading with Verification under Information Asymmetry
Li, Xiang
Huang, Jianwei
Yang, Kai
Fan, Chenyou
Computer Science and Game Theory
Machine learning (ML) model trading, known for its role in protecting data privacy, faces a major challenge: information asymmetry. This issue can lead to model deception, a problem that current literature has not fully solved, where the seller misrepresents model performance to earn more. We propose a game-theoretic approach, adding a verification step in the ML model market that lets buyers check model quality before buying. However, this method can be expensive and offers imperfect information, making it harder for buyers to decide. Our analysis reveals that a seller might probabilistically conduct model deception considering the chance of model verification. This deception probability decreases with the verification accuracy and increases with the verification cost. To maximize seller payoff, we further design optimal pricing schemes accounting for heterogeneous buyers' strategic behaviors. Interestingly, we find that reducing information asymmetry benefits both the seller and buyer. Meanwhile, protecting buyer order information doesn't improve the payoff for the buyer or the seller. These findings highlight the importance of reducing information asymmetry in ML model trading and open new directions for future research.
title Machine Learning Model Trading with Verification under Information Asymmetry
topic Computer Science and Game Theory
url https://arxiv.org/abs/2601.07510