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LiteGuard: Efficient Task-Agnostic Model Fingerprinting with Enhanced Generalization

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Task-agnostic model fingerprinting has recently gained increasing attention due to its ability to provide a universal framework applicable across diverse model architectures and tasks. The current state-of-the-art method, MetaV, ensures generalization by jointly training a set of fingerprints and a neural-network-based global verifier using two large and diverse model sets: one composed of pirated models (i.e., the protected model and its variants) and the other comprising independently trained models. However, publicly available models are scarce in many real-world domains, and constructing such model sets requires intensive training and massive computational resources, posing a significant barrier to deployment. Reducing the number of models can alleviate the overhead, but increases the risk of overfitting, a problem further exacerbated by MetaV's entangled design, in which all fingerprints and the global verifier are jointly trained. This overfitting issue compromises the generalization capability for verifying unseen models. In this paper, we propose LiteGuard, an efficient task-agnostic fingerprinting framework that attains enhanced generalization while significantly lowering computational cost. Specifically, LiteGuard introduces two key innovations: (i) a checkpoint-based model set augmentation strategy that enriches model diversity by leveraging intermediate model snapshots captured during training of each pirated and independently trained model, thereby alleviating the need to train a large number of such models, and (ii) a local verifier architecture that pairs each fingerprint with a lightweight local verifier, thereby reducing parameter entanglement and mitigating overfitting. Extensive experiments across five representative tasks show that LiteGuard consistently outperforms MetaV in both generalization performance and computational efficiency.

Guang Yang, Ziye Geng, Yihang Chen, Changqing Luo• 2026

Related benchmarks

TaskDatasetResultRank
Model FingerprintingCIFAR-100
AUC93.6
52
Image ClassificationCIFAR100
AUC99.6
30
Molecular property predictionQM9
AUC98.4
18
Protein Property RegressionCASP
AUC100
12
Tabular Data GenerationCH
AUC (CH)99.2
12
Time-series Sequence GenerationWeather
AUC99.1
12
Model FingerprintingQM9
AUC80.3
3
Model FingerprintingCASP
AUC90.2
2
Model FingerprintingCH
AUC0.977
2
Model FingerprintingWeather
AUC97.1
2
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