Saved in:
Bibliographic Details
Main Authors: Chen, Ruibo, Zhang, Sheng, Wu, Yihan, Zheng, Tong, Mai, Peihua, Huang, Heng
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.24171
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915520234651648
author Chen, Ruibo
Zhang, Sheng
Wu, Yihan
Zheng, Tong
Mai, Peihua
Huang, Heng
author_facet Chen, Ruibo
Zhang, Sheng
Wu, Yihan
Zheng, Tong
Mai, Peihua
Huang, Heng
contents The growing prevalence of large language models (LLMs) and vision-language models (VLMs) has heightened the need for reliable techniques to determine whether a model has been fine-tuned from or is even identical to another. Existing similarity-based methods often require access to model parameters or produce heuristic scores without principled thresholds, limiting their applicability. We introduce Random Selection Probing (RSP), a hypothesis-testing framework that formulates model correlation detection as a statistical test. RSP optimizes textual or visual prefixes on a reference model for a random selection task and evaluates their transferability to a target model, producing rigorous p-values that quantify evidence of correlation. To mitigate false positives, RSP incorporates an unrelated baseline model to filter out generic, transferable features. We evaluate RSP across both LLMs and VLMs under diverse access conditions for reference models and test models. Experiments on fine-tuned and open-source models show that RSP consistently yields small p-values for related models while maintaining high p-values for unrelated ones. Extensive ablation studies further demonstrate the robustness of RSP. These results establish RSP as the first principled and general statistical framework for model correlation detection, enabling transparent and interpretable decisions in modern machine learning ecosystems.
format Preprint
id arxiv_https___arxiv_org_abs_2509_24171
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Model Correlation Detection via Random Selection Probing
Chen, Ruibo
Zhang, Sheng
Wu, Yihan
Zheng, Tong
Mai, Peihua
Huang, Heng
Machine Learning
The growing prevalence of large language models (LLMs) and vision-language models (VLMs) has heightened the need for reliable techniques to determine whether a model has been fine-tuned from or is even identical to another. Existing similarity-based methods often require access to model parameters or produce heuristic scores without principled thresholds, limiting their applicability. We introduce Random Selection Probing (RSP), a hypothesis-testing framework that formulates model correlation detection as a statistical test. RSP optimizes textual or visual prefixes on a reference model for a random selection task and evaluates their transferability to a target model, producing rigorous p-values that quantify evidence of correlation. To mitigate false positives, RSP incorporates an unrelated baseline model to filter out generic, transferable features. We evaluate RSP across both LLMs and VLMs under diverse access conditions for reference models and test models. Experiments on fine-tuned and open-source models show that RSP consistently yields small p-values for related models while maintaining high p-values for unrelated ones. Extensive ablation studies further demonstrate the robustness of RSP. These results establish RSP as the first principled and general statistical framework for model correlation detection, enabling transparent and interpretable decisions in modern machine learning ecosystems.
title Model Correlation Detection via Random Selection Probing
topic Machine Learning
url https://arxiv.org/abs/2509.24171