Are Neuro-Inspired Multi-Modal Vision-Language Models Resilient to Membership Inference Privacy Leakage?
David Amebley, Sayanton Dibbo

TL;DR
This study investigates whether neuro-inspired multi-modal vision-language models are more resilient to membership inference privacy attacks, demonstrating that neuro-regularized models show improved privacy protection without losing utility.
Contribution
Introduces a neuroscience-inspired topological regularization framework to enhance privacy resilience in multi-modal vision-language models, with extensive experimental validation.
Findings
Neuro-regularized models reduce attack success by 24% ROC-AUC.
Neuro VLMs maintain similar utility to baseline models.
Results are consistent across multiple models and datasets.
Abstract
In the age of agentic AI, the growing deployment of multi-modal models (MMs) has introduced new attack vectors that can leak sensitive training data in MMs, causing privacy leakage. This paper investigates a black-box privacy attack, i.e., membership inference attack (MIA) on multi-modal vision-language models (VLMs). State-of-the-art research analyzes privacy attacks primarily to unimodal AI-ML systems, while recent studies indicate MMs can also be vulnerable to privacy attacks. While researchers have demonstrated that biologically inspired neural network representations can improve unimodal model resilience against adversarial attacks, it remains unexplored whether neuro-inspired MMs are resilient against privacy attacks. In this work, we introduce a systematic neuroscience-inspired topological regularization (tau) framework to analyze MM VLMs resilience against image-text-based…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Multimodal Machine Learning Applications · Domain Adaptation and Few-Shot Learning
