Bodhi VLM: Privacy-Alignment Modeling for Hierarchical Visual Representations in Vision Backbones and VLM Encoders via Bottom-Up and Top-Down Feature Search
Bo Ma, Wei Qi Yan, Jinsong Wu

TL;DR
Bodhi VLM introduces a framework for modeling privacy-preserving hierarchical visual representations in vision backbones and vision-language models, enabling interpretable privacy alignment through feature search and distribution comparison.
Contribution
It presents a novel privacy-alignment modeling framework that links sensitive concepts to hierarchical features and assesses privacy budgets using an EM-based interpretability method.
Findings
Effective privacy-alignment signals across multiple models
Comparable deviation trends between bottom-up and top-down strategies
Stable privacy assessment demonstrated on various vision models
Abstract
Learning systems that preserve privacy often inject noise into hierarchical visual representations; a central challenge is to \emph{model} how such perturbations align with a declared privacy budget in a way that is interpretable and applicable across vision backbones and vision--language models (VLMs). We propose \emph{Bodhi VLM}, a \emph{privacy-alignment modeling} framework for \emph{hierarchical neural representations}: it (1) links sensitive concepts to layer-wise grouping via NCP and MDAV-based clustering; (2) locates sensitive feature regions using bottom-up (BUA) and top-down (TDA) strategies over multi-scale representations (e.g., feature pyramids or vision-encoder layers); and (3) uses an Expectation-Maximization Privacy Assessment (EMPA) module to produce an interpretable \emph{budget-alignment signal} by comparing the fitted sensitive-feature distribution to an…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Adversarial Robustness in Machine Learning · Domain Adaptation and Few-Shot Learning
