MMODELYST
Papers/ZooClaw-FashionSigLIP2: Distilled Fine-tuning for Robust Fashion Retrieval
PAP

ZooClaw-FashionSigLIP2: Distilled Fine-tuning for Robust Fashion Retrieval

Jun 26, 2026

arXiv
Abstract

Adapting a foundation vision-language encoder to a specialized retrieval task creates a fundamental tradeoff: gains on the target distribution come at the cost of the foundation model's broad generalization, and fashion retrieval is a stringent instance of this problem. We present ZooClaw-FashionSigLIP2, a fashion-specialized SigLIP2-base model that resolves this tradeoff with a simple recipe -- full fine-tuning with knowledge distillation on curated in-domain data, followed by \wiseft~wortsman2022wiseft weight interpolation with the base model -- and outperforms LoRA, larger backbones (up to 1B parameters), and external training data. Under fair evaluation, ZooClaw-FashionSigLIP2 outperforms all baselines on every benchmark in our suite. In addition, we release ZooClaw-Fashion, a new high-quality fashion retrieval benchmark, and a systematic quality analysis of widely-used benchmarks that exposes and mitigates structural biases in their public ground truth. We open-source the model weights and all evaluation artifacts to facilitate future research.

Select text to highlight · click a highlight to remove · saved in this browser only
Authors
Siqiao Xue, Chunxue Xu
Your notes (browser-local)
saved
Cross-links
No linked entities.
arXiv:2606.27708