Comprehensive and Reliable Feature Attribution for Diverse Modalities and Models via Frequency-Domain Insights 文章

ArXiv CS.AI2026-06-06NEWSen作者: Zechen Liu, Feiyang Zhang, Wei Song, Xiang Li, Wei Wei

详细信息

来源站点
ArXiv CS.AI
作者
Zechen Liu, Feiyang Zhang, Wei Song, Xiang Li, Wei Wei
文章类型
NEWS
语言
en
发布日期
2026-06-06

摘要

arXiv:2411.18343v3 Announce Type: replace-cross Abstract: Personalized Federal learning(PFL) allows clients to cooperatively train a personalized model without disclosing their private dataset. However, PFL suffers from Non-IID, heterogeneous devices, lack of fairness, and unclear contribution which urgently need the interpretability of deep learning model to overcome these challenges. These challenges proposed new demands for interpretability. Low cost, privacy, and detailed information. There is no current interpretability method satisfying them. In this paper, we propose a novel interpretability method \emph{FreqX} by introducing Signal Processing and Information Theory. Our experiments show that the explanation results of FreqX contain both attribution information and concept information. FreqX runs at least 10 times faster than the baselines which contain concept information.

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