TL;DR
This paper introduces SpectralX, a flexible framework for explaining time-series models using time-frequency analysis, along with a new perturbation-based method FIA, demonstrating improved explanation quality and efficiency.
Contribution
The work presents SpectralX, an adaptable time-frequency explanation framework, and introduces FIA, a novel perturbation-based method for more efficient and class-specific explanations in time-series classification.
Findings
FIA outperforms existing perturbation methods in time-frequency explanations.
SpectralX enables plug-in of various XAI methods without architecture changes.
User study confirms FIA's practicality for class-specific explanations.
Abstract
Despite the massive attention given to time-series explanations due to their extensive applications, a notable limitation in existing approaches is their primary reliance on the time-domain. This overlooks the inherent characteristic of time-series data containing both time and frequency features. In this work, we present Spectral eXplanation (SpectralX), an XAI framework that provides time-frequency explanations for time-series black-box classifiers. This easily adaptable framework enables users to "plug-in" various perturbation-based XAI methods for any pre-trained time-series classification models to assess their impact on the explanation quality without having to modify the framework architecture. Additionally, we introduce Feature Importance Approximations (FIA), a new perturbation-based XAI method. These methods consist of feature insertion, deletion, and combination techniques to…
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Taxonomy
MethodsSoftmax · Attention Is All You Need
