Energy propagation in scattering convolution networks can be arbitrarily slow

We analyze energy decay for deep convolutional neural networks employed as feature extractors, including Mallat's wavelet scattering transform. For time-frequency scattering transforms based on Gabor filters, previous work has established that energy decay is exponential for arbitrary square-in...

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Bibliographic Details
Published inApplied and computational harmonic analysis Vol. 79; p. 101790
Main Authors Führ, Hartmut, Getter, Max
Format Journal Article
LanguageEnglish
Published Elsevier Inc 01.10.2025
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Online AccessGet full text
ISSN1063-5203
DOI10.1016/j.acha.2025.101790

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Summary:We analyze energy decay for deep convolutional neural networks employed as feature extractors, including Mallat's wavelet scattering transform. For time-frequency scattering transforms based on Gabor filters, previous work has established that energy decay is exponential for arbitrary square-integrable input signals. In contrast, our main results allow proving that this is false for wavelet scattering in any dimension. Specifically, we show that the energy decay of wavelet and wavelet-like scattering transforms acting on generic square-integrable signals can be arbitrarily slow. Importantly, this slow decay behavior holds for dense subsets of L2(Rd), indicating that rapid energy decay is generally an unstable property of signals. We complement these findings with positive results that allow us to infer fast (up to exponential) energy decay for generalized Sobolev spaces tailored to the frequency localization of the underlying filter bank. Both negative and positive results highlight that energy decay in scattering networks critically depends on the interplay between the respective frequency localizations of both the signal and the filters used.
ISSN:1063-5203
DOI:10.1016/j.acha.2025.101790