Separation Capacity of Scattering Networks on Low-Dimensional Datasets
We aim to identify scattering network architectures that maximize the separation capacity on data with low intrinsic dimension. The networks we consider employ a fixed monomial nonlinearity and no pooling, so that the only design variable is the frame generated by the network filters. For data modeled as rectifiable sets, we first characterize and bound the separation capacity of general feature extractors in terms of the geometry of the dataset. We then particularize to scattering networks and obtain two design criteria: (i) the filters should meet the data on sufficiently many frequencies, a
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- LinkedLinked via arxiv author · 85%Konstantin Häberle →
“Separation Capacity of Scattering Networks on Low-Dimensional Datasets”
- LinkedLinked via arxiv author · 85%Helmut Bölcskei →
“Separation Capacity of Scattering Networks on Low-Dimensional Datasets”
- FuzzySimilar title/name (fuzzy) · 84%tensorflow/datasets →
“Fuzzy title match (0.92): “Separation Capacity of Scattering Networks on Low-Dimensiona” ≈ “tensorflow/datasets””
- FuzzySimilar title/name (fuzzy) · 84%huggingface/datasets →
“Fuzzy title match (0.92): “Separation Capacity of Scattering Networks on Low-Dimensiona” ≈ “huggingface/datasets””
