pith. sign in

Inductive Bias of Deep Convolutional Networks through Pooling Geometry

1 Pith paper cite this work. Polarity classification is still indexing.

1 Pith paper citing it
abstract

Our formal understanding of the inductive bias that drives the success of convolutional networks on computer vision tasks is limited. In particular, it is unclear what makes hypotheses spaces born from convolution and pooling operations so suitable for natural images. In this paper we study the ability of convolutional networks to model correlations among regions of their input. We theoretically analyze convolutional arithmetic circuits, and empirically validate our findings on other types of convolutional networks as well. Correlations are formalized through the notion of separation rank, which for a given partition of the input, measures how far a function is from being separable. We show that a polynomially sized deep network supports exponentially high separation ranks for certain input partitions, while being limited to polynomial separation ranks for others. The network's pooling geometry effectively determines which input partitions are favored, thus serves as a means for controlling the inductive bias. Contiguous pooling windows as commonly employed in practice favor interleaved partitions over coarse ones, orienting the inductive bias towards the statistics of natural images. Other pooling schemes lead to different preferences, and this allows tailoring the network to data that departs from the usual domain of natural imagery. In addition to analyzing deep networks, we show that shallow ones support only linear separation ranks, and by this gain insight into the benefit of functions brought forth by depth - they are able to efficiently model strong correlation under favored partitions of the input.

fields

eess.SP 1

years

2026 1

verdicts

UNVERDICTED 1

representative citing papers

MuViS: Multimodal Virtual Sensing Benchmark

eess.SP · 2026-03-13 · unverdicted · novelty 6.0

MuViS is a new unified benchmark showing that neither gradient-boosted trees nor deep neural networks hold a universal advantage in multimodal virtual sensing.

citing papers explorer

Showing 1 of 1 citing paper.

  • MuViS: Multimodal Virtual Sensing Benchmark eess.SP · 2026-03-13 · unverdicted · none · ref 11 · internal anchor

    MuViS is a new unified benchmark showing that neither gradient-boosted trees nor deep neural networks hold a universal advantage in multimodal virtual sensing.