The Deep Arbitrary Polynomial Chaos Neural Network or how Deep Artificial Neural Networks could benefit from Data-Driven Homogeneous Chaos Theory
Sergey Oladyshkin, Timothy Praditia, Ilja Kr\"oker, Farid Mohammadi,, Wolfgang Nowak, Sebastian Otte

TL;DR
This paper proposes a novel approach to deep neural networks by integrating data-driven homogeneous chaos theory, specifically arbitrary polynomial chaos, to improve neural signal representation and reduce redundancy.
Contribution
It introduces Deep arbitrary polynomial chaos neural networks, combining polynomial chaos expansion with deep learning to enhance neural signal orthogonality and data efficiency.
Findings
Reveals conventional DANNs rely on Gaussian assumptions for neural signals.
Shows that DANNs may have redundant neural representations.
Proposes a data-driven orthonormal basis for neural signals using aPC.
Abstract
Artificial Intelligence and Machine learning have been widely used in various fields of mathematical computing, physical modeling, computational science, communication science, and stochastic analysis. Approaches based on Deep Artificial Neural Networks (DANN) are very popular in our days. Depending on the learning task, the exact form of DANNs is determined via their multi-layer architecture, activation functions and the so-called loss function. However, for a majority of deep learning approaches based on DANNs, the kernel structure of neural signal processing remains the same, where the node response is encoded as a linear superposition of neural activity, while the non-linearity is triggered by the activation functions. In the current paper, we suggest to analyze the neural signal processing in DANNs from the point of view of homogeneous chaos theory as known from polynomial chaos…
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Taxonomy
TopicsNeural Networks and Applications · Underwater Acoustics Research · Statistical Mechanics and Entropy
