How and what to learn:The modes of machine learning
Sihan Feng, Yong Zhang, Fuming Wang, Hong Zhao

TL;DR
This paper introduces weight pathway analysis (WPA), a novel method to interpret neural networks by visualizing subnetworks, revealing their holographic information storage and fundamental linear and nonlinear learning modes.
Contribution
The paper proposes WPA as a new interpretability tool, uncovering neural network learning modes and providing insights into their internal structure and information encoding.
Findings
Neural networks store information holographically in subnetworks.
Identified two fundamental learning modes: linear and nonlinear.
Visualized network structure and parameter impacts as radiographs.
Abstract
Despite their great success, neural networks still remain as black-boxes due to the lack of interpretability. Here we propose a new analyzing method, namely the weight pathway analysis (WPA), to make them transparent. We consider weights in pathways that link neurons longitudinally from input neurons to output neurons, or simply weight pathways, as the basic units for understanding a neural network, and decompose a neural network into a series of subnetworks of such weight pathways. A visualization scheme of the subnetworks is presented that gives longitudinal perspectives of the network like radiographs, making the internal structures of the network visible. Impacts of parameter adjustments or structural changes to the network can be visualized via such radiographs. Characteristic maps are established for subnetworks to characterize the enhancement or suppression of the influence of…
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Taxonomy
TopicsNeural Networks and Applications · Cell Image Analysis Techniques · Anomaly Detection Techniques and Applications
