2022
DOI: 10.48550/arxiv.2205.05662
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Deep Architecture Connectivity Matters for Its Convergence: A Fine-Grained Analysis

Abstract: Advanced deep neural networks (DNNs), designed by either human or AutoML algorithms, are growing increasingly complex. Diverse operations are connected by complicated connectivity patterns, e.g., various types of skip connections. Those topological compositions are empirically effective and observed to smooth the loss landscape and facilitate the gradient flow in general. However, it remains elusive to derive any principled understanding of their effects on the DNN capacity or trainability, and to understand w… Show more

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