LGCVOCNov 6, 2023

Understanding Deep Representation Learning via Layerwise Feature Compression and Discrimination

arXiv:2311.02960v429 citationsh-index: 15Has Code
Originality Incremental advance
AI Analysis

This provides a quantitative framework for interpreting deep representation learning, which is foundational for advancing AI theory and applications, though it is incremental in building on prior empirical studies.

The paper tackles the problem of understanding how deep networks learn hierarchical features by analyzing intermediate layers in deep linear networks, showing that each layer compresses within-class features geometrically and discriminates between-class features linearly under specific conditions, with empirical validation extending to nonlinear networks.

Over the past decade, deep learning has proven to be a highly effective tool for learning meaningful features from raw data. However, it remains an open question how deep networks perform hierarchical feature learning across layers. In this work, we attempt to unveil this mystery by investigating the structures of intermediate features. Motivated by our empirical findings that linear layers mimic the roles of deep layers in nonlinear networks for feature learning, we explore how deep linear networks transform input data into output by investigating the output (i.e., features) of each layer after training in the context of multi-class classification problems. Toward this goal, we first define metrics to measure within-class compression and between-class discrimination of intermediate features, respectively. Through theoretical analysis of these two metrics, we show that the evolution of features follows a simple and quantitative pattern from shallow to deep layers when the input data is nearly orthogonal and the network weights are minimum-norm, balanced, and approximate low-rank: Each layer of the linear network progressively compresses within-class features at a geometric rate and discriminates between-class features at a linear rate with respect to the number of layers that data have passed through. To the best of our knowledge, this is the first quantitative characterization of feature evolution in hierarchical representations of deep linear networks. Empirically, our extensive experiments not only validate our theoretical results numerically but also reveal a similar pattern in deep nonlinear networks which aligns well with recent empirical studies. Moreover, we demonstrate the practical implications of our results in transfer learning. Our code is available at https://github.com/Heimine/PNC_DLN.

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