MLLGMay 10, 2024

Generalization analysis with deep ReLU networks for metric and similarity learning

arXiv:2405.06415v14 citationsh-index: 2
Originality Incremental advance
AI Analysis

This provides the first generalization analysis with excess error bounds for metric and similarity learning, addressing a theoretical gap for researchers in machine learning theory.

The paper tackles the lack of generalization analysis in metric and similarity learning by deriving excess generalization error bounds for deep ReLU networks, achieving an optimal excess risk rate through careful approximation and estimation error analysis.

While considerable theoretical progress has been devoted to the study of metric and similarity learning, the generalization mystery is still missing. In this paper, we study the generalization performance of metric and similarity learning by leveraging the specific structure of the true metric (the target function). Specifically, by deriving the explicit form of the true metric for metric and similarity learning with the hinge loss, we construct a structured deep ReLU neural network as an approximation of the true metric, whose approximation ability relies on the network complexity. Here, the network complexity corresponds to the depth, the number of nonzero weights and the computation units of the network. Consider the hypothesis space which consists of the structured deep ReLU networks, we develop the excess generalization error bounds for a metric and similarity learning problem by estimating the approximation error and the estimation error carefully. An optimal excess risk rate is derived by choosing the proper capacity of the constructed hypothesis space. To the best of our knowledge, this is the first-ever-known generalization analysis providing the excess generalization error for metric and similarity learning. In addition, we investigate the properties of the true metric of metric and similarity learning with general losses.

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