LGITNov 18, 2024

The Generalization Error of Machine Learning Algorithms

arXiv:2411.12030v17 citationsh-index: 25
Originality Incremental advance
AI Analysis

This foundational work addresses the problem of understanding generalization error for machine learning researchers, though it appears incremental as it builds on existing theoretical frameworks.

The paper introduces the method of gaps, a technique for deriving closed-form expressions for the generalization error of machine learning algorithms in terms of information measures, enabling the recovery of all existing exact expressions and generating numerous new ones to enhance understanding and connect to areas like hypothesis testing.

In this paper, the method of gaps, a technique for deriving closed-form expressions in terms of information measures for the generalization error of machine learning algorithms is introduced. The method relies on two central observations: $(a)$~The generalization error is an average of the variation of the expected empirical risk with respect to changes on the probability measure (used for expectation); and~$(b)$~these variations, also referred to as gaps, exhibit closed-form expressions in terms of information measures. The expectation of the empirical risk can be either with respect to a measure on the models (with a fixed dataset) or with respect to a measure on the datasets (with a fixed model), which results in two variants of the method of gaps. The first variant, which focuses on the gaps of the expected empirical risk with respect to a measure on the models, appears to be the most general, as no assumptions are made on the distribution of the datasets. The second variant develops under the assumption that datasets are made of independent and identically distributed data points. All existing exact expressions for the generalization error of machine learning algorithms can be obtained with the proposed method. Also, this method allows obtaining numerous new exact expressions, which improves the understanding of the generalization error; establish connections with other areas in statistics, e.g., hypothesis testing; and potentially, might guide algorithm designs.

Foundations

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