Quantifying Relevance in Learning and Inference
Matteo Marsili, Yasser Roudi

TL;DR
This paper reviews recent advances in understanding learning through the lens of relevance, defining it as the information content about the generative model, and explores optimal samples and machines exhibiting critical statistical features.
Contribution
It introduces a relevance-based framework for quantifying learning, defining ideal limits of samples and machines with maximal information content and critical statistical properties.
Findings
Maximally informative samples follow a power-law distribution.
Optimal learning machines exhibit large susceptibility and thermodynamic anomalies.
Zipf's law characterizes the most compressed, lossless representations.
Abstract
Learning is a distinctive feature of intelligent behaviour. High-throughput experimental data and Big Data promise to open new windows on complex systems such as cells, the brain or our societies. Yet, the puzzling success of Artificial Intelligence and Machine Learning shows that we still have a poor conceptual understanding of learning. These applications push statistical inference into uncharted territories where data is high-dimensional and scarce, and prior information on "true" models is scant if not totally absent. Here we review recent progress on understanding learning, based on the notion of "relevance". The relevance, as we define it here, quantifies the amount of information that a dataset or the internal representation of a learning machine contains on the generative model of the data. This allows us to define maximally informative samples, on one hand, and optimal learning…
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Taxonomy
TopicsHermeneutics and Narrative Identity · Aging, Elder Care, and Social Issues · Health, Medicine and Society
