Minimax entropy: The statistical physics of optimal constraints
ORAL
Abstract
In the study of high-dimensional systems, one would like to uncover a small set of features that explain a wide range of behaviors. The maximum entropy principle provides the unique mapping from fine-scale features to large-scale behaviors, yet it does not tell us which features to include in a model. Here we show that one should select the features that minimize the entropy of the maximum entropy model, resulting in a “minimax entropy” principle. While applying this principle is generally difficult, we discuss several versions of the problem that admit tractable solutions. As experiments advance to larger and larger systems -- from genetic networks and chromatin structure to neural activity and animal behavior -- we present a unified framework for identifying the most important features in high-dimensional data.
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Publication: 1. Christopher W. Lynn, Qiwei Yu, Rich Pang, William Bialek, & Stephanie E. Palmer. Exactly solvable statistical physics models for large neuronal populations. Preprint: arxiv.org/abs/2310.10860.<br>2. Christopher W. Lynn, Qiwei Yu, Rich Pang, William Bialek, & Stephanie E. Palmer. Exact minimax entropy models of large-scale neuronal activity. Preprint: https://arxiv.org/abs/2402.00007.<br>3. David Carcamo and Christopher W. Lynn. Statistical physics of large-scale neural activity with loops. In preparation.
Presenters
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Christopher W Lynn
Yale University
Authors
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Christopher W Lynn
Yale University