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infomeasure: A Comprehensive Python Package for Information Theory Measures and Estimators

infomeasure: A Comprehensive Python Package for Information Theory Measures and Estimators

来源:Arxiv_logoArxiv
英文摘要

Information theory, i.e. the mathematical analysis of information and of its processing, has become a tenet of modern science; yet, its use in real-world studies is usually hindered by its computational complexity, the lack of coherent software frameworks, and, as a consequence, low reproducibility. We here introduce infomeasure, an open-source Python package designed to provide robust tools for calculating a wide variety of information-theoretic measures, including entropies, mutual information, transfer entropy and divergences. It is designed for both discrete and continuous variables; implements state-of-the-art estimation techniques; and allows the calculation of local measure values, $p$-values and $t$-scores. By unifying these approaches under one consistent framework, infomeasure aims to mitigate common pitfalls, ensure reproducibility, and simplify the practical implementation of information-theoretic analyses. In this contribution, we explore the motivation and features of infomeasure; its validation, using known analytical solutions; and exemplify its utility in a case study involving the analysis of human brain time series.

Carlson Moses Büth、Kishor Acharya、Massimiliano Zanin

数学计算技术、计算机技术

Carlson Moses Büth,Kishor Acharya,Massimiliano Zanin.infomeasure: A Comprehensive Python Package for Information Theory Measures and Estimators[EB/OL].(2025-05-07)[2025-07-01].https://arxiv.org/abs/2505.14696.点此复制

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