A primer on information theory, with applications to neuroscience
Felix Effenberger

TL;DR
This paper introduces the fundamentals of information theory and demonstrates their application to neuroscience, providing accessible explanations, estimation techniques, and software tools for analyzing neural data.
Contribution
It offers a beginner-friendly overview of information theory concepts and their practical use in neuroscience research, including estimation methods and software resources.
Findings
Information theory provides valuable insights into neural systems.
Estimation techniques are essential for practical data analysis.
Software tools facilitate the application of information-theoretic measures.
Abstract
Given the constant rise in quantity and quality of data obtained from neural systems on many scales ranging from molecular to systems', information-theoretic analyses became increasingly necessary during the past few decades in the neurosciences. Such analyses can provide deep insights into the functionality of such systems, as well as a rigid mathematical theory and quantitative measures of information processing in both healthy and diseased states of neural systems. This chapter will present a short introduction to the fundamentals of information theory, especially suited for people having a less firm background in mathematics and probability theory. To begin, the fundamentals of probability theory such as the notion of probability, probability distributions, and random variables will be reviewed. Then, the concepts of information and entropy (in the sense of Shannon), mutual…
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Taxonomy
TopicsNeural Networks and Applications · Fractal and DNA sequence analysis
