Classical and Nonextensive Information Theory
Gilson Antonio Giraldi (National Laboratory for Scientific Computing)

TL;DR
This paper reviews classical information theory and explores generalizations using Tsallis entropy, aiming to extend theoretical frameworks and discuss future research directions.
Contribution
It introduces a generalization of classical information theory results through Tsallis entropy and discusses preliminary findings and future research aims.
Findings
Presented a review of classical information theory
Proposed a generalization using Tsallis entropy
Discussed preliminary results and future research directions
Abstract
In this work we firstly review some results in Classical Information Theory. Next, we try to generalize these results by using the Tsallis entropy. We present a preliminary result and discuss our aims in this field.
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Taxonomy
TopicsStatistical Mechanics and Entropy · Complex Systems and Time Series Analysis · Advanced Statistical Methods and Models
