Log-Concave Sequences in Coding Theory
Minjia Shi, Xuan Wang, Junmin An, Jon-Lark Kim

TL;DR
This paper introduces the concept of log-concave sequences in coding theory, demonstrating that many important codes have log-concave weight distributions, which could lead to new research directions.
Contribution
The paper establishes that several classes of codes, including Hamming, Reed-Muller, and certain MDS codes, have log-concave weight distributions, introducing a new property in coding theory.
Findings
Binary Hamming codes of certain lengths are log-concave.
Reed-Muller codes of order 2 are log-concave.
Many MDS codes are log-concave under specific conditions.
Abstract
We introduce the notion of logarithmically concave (or log-concave) sequences in Coding Theory. A sequence of real numbers is called log-concave if for all . A natural sequence of positive numbers in coding theory is the weight distribution of a linear code consisting of the nonzero values among 's where denotes the number of codewords of weight . We call a linear code log-concave if its nonzero weight distribution is log-concave. Our main contribution is to show that all binary general Hamming codes of length ( or ), the binary extended Hamming codes of length , and the second order Reed-Muller codes are all log-concave while the homogeneous and projective second order Reed-Muller codes are either log-concave, or 1-gap log-concave. Furthermore, we…
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Taxonomy
TopicsCellular Automata and Applications · Computability, Logic, AI Algorithms · Mathematical Dynamics and Fractals
