Generalization of the Fano and Non-Fano Index Coding Instances
Arman Sharififar, Parastoo Sadeghi, Neda Aboutorab

TL;DR
This paper explores the properties of generalized Fano and non-Fano matroids related to index coding, providing new proofs and characterizations of their representability over different field characteristics.
Contribution
It offers an independent matrix-based proof of matroid representability and introduces new classes of index coding instances based on these matroids.
Findings
p-Fano matroids are representable only over fields with characteristic p
p-non-Fano matroids are representable over fields with any characteristic except p
New classes of index coding instances with size p^2 + 4p + 3 are characterized
Abstract
Matroid theory is fundamentally connected with index coding and network coding problems. In fact, the reliance of linear index coding and network coding rates on the characteristic of a field has been demonstrated by using the two well-known matroid instances, namely the Fano and non-Fano matroids. This established the insufficiency of linear coding, one of the fundamental theorems in both index coding and network coding. While the Fano matroid is linearly representable only over fields with characteristic two, the non-Fano instance is linearly representable only over fields with odd characteristic. For fields with arbitrary characteristic , the Fano and non-Fano matroids were extended to new classes of matroid instances whose linear representations are dependent on fields with characteristic . However, these matroids have not been well appreciated nor cited in the fields of…
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Taxonomy
TopicsCoding theory and cryptography · graph theory and CDMA systems · Cellular Automata and Applications
