Properties of Maximally Recoverable Product Codes and Higher Order MDS Codes

D. Shivakrishna, V. Lalitha
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Abstract

Product codes are a class of codes which have generator matrices as the tensor product of the component codes and the codeword itself can be represented as an (m × n) array, where the component codes themselves are referred to as the row and column codes. Maximally recoverable product codes (MRPCs) are a class of codes which can recover from all information theoretically recoverable erasure patterns, given the $a$ column and $b$ row constraints imposed by the code. In this work, we derive puncturing and shortening properties of maximally recoverable product codes. We give a sufficient condition to characterize a certain subclass of erasure patterns as correctable and another necessary condition to characterize another subclass of erasure patterns as not correctable. In an earlier work, higher order MDS codes denoted by MDS(l) have been defined in terms of generic matrices and these codes have been shown to be constituent row codes for maximally recoverable product codes for the case of $a$ = 1. We derive a certain inclusion-exclusion type principle for characterizing the dimension of intersection spaces of generic matrices. Applying this, we formally derive a relation between MDS(3) codes and points/lines of the associated projective space.
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最大可恢复产品代码和高阶MDS代码的性质
积码是一类码,其生成矩阵为各分量码的张量积,码字本身可以表示为(m × n)数组,其中各分量码本身称为行码和列码。最大可恢复产品代码(mrpc)是一类可以从理论上可恢复的所有信息擦除模式中恢复的代码,给定代码所施加的$a$列和$b$行约束。在这项工作中,我们得到了最大可恢复产品代码的穿刺和缩短性质。给出了将擦除模式的某一子类定性为可纠正的充分条件和将擦除模式的另一子类定性为不可纠正的必要条件。在早期的工作中,用MDS(l)表示的高阶MDS代码已被定义为一般矩阵,并且这些代码已被证明是在$a$ = 1的情况下最大可恢复产品代码的组成行代码。我们导出了一种包含-排斥型原理来表征一般矩阵的交空间的维数。在此基础上,我们正式导出了MDS(3)码与相关射影空间的点/线之间的关系。
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