Kernels for storage capacity and dual index coding

IF 1.2 2区 数学 Q2 MATHEMATICS Journal of Combinatorial Theory Series A Pub Date : 2025-11-01 Epub Date: 2025-04-25 DOI:10.1016/j.jcta.2025.106059
Ishay Haviv
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Abstract

The storage capacity of a graph measures the maximum amount of information that can be stored across its vertices, such that the information at any vertex can be recovered from the information stored at its neighborhood. The study of this graph quantity is motivated by applications in distributed storage and by its intimate relations to the index coding problem from the area of network information theory. In the latter, one wishes to minimize the amount of information that has to be transmitted to a collection of receivers, in a way that enables each of them to discover its required data using some prior side information.
In this paper, we initiate the study of the
and
problems from the perspective of parameterized complexity. We prove that the
problem parameterized by the solution size admits a kernelization algorithm producing kernels of linear size. We also provide such a result for the
problem, in the linear and non-linear settings, where it is parameterized by the dual value of the solution, i.e., the length of the transmission that can be saved using the side information. A key ingredient in the proofs is the crown decomposition technique due to Chor, Fellows, and Juedes [14], [11]. As an application, we significantly extend an algorithmic result of Dau, Skachek, and Chee [13].
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用于存储容量和双索引编码的内核
图的存储容量测量可以存储在其顶点上的最大信息量,这样任何顶点上的信息都可以从存储在其邻域的信息中恢复。这种图量的研究是由分布式存储中的应用以及它与网络信息论领域的索引编码问题的密切关系所驱动的。在后者中,人们希望将必须传输到接收器集合的信息量最小化,使每个接收器都能够使用一些先前的侧信息来发现其所需的数据。本文从参数化复杂性的角度出发,对这些问题进行了研究。我们证明了由解大小参数化的问题允许一种产生线性大小核的核化算法。我们也为线性和非线性设置下的问题提供了这样的结果,其中它由解的对偶值参数化,即可以使用侧信息保存的传输长度。证明中的一个关键因素是冠分解技术,这是由Chor, Fellows和Juedes[14],[14]提出的。作为一个应用,我们显著扩展了Dau, Skachek和Chee bb0的算法结果。
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来源期刊
CiteScore
2.90
自引率
9.10%
发文量
94
审稿时长
12 months
期刊介绍: The Journal of Combinatorial Theory publishes original mathematical research concerned with theoretical and physical aspects of the study of finite and discrete structures in all branches of science. Series A is concerned primarily with structures, designs, and applications of combinatorics and is a valuable tool for mathematicians and computer scientists.
期刊最新文献
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