2019
DOI: 10.1109/tcomm.2019.2906305
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An Approximation Algorithm for Optimal Clique Cover Delivery in Coded Caching

Abstract: Coded caching can significantly reduce the communication bandwidth requirement for satisfying users' demands by utilizing the multicasting gain among multiple users. Most existing works assume that the users follow the prescriptions for content placement made by the system. However, users may prefer to decide what files to cache. To address this issue, we consider a network consisting of a file server connected through a shared link to K users, each equipped with a cache which has been already filled arbitrari… Show more

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Cited by 6 publications
(11 citation statements)
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“…Hence, this algorithm achieves a normalized delivery delay of 1 [3]: Maddah-Ali and Niesen's delivery algorithm generalized to arbitrary cache placement realizations. • Size-aware coded multicast (SACM) [7]: The state-of-theart approximation algorithm that is guaranteed to achieve a normalized delivery delay, which is within a factor 1 + log K of the optimum. scenario with K = 4 users, each capable of caching M = 1 file.…”
Section: Simulation Resultsmentioning
confidence: 99%
“…Hence, this algorithm achieves a normalized delivery delay of 1 [3]: Maddah-Ali and Niesen's delivery algorithm generalized to arbitrary cache placement realizations. • Size-aware coded multicast (SACM) [7]: The state-of-theart approximation algorithm that is guaranteed to achieve a normalized delivery delay, which is within a factor 1 + log K of the optimum. scenario with K = 4 users, each capable of caching M = 1 file.…”
Section: Simulation Resultsmentioning
confidence: 99%
“…Coded caching is finding its application in modern technologies and services, such as content delivery [10][11][12], mobile computing [13][14][15], and information-enteric networks [16]. Different aspects of coded caching have recently been studied among which we can refer to as [17], centralized [18,19] and decentralized [18,19] coded caching, placement [20] and delivery [21,22] schemes, as well as added pre-fetching phase [23], multi-casting [22,[24][25][26], scheduling [27], error correction [28], clustering [29], heterogeneity [12,25,30], the impact of file size [31,32], dealing with non-uniform user demands [33] and peak-time traffic reduction [1]. Moreover, security in coded caching has been considered as a concern [20,[34][35][36] and cryptography has been among the best-studied security mechanisms for use in coded caching [37,38].…”
Section: Related Workmentioning
confidence: 99%
“…Ramakrishnan et al in [28] proposed to divide a file into subfiles and code the subfiles and then transmit them to users, which can effectively reduce the traffic on the shared link. Asghari et al studied the optimal coded delivery scheme for arbitrary file deployment [14,15] and formulated the problem as a set cover problem, which however ignored the redundant data among subfiles in the packet. Such data packets may cause repeated transmission of the same subfiles and still waste a lot of network bandwidth.…”
Section: Related Workmentioning
confidence: 99%
“…To reduce the network load and computing complexity, Asghari et al [14,15] proposed an efficient method to avoid obtaining the set of feasible data packets, namely, data packets with smaller bits and more subfiles are selected from the subfile set as much as possible. However, for a multiobjective optimization problem, this method cannot be used directly.…”
Section: Algorithm Designmentioning
confidence: 99%
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