16,513 research outputs found
File Updates Under Random/Arbitrary Insertions And Deletions
A client/encoder edits a file, as modeled by an insertion-deletion (InDel)
process. An old copy of the file is stored remotely at a data-centre/decoder,
and is also available to the client. We consider the problem of throughput- and
computationally-efficient communication from the client to the data-centre, to
enable the server to update its copy to the newly edited file. We study two
models for the source files/edit patterns: the random pre-edit sequence
left-to-right random InDel (RPES-LtRRID) process, and the arbitrary pre-edit
sequence arbitrary InDel (APES-AID) process. In both models, we consider the
regime in which the number of insertions/deletions is a small (but constant)
fraction of the original file. For both models we prove information-theoretic
lower bounds on the best possible compression rates that enable file updates.
Conversely, our compression algorithms use dynamic programming (DP) and entropy
coding, and achieve rates that are approximately optimal.Comment: The paper is an extended version of our paper to be appeared at ITW
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