Parallel algorithms for data compression
Journal of the ACM (JACM)
Efficient parallel algorithms
Text compression
Parallel Algorithms for the Longest Common Subsequence Problem
IEEE Transactions on Parallel and Distributed Systems
The effect of non-greedy parsing in Ziv-Lempel compression methods
DCC '95 Proceedings of the Conference on Data Compression
Parallel algorithms for the static dictionary compression
DCC '95 Proceedings of the Conference on Data Compression
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The data compression based on dictionary techniques works by replacing phrases in the input string with indexes into some dictionary. The dictionary can be static or dynamic. In static dictionary compression, the dictionary contains a predetermined fixed set of entries. In dynamic dictionary compression, the dictionary changes its entries during compression. We present parallel algorithms for two parsing strategies for static dictionary compression. One is the optimal parsing strategy with dictionaries that have the prefix property, for which our algorithm requires $O(L + \log n)$ time and $O(n)$ processors, where $n$ is the number of symbols in the input string, and $L$ is the maximum length of the dictionary entries, while previous results run in $O(L + \log n)$ time using $O(n^{2})$ processors or in $O(L + \log^{2} n)$ time using $O(n)$ processors. The other is the longest fragment first (LFF) parsing strategy, for which our algorithm requires $O(L + \log n)$ time and $O(n\log L)$ processors, while a previous result obtained an $O(L\log n)$ time performance on $O(n/\log n)$ processors. For both strategies, we derive our parallel algorithms by modifying the on-line algorithms using a pointer doubling technique.