Online Grammar Compression for Frequent Pattern Discovery
Abstract
Various grammar compression algorithms have been proposed in the last decade. A grammar compression is a restricted CFG deriving the string deterministically. An efficient grammar compression develops a smaller CFG by finding duplicated patterns and removing them. This process is just a frequent pattern discovery by grammatical inference. While we can get any frequent pattern in linear time using a preprocessed string, a huge working space is required for longer patterns, and the whole string must be loaded into the memory preliminarily. We propose an online algorithm approximating this problem within a compressed space. The main contribution is an improvement of the previously best known approximation ratio to where is the length of an optimal pattern in a string of length and is the iteration of the logarithm base . For a sufficiently large , is practically constant. The experimental results show that our algorithm extracts nearly optimal patterns and achieves a significant improvement in memory consumption compared to the offline algorithm.
Cite
@article{arxiv.1607.04446,
title = {Online Grammar Compression for Frequent Pattern Discovery},
author = {Shouhei Fukunaga and Yoshimasa Takabatake and I Tomohiro and Hiroshi Sakamoto},
journal= {arXiv preprint arXiv:1607.04446},
year = {2016}
}
Comments
14 pages