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Efficient Compressed Wavelet Trees over Large Alphabets (1405.1220v1)

Published 6 May 2014 in cs.DS

Abstract: The {\em wavelet tree} is a flexible data structure that permits representing sequences $S[1,n]$ of symbols over an alphabet of size $\sigma$, within compressed space and supporting a wide range of operations on $S$. When $\sigma$ is significant compared to $n$, current wavelet tree representations incur in noticeable space or time overheads. In this article we introduce the {\em wavelet matrix}, an alternative representation for large alphabets that retains all the properties of wavelet trees but is significantly faster. We also show how the wavelet matrix can be compressed up to the zero-order entropy of the sequence without sacrificing, and actually improving, its time performance. Our experimental results show that the wavelet matrix outperforms all the wavelet tree variants along the space/time tradeoff map.

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