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Published Articles >> Table of Contents >> Abstract
Data Compression Conference (DCC'06)
pp. 213-222
Compressed Data Structures: Dictionaries and Data-Aware Measures
Ankur Gupta,, Purdue University
Wing-Kai Hon, Purdue University
Rahul Shah, Purdue University
Scott Vitter, Purdue University
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DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/DCC.2006.12
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| Abstract |
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We propose measures for compressed data structures, in which space usage is measured
in a data-aware manner. In particular, we consider the fundamental dictionary problem
on set data, where the task is to construct a data structure to represent a set S of n items
out of a universe U = {0, . . . , u - 1} and support various queries on S. We use a well-known
data-aware measure for set data called gap to bound the space of our data structures.
We describe a novel dictionary structure taking gap+O(n log(u/n)/ log n)+O(n log log(u/n))
bits. Under the RAM model, our dictionary supports membership, rank, select, and predecessor queries in nearly optimal time, matching the time bound of Andersson and Thorup’s predecessor structure [AT00], while simultaneously improving upon their space usage. Our dictionary structure uses exactly gap bits in the leading term (i.e., the constant factor is 1) and answers queries in near-optimal time. When seen from the worst case perspective, we present the first O(n log(u/n))-bit dictionary structure which supports these queries in nearoptimal time under RAM model. We also build a dictionary which requires the same space and supports membership, select, and partial rank queries even more quickly in O(log log n) time. To the best of our knowledge, this is the first of a kind result which achieves data-aware space usage and retains near-optimal time.
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Additional Information
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Citation:
Ankur Gupta,, Wing-Kai Hon, Rahul Shah, Scott Vitter,
"Compressed Data Structures: Dictionaries and Data-Aware Measures,"
dcc,
pp. 213-222,
Data Compression Conference (DCC'06),
2006
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