DocumentCode :
3710111
Title :
Hashing for Statistics over K-Partitions
Author :
Søren ;Mathias Bæk Tejs ;Eva Rotenberg;Mikkel Thorup
Author_Institution :
Dept. of Comput. Sci., Univ. of Copenhagen, Copenhagen, UK
fYear :
2015
Firstpage :
1292
Lastpage :
1310
Abstract :
In this paper we analyze a hash function for k-partitioning a set into bins, obtaining strong concentration bounds for standard algorithms combining statistics from each bin. This generic method was originally introduced by Flajolet and Martin [FOCS´83] in order to save a factor Ω(k) of time per element over k independent samples when estimating the number of distinct elements in a data stream. It was also used in the widely used HyperLogLog algorithm of Flajolet et al. [AOFA´97] and in large-scale machine learning by Li et al. [NIPS´12] for minwise estimation of set similarity. The main issue of k-partition, is that the contents of different bins may be highly correlated when using popular hash functions. This means that methods of analyzing the marginal distribution for a single bin do not apply. Here we show that a tabulation based hash function, mixed tabulation, does yield strong concentration bounds on the most popular applications of k-partitioning similar to those we would get using a truly random hash function. The analysis is very involved and implies several new results of independent interest for both simple and double tabulation, e.g. a simple and efficient construction for invertible bloom filters and uniform hashing on a given set.
Keywords :
"Yttrium","Polynomials","Correlation","Frequency estimation","Estimation","Computer science","Machine learning algorithms"
Publisher :
ieee
Conference_Titel :
Foundations of Computer Science (FOCS), 2015 IEEE 56th Annual Symposium on
ISSN :
0272-5428
Type :
conf
DOI :
10.1109/FOCS.2015.83
Filename :
7354457
Link To Document :
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