DocumentCode
3269351
Title
Regularity, Boosting, and Efficiently Simulating Every High-Entropy Distribution
Author
Trevisan, Luca ; Tulsiani, Madhur ; Vadhan, Salil
Author_Institution
Comput. Sci. Div., U.C. Berkeley, Berkeley, CA, USA
fYear
2009
fDate
15-18 July 2009
Firstpage
126
Lastpage
136
Abstract
We show that every bounded function g: {0,1}n rarr [0,1] admits an efficiently computable "simulator" function h: {0,1}n rarr [0,1] such that every fixed polynomial size circuit has approximately the same correlation with g as with h. If g describes (up to scaling) a high min-entropy distribution D, then h can be used to efficiently sample a distribution D\´ of the same min-entropy that is indistinguishable from D by circuits of fixed polynomial size. We state and prove our result in a more abstract setting, in which we allow arbitrary finite domains instead of {0,1}n, and arbitrary families of distinguishers, instead of fixed polynomial size circuits. Our result implies (a) the weak Szemeredi regularity Lemma of Frieze and Kannan (b) a constructive version of the dense model theorem of Green, Tao and Ziegler with better quantitative parameters (polynomial rather than exponential in the distinguishing probability), and (c) the Impagliazzo hardcore set Lemma. It appears to be the general result underlying the known connections between "regularity" results in graph theory, "decomposition" results in additive combinatorics, and the hardcore Lemma in complexity theory. We present two proofs of our result, one in the spirit of Nisan\´s proof of the hardcore Lemma via duality of linear programming, and one similar to Impagliazzo\´s "boosting" proof. A third proof by iterative partitioning, which gives the complexity of the sampler to be exponential in the distinguishing probability, is also implicit in the Green-Tao-Ziegler proofs of the dense model theorem.
Keywords
computational complexity; entropy; graph theory; theorem proving; Green dense model theorem; Green-Tao-Ziegler proof; Impagliazzo hardcore set Lemma; Nisans proof; complexity theory; dense model theorem; entropy distribution; graph theory; polynomial size circuit; quantitative parameter; weak Szemeredi regularity Lemma; Boosting; Circuit simulation; Combinatorial mathematics; Complexity theory; Computational complexity; Computational modeling; Computer science; Computer simulation; Graph theory; Polynomials; additive combinatorics; average-case complexity; boosting; pseudorandomness;
fLanguage
English
Publisher
ieee
Conference_Titel
Computational Complexity, 2009. CCC '09. 24th Annual IEEE Conference on
Conference_Location
Paris
ISSN
1093-0159
Print_ISBN
978-0-7695-3717-7
Type
conf
DOI
10.1109/CCC.2009.41
Filename
5231258
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