DocumentCode
2955710
Title
On Computation and Communication with Small Bias
Author
Buhrman, Harry ; Vereshchagin, Nikolay ; De Wolf, Ronald
Author_Institution
Univ. of Amsterdam, Amsterdam
fYear
2007
fDate
13-16 June 2007
Firstpage
24
Lastpage
32
Abstract
We present two results for computational models that allow error probabilities close to 1/2. First, most computational complexity classes have an analogous class in communication complexity. The class PP in fact has two, a version with weakly restricted bias called PPcc, and a version with unrestricted bias called UPPcc. Ever since their introduction by Babai, Frankl, and Simon in 1986, it has been open whether these classes are the same. We show that PPcc subne UPPcc. Our proof combines a query complexity separation due to Beigel with a technique of Razborov that translates the acceptance probability of quantum protocols to polynomials. Second, we study how small the bias of minimal-degree polynomials that sign-represent Boolean functions needs to be. We show that the worst-case bias is at worst double- exponentially small in the sign-degree (which was very recently shown to be optimal by Podolski), while the average- case bias can be made single-exponentially small in the sign-degree (which we show to be close to optimal).
Keywords
Boolean functions; communication complexity; error statistics; polynomials; Boolean functions; communication complexity; computational complexity; error probabilities; polynomials; quantum protocols; Application software; Boolean functions; Complexity theory; Computational complexity; Computer science; Contracts; Error probability; Polynomials; Protocols; Quantum computing;
fLanguage
English
Publisher
ieee
Conference_Titel
Computational Complexity, 2007. CCC '07. Twenty-Second Annual IEEE Conference on
Conference_Location
San Diego, CA
ISSN
1093-0159
Print_ISBN
0-7695-2780-9
Type
conf
DOI
10.1109/CCC.2007.18
Filename
4262748
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