Exponential Separation Of Information And Communication For Boolean Functions

J. ACM(2016)

引用 61|浏览437
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摘要
We show an exponential gap between communication complexity and information complexity by giving an explicit example of a partial boolean function with information complexity <= O(k), and distributional communication complexity >= 2(k). This shows that a communication protocol cannot always be compressed to its internal information. By a result of Braverman [2015], our gap is the largest possible. By a result of Braverman and Rao [2014], our example shows a gap between communication complexity and amortized communication complexity, implying that a tight direct sum result for distributional communication complexity cannot hold, answering a long-standing open problem.Another (conceptual) contribution of our work is the relative discrepancy method, a new rectangle-based method for proving communication complexity lower bounds for boolean functions, powerful enough to separate information complexity and communication complexity.
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关键词
Amortized communication complexity,communication complexity,communication compression,direct sum,information complexity
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