Compressive binary search

international symposium on information theory(2012)

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摘要
In this paper we consider the problem of locating a nonzero entry in a high-dimensional vector from possibly adaptive linear measurements. We consider a recursive bisection method which we dub the compressive binary search and show that it improves on what any nonadaptive method can achieve. We also establish a non-asymptotic lower bound that applies to all methods, regardless of their computational complexity. Combined, these results show that the compressive binary search is within a double logarithmic factor of the optimal performance.
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关键词
computational complexity,recursive functions,vectors,adaptive linear measurement,compressive binary search,computational complexity,double logarithmic factor,high-dimensional vector,nonadaptive method,nonasymptotic lower bound,recursive bisection method
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