Average-Case Complexity Without The Black Swans

JOURNAL OF COMPLEXITY(2017)

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摘要
We introduce the concept of weak average-case analysis as an attempt to achieve theoretical complexity results that are closer to practical experience than those resulting from traditional approaches. The underlying paradigm is accepted in other areas such as non-asymptotic random matrix theory and compressive sensing, and has a particularly convincing interpretation in the most common situation encountered for condition numbers, where it amounts to replacing a null set of ill-posed inputs by a "numerical null set". We illustrate the usefulness of these notions by considering three settings: (1) condition numbers that are inversely proportional to a distance of a homogeneous algebraic set of ill-posed inputs; (2) Renegar's condition number for conic optimization; (3) the running time of power iteration for computing a leading eigenvector of a Hermitian matrix. (C) 2017 Elsevier Inc. All rights reserved.
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关键词
Average-case analysis,Smoothed analysis,Condition numbers,Power iteration,Computational complexity,Random matrix theory
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