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Computational complexity: a quantitative perspective Zimand, Marius

By: Material type: TextTextSeries: North-Holland Mathematics Studies No.196Publication details: Amesterdam Elsevier 2004 Description: xii, 340 pISBN:
  • 9780444828415
Subject(s): DDC classification:
  • 511.352
Summary: There has been a common perception that computational complexity is a theory of bad news because its most typical results assert that various real-world and innocent-looking tasks are infeasible. In fact, bad news is a relative term, and, indeed, in some situations (e.g., in cryptography), we want an adversary to not be able to perform a certain task. However, a ""bad news"" result does not automatically become useful in such a scenario. For this to happen, its hardness features have to be quantitatively evaluated and shown to manifest extensively. The book undertakes a quantitative analysis of some of the major results in complexity that regard either classes of problems or individual concrete problems. The size of some important classes are studied using resource-bounded topological and measure-theoretical tools. In the case of individual problems, the book studies relevant quantitative attributes such as approximation properties or the number of hard inputs at each length.
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Item type Current library Call number Status Date due Barcode Item holds
Book Book Ahmedabad 511.352 Z4C6 (Browse shelf(Opens below)) Available 163687
Total holds: 0

There has been a common perception that computational complexity is a theory of bad news because its most typical results assert that various real-world and innocent-looking tasks are infeasible. In fact, bad news is a relative term, and, indeed, in some situations (e.g., in cryptography), we want an adversary to not be able to perform a certain task. However, a ""bad news"" result does not automatically become useful in such a scenario. For this to happen, its hardness features have to be quantitatively evaluated and shown to manifest extensively. The book undertakes a quantitative analysis of some of the major results in complexity that regard either classes of problems or individual concrete problems. The size of some important classes are studied using resource-bounded topological and measure-theoretical tools. In the case of individual problems, the book studies relevant quantitative attributes such as approximation properties or the number of hard inputs at each length.

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