Fr. 70.00

Handbook of Randomized Computing, m. 2 Buch - Volumes I & II

Inglese · Prodotto multimediale

Spedizione di solito entro 6 a 7 settimane

Descrizione

Ulteriori informazioni

The technique of randomization has been employed to solve numerous prob lems of computing both sequentially and in parallel. Examples of randomized algorithms that are asymptotically better than their deterministic counterparts in solving various fundamental problems abound. Randomized algorithms have the advantages of simplicity and better performance both in theory and often is a collection of articles written by renowned experts in practice. This book in the area of randomized parallel computing. A brief introduction to randomized algorithms In the analysis of algorithms, at least three different measures of performance can be used: the best case, the worst case, and the average case. Often, the average case run time of an algorithm is much smaller than the worst case. 2 For instance, the worst case run time of Hoare's quicksort is O(n ), whereas its average case run time is only O(nlogn). The average case analysis is conducted with an assumption on the input space. The assumption made to arrive at the O(n logn) average run time for quicksort is that each input permutation is equally likely. Clearly, any average case analysis is only as good as how valid the assumption made on the input space is. Randomized algorithms achieve superior performances without making any assumptions on the inputs by making coin flips within the algorithm. Any analysis done of randomized algorithms will be valid for all possible inputs.

Sommario

Preface. Contributing Authors. Volume I. 1. Random Sampling: Sorting and Selection; D. Krizanc, S. Rajasekaran. 2. Simplified Analysis of Randomized Algorithms for Searching, Sorting, and Selection; M.T. Goodrich, R. Tamassia. 3. Concentration of Measure for Randomized Algorithms: Techniques and Analysis; D. Dubhashi, S. Sen. 4. Randomization in Graph Optimization Problems: A Survey; D.R. Karger. 5. The Delay Sequence Argument; A. Ranade. 6. Randomized Algorithms for Geometric Optimization Problems; P.K. Agarwal, S. Sen. 7. Randomized Geometry Algorithms for Coarse Grained Parallel Computers; Xiaotie Deng. 8. A Randomized Approach to Robot Path Planning Based on Lazy Evaluation; R. Bohlin, L.E. Kavraki. 9. The Power of Two Random Choices: A Survey of Techniques and Results; M. Mitzenmacher, A.W. Richa, R. Sitaraman. 10. Randomized Techniques for Modelling Faults and Achieving Robust Computing; S.E. Nikoletseas, P.G. Spirakis. 11. Randomized Communication in Radio Networks; B.S. Chlebus. Index. Preface. Contributing Authors. Volume II. 12. A Guide to Concentration Bounds; J. Díaz, J. Petit, M. Serna. 13. Bounded Error Probabilistic Finite State Automata; A. Condon. 14. Communication Protocols - An Exemplary Study of the Power of Randomness; J. Hromkovic. 15. Property Testing; D. Ron. 16. The Random Projection Method; S. Vempala. 17. Error Estimates for Indirect Measurements: Randomized vs. Deterministic Algorithms for `Black-Box' Programs; V.Kreinovich, R. Trejo. 18. Derandomization in Combinatorial Optimization; A. Srivastav. 19. Derandomizing Complexity Classes; P.B. Miltersen. Index.

Riassunto

The technique of randomization has been employed to solve numerous prob lems of computing both sequentially and in parallel. Examples of randomized algorithms that are asymptotically better than their deterministic counterparts in solving various fundamental problems abound. Randomized algorithms have the advantages of simplicity and better performance both in theory and often is a collection of articles written by renowned experts in practice. This book in the area of randomized parallel computing. A brief introduction to randomized algorithms In the analysis of algorithms, at least three different measures of performance can be used: the best case, the worst case, and the average case. Often, the average case run time of an algorithm is much smaller than the worst case. 2 For instance, the worst case run time of Hoare's quicksort is O(n ), whereas its average case run time is only O(nlogn). The average case analysis is conducted with an assumption on the input space. The assumption made to arrive at the O(n logn) average run time for quicksort is that each input permutation is equally likely. Clearly, any average case analysis is only as good as how valid the assumption made on the input space is. Randomized algorithms achieve superior performances without making any assumptions on the inputs by making coin flips within the algorithm. Any analysis done of randomized algorithms will be valid for all possible inputs.

Dettagli sul prodotto

Autori Sanguthevar Rajasekaran
Con la collaborazione di P. M. Pardalos (Editore), Panos M. Pardalos (Editore), S. Rajasekaran (Editore), Sanguthevar Rajasekaran (Editore), J. H. Reif (Editore), J.H. Reif (Editore), José Rolim (Editore)
Editore Springer, Berlin
 
Lingue Inglese
Formato Prodotto multimediale
Pubblicazione 11.02.2011
 
EAN 9780792369592
ISBN 978-0-7923-6959-2
Pagine 996
Peso 871 g
Illustrazioni L, 996 p. In 2 volumes, not available separately.
Serie Combinatorial Optimization
Husserliana
Combinatorial Optimization
Categorie Scienze naturali, medicina, informatica, tecnica > Matematica > Altro

B, Algorithms, Optimization, algorithms and data structures, Mathematics and Statistics, Maths for engineers, Mathematical modelling, Mathematical Modeling and Industrial Mathematics, Mathematical models

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