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Mathematics for the Analysis of Algorithms Reprint of the 1990 ed. [Mīkstie vāki]

4.44/5 (16 ratings by Goodreads)
  • Formāts: Paperback / softback, 132 pages, height x width: 235x155 mm, weight: 470 g, VIII, 132 p., 1 Paperback / softback
  • Sērija : Modern Birkhauser Classics
  • Izdošanas datums: 05-Oct-2007
  • Izdevniecība: Birkhauser Boston Inc
  • ISBN-10: 0817647287
  • ISBN-13: 9780817647285
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  • Mīkstie vāki
  • Cena: 60,29 €*
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  • Formāts: Paperback / softback, 132 pages, height x width: 235x155 mm, weight: 470 g, VIII, 132 p., 1 Paperback / softback
  • Sērija : Modern Birkhauser Classics
  • Izdošanas datums: 05-Oct-2007
  • Izdevniecība: Birkhauser Boston Inc
  • ISBN-10: 0817647287
  • ISBN-13: 9780817647285
Citas grāmatas par šo tēmu:
A quantitative study of the efficiency of computer methods requires an in-depth understanding of both mathematics and computer science. This monograph, derived from an advanced computer science course at Stanford University, builds on the fundamentals of combinatorial analysis and complex variable theory to present many of the major paradigms used in the precise analysis of algorithms, emphasizing the more difficult notions. The authors cover recurrence relations, operator methods, and asymptotic analysis in a format that is terse enough for easy reference yet detailed enough for those with little background. Approximately half the book is devoted to original problems and solutions from examinations given at Stanford. 

This book, derived from an advanced computer science course at Stanford University, builds on the fundamentals of combinatorial analysis and complex variable theory to present many of the major paradigms used in the precise analysis of algorithms, emphasizing the more difficult notions. The authors cover recurrence relations, operator methods, and asymptotic analysis in a format that is concise enough for easy reference yet detailed enough for those with little background. Approximately half the book is devoted to original problems and solutions from examinations given at Stanford.

Recenzijas

This is a short cookbook of methods for analyzing the run time of computer algorithms, aimed at computer scientists . a very erudite book, full of interesting things for both mathematicians and computer scientists . (Allen Stenger, MAA Reviews, September, 2015)

Mathematics for the Analysis of Algorithms covers a variety of topics in a relatively small amount of pages. Despite its briefness, most of the topics are clearly and fully explained using detailed examples for better understanding. As such, the book is suitable for use as study material, as well as a good reference guideThe reviewer recommends this book to anyone interested in advanced theory of algorithms and the mathematics behind it, either as an exposition to the topic or as reference material in future work.   SIGACT NEWS

"This book collects some fundamental mathematical techniques which are required for the analysis of algorithms... This book arose from handouts for an advanced course on the analysis of algorithms at Standard University, and the appendices list lectures, homework assignments and problems for the midterm and the final exams with their solutions. In summary, this book is a very valuable collection of mathematical techniques for the analysis of algorithms and accompanies, as well as complements, the second author's series The Art of Computer Programming

."   Mathematical Reviews





"The book covers the important mathematical tools used in computer science, especially in the exact analysis of algorithms. A wide range of topics are covered, from the binomial theorem to the saddle point method and Laplace's techniques for asymptotic analysis...The book is very well written. The style and the mathematical exposition make the book pleasant to read...It covers many of the major paradigms used in the analysis of algorithms in its one hundred plus pages."   SIAM Review

"The book presents a welcome selection and careful exposition of material that can be (and is) covered in a single course...In this reviewer's opinion, this would be an interesting text to use with a group of advanced students well-grounded in undergraduate mathematics and computer science, and would produce a valuable course for the participating students."   Computing Reviews

"The reader has probably heard of the expression 'good things come in small packages.' The validity of that maxim is no more in evidence than in the work under review, which is nothing less than a mathematical wellspring among the otherwise parched world of theoretical algorithm analysis. In only 76 pages (not counting the bibliography and amazing appendices), the authors cover four important topics in algorithm analysis, all from a rudimentary, but highly original,

point of view: Binomial Identities, Recurrence Relations, Operator Methods, and Asymptotic Analysis. Each of these topics is critical to understanding the modern analysis of algorithms, primarily from the speed of execution perspective... In summary, the book under review should not be underestimated in its powerful use of mathematics for the analysis of algorithms arising from computer science considerations."   Timothy Hall, Process Quality Improvement Consulting





"The analysis of algorthms is possible on mathematical and on computer scientific ways. This [ book] is a mathematical look at this topic. It is based on an advanced course in computer science at Stanford University... The Appendices contain further difficult problems for applying the methods of this outstanding, full-of-thoughts book."   P.L. Erdos (Periodica Mathematica Hungarica)

Papildus informācija

Springer Book Archives
Binomial Identities
1(10)
Summary of Useful Identities
1(2)
Deriving the Identities
3(2)
Inverse Relations
5(3)
Operator Calculus
8(1)
Hypergeometric Series
9(1)
Identities with the Harmonic Numbers
10(1)
Recurrence Relations
11(20)
Linear Recurrence Relations
11(10)
Finite History
12(1)
Constant Coefficients
12(2)
Variable Coefficients
14(3)
Full History
17(1)
Differencing
17(1)
By Repertoire
17(4)
Nonlinear Recurrence Relations
21(10)
Relations with Maximum or Minimum Functions
21(4)
Continued Fractions and Hidden Linear Recurrences
25(2)
Doubly Exponential Sequences
27(4)
Operator Methods
31(11)
The Cookie Monster
31(3)
Coalesced Hashing
34(4)
Open Addressing: Uniform Hashing
38(1)
Open Addressing: Secondary Clustering
39(3)
Asymptotic Analysis
42(35)
Basic Concepts
42(13)
Notation
43(1)
Bootstrapping
43(1)
Dissecting
44(1)
Limits of Limits
45(2)
Summary of Useful Asymptotic Expansions
47(1)
An Example from Factorization Theory
48(7)
Stieltjes Integration and Asymptotics
55(10)
O-notation and Integrals
57(1)
Euler's Summation Formula
58(2)
An Example from Number Theory
60(5)
Asymptotics from Generating Functions
65(12)
Darboux's Method
65(3)
Residue Calculus
68(2)
The Saddle Point Method
70(7)
Bibliography
77(4)
Appendices
81(48)
Schedule of Lectures, 1980
81(2)
Homework Assignments
83(1)
Midterm Exam I and Solutions
84(11)
Final Exam I and Solutions
95(6)
Midterm Exam II and Solutions
101(6)
Final Exam II and Solutions
107(4)
Midterm Exam III and Solutions
111(5)
Final Exam III and Solutions
116(8)
A Qualifying Exam Problem and Solution
124(5)
Index 129