Heuristic Search: Theory and Applications

Heuristic Search: Theory and Applications

ISBN-10:
0123725127
ISBN-13:
9780123725127
Pub. Date:
06/20/2011
Publisher:
Elsevier Science
ISBN-10:
0123725127
ISBN-13:
9780123725127
Pub. Date:
06/20/2011
Publisher:
Elsevier Science
Heuristic Search: Theory and Applications

Heuristic Search: Theory and Applications

$89.95
Current price is , Original price is $89.95. You
$89.95 
  • SHIP THIS ITEM
    In stock. Ships in 1-2 days.
  • PICK UP IN STORE

    Your local store may have stock of this item.

  • SHIP THIS ITEM

    Temporarily Out of Stock Online

    Please check back later for updated availability.


Overview

Search has been vital to artificial intelligence from the very beginning as a core technique in problem solving. The authors present a thorough overview of heuristic search with a balance of discussion between theoretical analysis and efficient implementation and application to real-world problems. Current developments in search such as pattern databases and search with efficient use of external memory and parallel processing units on main boards and graphics cards are detailed.

Heuristic search as a problem solving tool is demonstrated in applications for puzzle solving, game playing, constraint satisfaction and machine learning. While no previous familiarity with heuristic search is necessary the reader should have a basic knowledge of algorithms, data structures, and calculus. Real-world case studies and chapter ending exercises help to create a full and realized picture of how search fits into the world of artificial intelligence and the one around us.


Product Details

ISBN-13: 9780123725127
Publisher: Elsevier Science
Publication date: 06/20/2011
Edition description: New Edition
Pages: 712
Product dimensions: 7.80(w) x 9.30(h) x 1.50(d)

About the Author

Stefan Edelkamp is senior researcher and lecturer at University Bremen, where he heads projects on intrusion detection, on model checking and on planning for general game playing. He received an M.S. degree from the University Dortmund for his Master’s thesis on "Weak Heapsort", and a Ph.d. degree from the University of Freiburg for his dissertation on "Data Structures and Learning Algorithms in State Space Search". Later on, he obtained a postdoctoral lecture qualification (Venia Legendi) for his habilitation on "Heuristic Search". His planning systems won various first and second performance awards at International Planning Competitions. Stefan Edelkamp has published extensively on search, serves as member on program committees (including recent editions of SARA, SOCS, ICAPS, ECAI, IJCAI, and AAAI) and on steering committees (including SPIN and MOCHART). He is member of the editorial board of JAIR and organizes international workshops, tutorials, and seminars in his area of expertise. In 2011 he will co-chair the ICAPS Conference as well as the German Conference on AI.

Stefan Schroedl is a researcher and software developer in the areas of artifical intelligence and machine learning. He worked as a freelance software developer for different companies in Germany and Switzerland, among others, designing and realizing a route finding systems for a leading commercial product in Switzerland. At DaimlerChrylser Research, he continued to work on automated generation and search of route maps based on global positioning traces. Stefan Schroedl later joined Yahoo! Labs to develop auction algorithms, relevance prediction and user personalization systems for web search advertising. In his current position at A9.com, he strives to improve Amazon.com's product search using machine-learned ranking models. He has published on route finding algorithms, memory-limited and external-memory search, as well as on search for solving DNA sequence alignment problems. Stefan Schroedl hold a Ph.D. for his dissertation "Negation as Failure in Explanation- Based Generalization", and a M.S degree for his thesis "Coupling Numerical and Symbolic Methods in the Analysis of Neurophysiological Experiments".

Table of Contents

PART I Heuristic Search Primer
Chapter 1 Introduction
Chapter 2 Basic Search Algorithms
Chapter 3 Dictionary Data Structures
Chapter 4 Automatically Created Heuristics

PART II Heuristic Search under Memory Constraints
Chapter 5 Linear-Space Search
Chapter 6 Memory Restricted Search
Chapter 7 Symbolic Search
Chapter 8 External Search

PART III Heuristic Search under Time Constraints
Chapter 9 Distributed Search
Chapter 10 State Space Pruning
Chapter 11 Real-Time Search by Sven Koenig

PART IV Heuristic Search Variants
Chapter 12 Adversary Search
Chapter 13 Constraint Search
Chapter 14 Selective Search

PART V Heurstic Search Applications
Chapter 15 Action Planning
Chapter 16 Automated System Verification
Chapter 17 Vehicle Navigation
Chapter 18 Computational Biology
Chapter 19 Robotics by Sven Koenig

What People are Saying About This

From the Publisher

Your guide to the analysis, implementation and application of heuristic search for artificial intelligence problem-solving techniques

From the B&N Reads Blog

Customer Reviews