000 03663nam a2200541 i 4500
001 6267250
003 IEEE
005 20220712204610.0
006 m o d
007 cr |n|||||||||
008 151223s2004 maua ob 001 eng d
020 _a9780262256032
_qebook
020 _z141756041X
_qelectronic
020 _z0262256037
_qelectronic
020 _z9781417560417
_qelectronic
020 _z9780262042192
_qprint
035 _a(CaBNVSL)mat06267250
035 _a(IDAMS)0b000064818b4202
040 _aCaBNVSL
_beng
_erda
_cCaBNVSL
_dCaBNVSL
050 4 _aQA402.5
_b.D64 2004eb
082 0 4 _a519.6
_222
100 1 _aDorigo, Marco,
_eauthor.
_921755
245 1 0 _aAnt colony optimization /
_cMarco Dorigo, Thomas Stu�I�tzle.
264 1 _aCambridge, Massachusetts :
_bMIT Press,
_cc2004.
264 2 _a[Piscataqay, New Jersey] :
_bIEEE Xplore,
_c[2004]
300 _a1 PDF (xi, 305 pages) :
_billustrations.
336 _atext
_2rdacontent
337 _aelectronic
_2isbdmedia
338 _aonline resource
_2rdacarrier
500 _a"A Bradford book."
504 _aIncludes bibliographical references (p. [277]-300) and index.
506 1 _aRestricted to subscribers or individual electronic text purchasers.
520 _aThe complex social behaviors of ants have been much studied by science, and computer scientists are now finding that these behavior patterns can provide models for solving difficult combinatorial optimization problems. The attempt to develop algorithms inspired by one aspect of ant behavior, the ability to find what computer scientists would call shortest paths, has become the field of ant colony optimization (ACO), the most successful and widely recognized algorithmic technique based on ant behavior. This book presents an overview of this rapidly growing field, from its theoretical inception to practical applications, including descriptions of many available ACO algorithms and their uses.The book first describes the translation of observed ant behavior into working optimization algorithms. The ant colony metaheuristic is then introduced and viewed in the general context of combinatorial optimization. This is followed by a detailed description and guide to all major ACO algorithms and a report on current theoretical findings. The book surveys ACO applications now in use, including routing, assignment, scheduling, subset, machine learning, and bioinformatics problems. AntNet, an ACO algorithm designed for the network routing problem, is described in detail. The authors conclude by summarizing the progress in the field and outlining future research directions. Each chapter ends with bibliographic material, bullet points setting out important ideas covered in the chapter, and exercises. Ant Colony Optimization will be of interest to academic and industry researchers, graduate students, and practitioners who wish to learn how to implement ACO algorithms.
530 _aAlso available in print.
538 _aMode of access: World Wide Web
550 _aMade available online by NetLibrary.
588 _aDescription based on PDF viewed 12/23/2015.
650 0 _aMathematical optimization.
_94112
650 0 _aAnts
_xBehavior
_xMathematical models.
_921756
655 0 _aElectronic books.
_93294
700 1 _aStu�I�tzle, Thomas.
_921757
710 2 _aIEEE Xplore (Online Service),
_edistributor.
_921758
710 2 _aMIT Press,
_epublisher.
_921759
710 2 _aNetLibrary, Inc.
_921466
776 0 8 _iPrint version
_z9780262042192
856 4 2 _3Abstract with links to resource
_uhttps://ieeexplore.ieee.org/xpl/bkabstractplus.jsp?bkn=6267250
942 _cEBK
999 _c72908
_d72908