群体智能:swarm intelligence

群体智能:swarm intelligence
分享
扫描下方二维码分享到微信
打开微信,点击右上角”+“,
使用”扫一扫“即可将网页分享到朋友圈。
作者: [美] , [美] ,
2009-02
版次: 1
ISBN: 9787115195500
定价: 75.00
装帧: 平装
开本: 16开
纸张: 胶版纸
页数: 512页
字数: 648千字
正文语种: 英语
37人买过
  • 《群体智能》综合运用认知科学、社会心理学、人工智能和演化计算等学科知识,提供了一些非常有价值的新见解,并将这些见解加以应用,以解决困难的工程问题。书中首先探讨了基础理论,然后详尽展示如何将这些理论和模型应用于新的计算智能方法(粒子群)中,以适应智能系统的行为,最后描述了应用粒子群优化算法的好处,提供了强有力的优化、学习和问题解决的方法。群体智能是通过模拟自然界生物群体行为来实现人工智能的一种方法。
    《群体智能》主要面向计算机相关学科的高年级本科生或研究生以及相关领域的研究与开发技术人员。 JamesKennedy,社会心理学家。自1994年起,他一直致力于粒子群算法的研究工作,并与RussellC.Eberhart共同开发了粒子群优化算法。目前在美国劳工部从事调查方法的研究工作。他在计算机科学和社会科学杂志和学报上发表过许多关于粒子群的论文。
    RusselIC.Eberhart普度大学电子与计算机工程系主任。IEEE会士。与JamesKennedy共同提出了粒子群优化算法。曾任IEEE神经网络委员会的主席。除了本书之外,他还著有《计算智能:从概念到实现》(影印版由人民邮电出版社出版)等。
    YuhuiShi(史玉回)国际计算智能领域专家,现任JoumalofSwarmIntellgence编委,IEEECIS群体智能任务组主席,西交利物浦大学电子与电气工程系教授。1992年获东南大学博士学位,先后在美国、韩国、澳大利亚等地从事研究工作,曾任美国电子资讯系统公司专家长达9年。他还是《计算智能:从概念到实现》一书的作者之一。 partoneFoundations
    chapteroneModelsandConceptsofLifeandIntelligence
    TheMechanicsofLifeandThought
    StochasticAdaptation:IsAnythingEverReallyRandom?
    The“TwoGreatStochasticSystems”
    TheGameofLife:EmergenceinComplexSystems
    TheGameofLife
    Emergence
    CellularAutomataandtheEdgeofChaos
    ArtificialLifeinComputerPrograms
    Intelligence:GoodMindsinPeopleandMachines
    IntelligenceinPeople:TheBoringCriterion
    IntelligenceinMachines:TheTuringCriterion

    chaptertwoSymbols,Connections,andOptimizationbyTrialandError
    SymbolsinTreesandNetworks
    ProblemSolvingandOptimization
    ASuper-SimpleOptimizationProblem
    ThreeSpacesofOptimization
    FitnessLandscapes
    High-DimensionalCognitiveSpaceandWordMeanings
    TwoFactorsofComplexity:NKLandscapes
    CombinatorialOptimization
    BinaryOptimization
    RandomandGreedySearches
    HillClimbing
    SimulatedAnnealing
    BinaryandGrayCoding
    StepSizesandGranularity
    OptimizingwithRealNumbers
    Summary

    chapterthreeOnOurNonexistenceasEntities:TheSocialOrganism
    ViewsofEvolution
    Gaia:TheLivingEarth
    DifferentialSelection
    OurMicroscopicMasters?
    LookingfortheRightZoomAngle
    Flocks,Herds,Schools,andSwarms:SocialBehaviorasOptimization
    AccomplishmentsoftheSocialInsects
    OptimizingwithSimulatedAnts:ComputationalSwarmIntelligence
    StayingTogetherbutNotColliding:Flocks,Herds,andSchools
    RobotSocieties
    ShallowUnderstanding
    Agency
    Summary

    chapterfourEvolutionaryComputationTheoryandParadigms
    Introduction
    EvolutionaryComputationHistory
    TheFourAreasofEvolutionaryComputation
    GeneticAlgorithms
    EvolutionaryProgramming
    EvolutionStrategies
    GeneticProgramming
    TowardUnification
    EvolutionaryComputationOverview
    ECParadigmAttributes
    Implementation
    GeneticAlgorithms
    AnOverview
    ASimpleGAExampleProblem
    AReviewofGAOperations
    SchemataandtheSchemaTheorem
    FinalCommentsonGeneticAlgorithms
    EvolutionaryProgramming
    TheEvolutionaryProgrammingProcedure
    FiniteStateMachineEvolution
    FunctionOptimization
    FinalComments
    EvolutionStrategies
    Mutation
    Recombination
    Selection
    GeneticProgramming
    Summary

    chapterfiveHumans-Actual,Imagined,andImplied
    StudyingMinds
    TheFalloftheBehavioristEmpire
    TheCognitiveRevolution
    BandurasSocialLearningParadigm
    SocialPsychology
    LewinsFieldTheory
    Norms,Conformity,andSocialInfluence
    Sociocognition
    SimulatingSocialInfluence
    ParadigmShiftsinCognitiveScience
    TheEvolutionofCooperation
    ExplanatoryCoherence
    NetworksinGroups
    CultureinTheoryandPractice
    CoordinationGames
    TheElFarolProblem
    Sugarscape
    TesfatsionsACE
    PickersCompeting-NormsModel
    LatanésDynamicSocialImpactTheory
    BoydandRichersonsEvolutionaryCultureModel
    Memetics
    MemeticAlgorithms
    CulturalAlgorithms
    ConvergenceofBasicandAppliedResearch
    Culture-andLifewithoutIt
    Summary

    chaptersixThinkingIsSocial
    Introduction
    AdaptationonThreeLevels
    TheAdaptiveCultureModel
    AxelrodsCultureModel
    ExperimentOne:SimilarityinAxelrodsModel
    ExperimentTwo:OptimizationofanArbitraryFunction
    ExperimentThree:ASlightlyHarderandMoreInterestingFunction
    ExperimentFour:AHardFunction
    ExperimentFive:ParallelConstraintSatisfaction
    ExperimentSix:SymbolProcessing
    Discussion
    Summary

    parttwoTheParticleSwarmandCollectiveIntelligence
    chaptersevenTheParticleSwarm
    SociocognitiveUnderpinnings:Evaluate,Compare,andImitate
    Evaluate
    Compare
    Imitate
    AModelofBinaryDecision
    TestingtheBinaryAlgorithmwiththeDeJongTestSuite
    NoFreeLunch
    Multimodality
    MindsasParallelConstraintSatisfactionNetworksinCultures
    TheParticleSwarminContinuousNumbers
    TheParticleSwarminReal-NumberSpace
    PseudocodeforParticleSwarmOptimizationinContinuousNumbers
    ImplementationIssues
    AnExample:ParticleSwarmOptimizationofNeuralNetWeights
    AReal-WorldApplication
    TheHybridParticleSwarm
    ScienceasCollaborativeSearch
    EmergentCulture,ImmergentIntelligence
    Summary

    chaptereightVariationsandComparisons
    VariationsoftheParticleSwarmParadigm
    ParameterSelection
    ControllingtheExplosion
    ParticleInteractions
    NeighborhoodTopology
    SubstitutingClusterCentersforPreviousBests
    AddingSelectiontoParticleSwarms
    ComparingInertiaWeightsandConstrictionFactors
    AsymmetricInitialization
    SomeThoughtsonVariations
    AreParticleSwarmsReallyaKindofEvolutionaryAlgorithm?
    EvolutionbeyondDarwin
    SelectionandSelf-Organization
    Ergodicity:WhereCanItGetfromHere?
    ConvergenceofEvolutionaryComputationandParticleSwarms
    Summary

    chapternineApplications
    EvolvingNeuralNetworkswithParticleSwarms
    ReviewofPreviousWork
    AdvantagesandDisadvantagesofPreviousApproaches
    TheParticleSwarmOptimizationImplementationUsedHere
    ImplementingNeuralNetworkEvolution
    AnExampleApplication
    Conclusions
    HumanTremorAnalysis
    DataAcquisitionUsingActigraphy
    DataPreprocessing
    AnalysiswithParticleSwarmOptimization
    Summary
    OtherApplications
    ComputerNumericallyControlledMillingOptimization
    IngredientMixOptimization
    ReactivePowerandVoltageControl
    BatteryPackState-of-ChargeEstimation
    Summary

    chaptertenImplicationsandSpeculations
    Introduction
    Assertions
    UpfromSocialLearning:Bandura
    InformationandMotivation
    VicariousversusDirectExperience
    TheSpreadofInfluence
    MachineAdaptation
    LearningorAdaptation?
    CellularAutomata
    DownfromCulture
    SoftComputing
    InteractionwithinSmallGroups:GroupPolarization
    InformationalandNormativeSocialInfluence
    Self-Esteem
    Self-AttributionandSocialIllusion
    Summary
    chapterelevenAndinConclusion
    AppendixAStatisticsforSwarmers
    AppendixBGeneticAlgorithmImplementation
    Glossary
    References
    Index
  • 内容简介:
    《群体智能》综合运用认知科学、社会心理学、人工智能和演化计算等学科知识,提供了一些非常有价值的新见解,并将这些见解加以应用,以解决困难的工程问题。书中首先探讨了基础理论,然后详尽展示如何将这些理论和模型应用于新的计算智能方法(粒子群)中,以适应智能系统的行为,最后描述了应用粒子群优化算法的好处,提供了强有力的优化、学习和问题解决的方法。群体智能是通过模拟自然界生物群体行为来实现人工智能的一种方法。
    《群体智能》主要面向计算机相关学科的高年级本科生或研究生以及相关领域的研究与开发技术人员。
  • 作者简介:
    JamesKennedy,社会心理学家。自1994年起,他一直致力于粒子群算法的研究工作,并与RussellC.Eberhart共同开发了粒子群优化算法。目前在美国劳工部从事调查方法的研究工作。他在计算机科学和社会科学杂志和学报上发表过许多关于粒子群的论文。
    RusselIC.Eberhart普度大学电子与计算机工程系主任。IEEE会士。与JamesKennedy共同提出了粒子群优化算法。曾任IEEE神经网络委员会的主席。除了本书之外,他还著有《计算智能:从概念到实现》(影印版由人民邮电出版社出版)等。
    YuhuiShi(史玉回)国际计算智能领域专家,现任JoumalofSwarmIntellgence编委,IEEECIS群体智能任务组主席,西交利物浦大学电子与电气工程系教授。1992年获东南大学博士学位,先后在美国、韩国、澳大利亚等地从事研究工作,曾任美国电子资讯系统公司专家长达9年。他还是《计算智能:从概念到实现》一书的作者之一。
  • 目录:
    partoneFoundations
    chapteroneModelsandConceptsofLifeandIntelligence
    TheMechanicsofLifeandThought
    StochasticAdaptation:IsAnythingEverReallyRandom?
    The“TwoGreatStochasticSystems”
    TheGameofLife:EmergenceinComplexSystems
    TheGameofLife
    Emergence
    CellularAutomataandtheEdgeofChaos
    ArtificialLifeinComputerPrograms
    Intelligence:GoodMindsinPeopleandMachines
    IntelligenceinPeople:TheBoringCriterion
    IntelligenceinMachines:TheTuringCriterion

    chaptertwoSymbols,Connections,andOptimizationbyTrialandError
    SymbolsinTreesandNetworks
    ProblemSolvingandOptimization
    ASuper-SimpleOptimizationProblem
    ThreeSpacesofOptimization
    FitnessLandscapes
    High-DimensionalCognitiveSpaceandWordMeanings
    TwoFactorsofComplexity:NKLandscapes
    CombinatorialOptimization
    BinaryOptimization
    RandomandGreedySearches
    HillClimbing
    SimulatedAnnealing
    BinaryandGrayCoding
    StepSizesandGranularity
    OptimizingwithRealNumbers
    Summary

    chapterthreeOnOurNonexistenceasEntities:TheSocialOrganism
    ViewsofEvolution
    Gaia:TheLivingEarth
    DifferentialSelection
    OurMicroscopicMasters?
    LookingfortheRightZoomAngle
    Flocks,Herds,Schools,andSwarms:SocialBehaviorasOptimization
    AccomplishmentsoftheSocialInsects
    OptimizingwithSimulatedAnts:ComputationalSwarmIntelligence
    StayingTogetherbutNotColliding:Flocks,Herds,andSchools
    RobotSocieties
    ShallowUnderstanding
    Agency
    Summary

    chapterfourEvolutionaryComputationTheoryandParadigms
    Introduction
    EvolutionaryComputationHistory
    TheFourAreasofEvolutionaryComputation
    GeneticAlgorithms
    EvolutionaryProgramming
    EvolutionStrategies
    GeneticProgramming
    TowardUnification
    EvolutionaryComputationOverview
    ECParadigmAttributes
    Implementation
    GeneticAlgorithms
    AnOverview
    ASimpleGAExampleProblem
    AReviewofGAOperations
    SchemataandtheSchemaTheorem
    FinalCommentsonGeneticAlgorithms
    EvolutionaryProgramming
    TheEvolutionaryProgrammingProcedure
    FiniteStateMachineEvolution
    FunctionOptimization
    FinalComments
    EvolutionStrategies
    Mutation
    Recombination
    Selection
    GeneticProgramming
    Summary

    chapterfiveHumans-Actual,Imagined,andImplied
    StudyingMinds
    TheFalloftheBehavioristEmpire
    TheCognitiveRevolution
    BandurasSocialLearningParadigm
    SocialPsychology
    LewinsFieldTheory
    Norms,Conformity,andSocialInfluence
    Sociocognition
    SimulatingSocialInfluence
    ParadigmShiftsinCognitiveScience
    TheEvolutionofCooperation
    ExplanatoryCoherence
    NetworksinGroups
    CultureinTheoryandPractice
    CoordinationGames
    TheElFarolProblem
    Sugarscape
    TesfatsionsACE
    PickersCompeting-NormsModel
    LatanésDynamicSocialImpactTheory
    BoydandRichersonsEvolutionaryCultureModel
    Memetics
    MemeticAlgorithms
    CulturalAlgorithms
    ConvergenceofBasicandAppliedResearch
    Culture-andLifewithoutIt
    Summary

    chaptersixThinkingIsSocial
    Introduction
    AdaptationonThreeLevels
    TheAdaptiveCultureModel
    AxelrodsCultureModel
    ExperimentOne:SimilarityinAxelrodsModel
    ExperimentTwo:OptimizationofanArbitraryFunction
    ExperimentThree:ASlightlyHarderandMoreInterestingFunction
    ExperimentFour:AHardFunction
    ExperimentFive:ParallelConstraintSatisfaction
    ExperimentSix:SymbolProcessing
    Discussion
    Summary

    parttwoTheParticleSwarmandCollectiveIntelligence
    chaptersevenTheParticleSwarm
    SociocognitiveUnderpinnings:Evaluate,Compare,andImitate
    Evaluate
    Compare
    Imitate
    AModelofBinaryDecision
    TestingtheBinaryAlgorithmwiththeDeJongTestSuite
    NoFreeLunch
    Multimodality
    MindsasParallelConstraintSatisfactionNetworksinCultures
    TheParticleSwarminContinuousNumbers
    TheParticleSwarminReal-NumberSpace
    PseudocodeforParticleSwarmOptimizationinContinuousNumbers
    ImplementationIssues
    AnExample:ParticleSwarmOptimizationofNeuralNetWeights
    AReal-WorldApplication
    TheHybridParticleSwarm
    ScienceasCollaborativeSearch
    EmergentCulture,ImmergentIntelligence
    Summary

    chaptereightVariationsandComparisons
    VariationsoftheParticleSwarmParadigm
    ParameterSelection
    ControllingtheExplosion
    ParticleInteractions
    NeighborhoodTopology
    SubstitutingClusterCentersforPreviousBests
    AddingSelectiontoParticleSwarms
    ComparingInertiaWeightsandConstrictionFactors
    AsymmetricInitialization
    SomeThoughtsonVariations
    AreParticleSwarmsReallyaKindofEvolutionaryAlgorithm?
    EvolutionbeyondDarwin
    SelectionandSelf-Organization
    Ergodicity:WhereCanItGetfromHere?
    ConvergenceofEvolutionaryComputationandParticleSwarms
    Summary

    chapternineApplications
    EvolvingNeuralNetworkswithParticleSwarms
    ReviewofPreviousWork
    AdvantagesandDisadvantagesofPreviousApproaches
    TheParticleSwarmOptimizationImplementationUsedHere
    ImplementingNeuralNetworkEvolution
    AnExampleApplication
    Conclusions
    HumanTremorAnalysis
    DataAcquisitionUsingActigraphy
    DataPreprocessing
    AnalysiswithParticleSwarmOptimization
    Summary
    OtherApplications
    ComputerNumericallyControlledMillingOptimization
    IngredientMixOptimization
    ReactivePowerandVoltageControl
    BatteryPackState-of-ChargeEstimation
    Summary

    chaptertenImplicationsandSpeculations
    Introduction
    Assertions
    UpfromSocialLearning:Bandura
    InformationandMotivation
    VicariousversusDirectExperience
    TheSpreadofInfluence
    MachineAdaptation
    LearningorAdaptation?
    CellularAutomata
    DownfromCulture
    SoftComputing
    InteractionwithinSmallGroups:GroupPolarization
    InformationalandNormativeSocialInfluence
    Self-Esteem
    Self-AttributionandSocialIllusion
    Summary
    chapterelevenAndinConclusion
    AppendixAStatisticsforSwarmers
    AppendixBGeneticAlgorithmImplementation
    Glossary
    References
    Index
查看详情
其他版本 / 全部 (1)
系列丛书 / 更多
群体智能:swarm intelligence
算法(英文版•第4版)
[美]塞奇威克(Robert Sedgewick)、[美]韦恩(Kevin Wayne) 著
群体智能:swarm intelligence
计算机程序设计艺术(第2卷 英文版·第3版):半数值算法
[美]高德纳 著
群体智能:swarm intelligence
计算机程序设计艺术,卷4A:组合算法(一)(英文版)
[美]Donald E.Knuth 著
群体智能:swarm intelligence
计算机程序设计艺术(第3卷 英文版·第2版):排序与查找
[美]高德纳(Knuth D.E) 著
群体智能:swarm intelligence
C++Primer(英文版)(第4版)
李普曼 著
群体智能:swarm intelligence
数据结构与算法分析:C++描述(英文版)(第3版)
[美]维斯 著
群体智能:swarm intelligence
UNIX环境高级编程
史蒂文斯、拉戈 著
群体智能:swarm intelligence
信息检索:算法与启发式方法(英文版·第2版)
[美]格罗斯曼、[美]弗里德 著
群体智能:swarm intelligence
文本挖掘
[以色列]费尔德曼、[美]桑格 著
群体智能:swarm intelligence
Web数据挖掘:超文本数据的知识发现
[印]查凯莱巴蒂 著
群体智能:swarm intelligence
算法
[美]塞奇威克(Robert Sedgewick)、[美]韦恩(Kevin Wayne) 著
群体智能:swarm intelligence
IPv6详解,第1卷,核心协议实现:IPv6时代的《TCP/IP详解》!
[美]李清、[日]神明达哉、[日]岛庆一 著
相关图书 / 更多
群体智能:swarm intelligence
群体智能与演化博弈
张建磊
群体智能:swarm intelligence
群体消费绿色转型与企业社会营销创新研究
阮锋儿 著
群体智能:swarm intelligence
群体传播:理论、方法和实践
罗雪
群体智能:swarm intelligence
群体劳动争议治理法律对策研究
谢天长 著
群体智能:swarm intelligence
群体协同的演化规律:行为博弈的视角
周亚;黄阳;高林
群体智能:swarm intelligence
群体的疯狂
[美]威廉·伯恩斯坦 王兴华
群体智能:swarm intelligence
群体感应:微生物交流的语言
徐峰 周慧
群体智能:swarm intelligence
群体智能
张国辉;文笑雨
群体智能:swarm intelligence
群体安全行为定性模拟研究及其应用
曹庆贵、俞凯、周鲁洁 著
群体智能:swarm intelligence
群体性胃镜筛查的现状及存在问题
日本《胃与肠》编委会 编著;《胃与肠》翻译委员会 译
群体智能:swarm intelligence
群体智能协作测试实战案例集
杨鹏 申玉强 赵聚雪 黄勇 孙庚 陈振宇
群体智能:swarm intelligence
群体药动学和药效学分析进阶
焦正
您可能感兴趣 / 更多
群体智能:swarm intelligence
一个画家的旅程(一本讲述被誉为“美国艺术创始人”的传记绘本)
[美]哈德逊·塔尔伯特
群体智能:swarm intelligence
亚拉山大的读心术(数学大师的逻辑课) 伦理学、逻辑学 [美]雷蒙德·m.斯穆里安(raymondm.smullyan)
[美]雷蒙德·m.斯穆里安(raymondm.smullyan)
群体智能:swarm intelligence
蒙特卡洛的密码锁(数学大师的逻辑课) 文教科普读物 [美]雷蒙德·m.斯穆里安(raymondm.smullyan)
[美]雷蒙德·m.斯穆里安(raymondm.smullyan)
群体智能:swarm intelligence
纳博科夫精选集第五辑
[美]弗拉基米尔·纳博科夫著
群体智能:swarm intelligence
九桃盘(美国二十世纪重要女诗人玛丽安·摩尔诗歌精选集,由知名女诗人和女性诗学研究者倪志娟倾情翻译)
[美]玛丽安•摩尔
群体智能:swarm intelligence
全新正版图书 制造德·戴维尼浙江教育出版社9787572276880
[美]理查德·戴维尼
群体智能:swarm intelligence
福尔摩斯的棋盘:关于国际象棋的推理题(数学大师的逻辑课)
[美]雷蒙德·m.斯穆里安
群体智能:swarm intelligence
金钱游戏(划时代增订版):深层透析金融游戏表象之下的规则与黑箱 长达60年盘踞金融畅销榜的现象级作品
[美]亚当·史密斯(Adam Smith) 著;刘寅龙 译
群体智能:swarm intelligence
波西·杰克逊阿波罗的试炼系列第3册:烈焰迷宫
[美]雷克·莱尔顿 著;火皮豆 译
群体智能:swarm intelligence
矿王谷的黎明:塞拉俱乐部诉莫顿案与美国环境法的转变(精装典藏版)
[美]丹尼尔·P.塞尔米,(Daniel,P.Selmi)
群体智能:swarm intelligence
诺奖作家给孩子的阅读课·生命教育(3-9年级,莫言余华的文学启蒙,垫高阅读起点,提升作文能力)
[美]海明威等
群体智能:swarm intelligence
故事思维 商业管理 思维表达职场沟通人际交往
[美]安妮特·西蒙斯 后浪