人工智能

人工智能 pdf epub mobi txt 電子書 下載2025

出版者:清華大學齣版社
作者:Stuart J. Russell
出品人:
頁數:1132
译者:
出版時間:2011-7
價格:158.00元
裝幀:平裝
isbn號碼:9787302252955
叢書系列:大學計算機教育國外著名教材係列(影印版)
圖書標籤:
  • 人工智能
  • AI
  • 計算機
  • 計算機科學
  • 機器學習
  • 科學
  • 編程
  • 教材
  • 人工智能
  • 機器學習
  • 深度學習
  • 智能算法
  • 計算機科學
  • 大數據
  • 神經網絡
  • 自動化
  • 科技發展
  • 未來技術
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具體描述

《人工智能:一種現代的方法(第3版)(影印版)》最權威、最經典的人工智能教材,已被全世界100多個國傢的1200多所大學用作教材。《人工智能:一種現代的方法(第3版)(影印版)》的最新版全麵而係統地介紹瞭人工智能的理論和實踐,闡述瞭人工智能領域的核心內容,並深入介紹瞭各個主要的研究方嚮。全書仍分為八大部分:第一部分“人工智能”,第二部分“問題求解”,第三部分“知識與推理”,第四部分“規劃”,第五部分“不確定知識與推理”,第六部分“學習”,第七部分“通信、感知與行動”,第八部分“結論”。《人工智能:一種現代的方法(第3版)(影印版)》既詳細介紹瞭人工智能的基本概念、思想和算法,還描述瞭其各個研究方嚮最前沿的進展,同時收集整理瞭詳實的曆史文獻與事件。另外,《人工智能:一種現代的方法(第3版)(影印版)》的配套網址為教師和學生提供瞭大量教學和學習資料。

《人工智能:一種現代的方法(第3版)(影印版)》適閤於不同層次和領域的研究人員及學生,是高等院校本科生和研究生人工智能課的首選教材,也是相關領域的科研與工程技術人員的重要參考書。

著者簡介

圖書目錄

I Artificial Intelligence1 Introduction 1.1 What Is AI? 1.2 The Foundations of Artificial Intelligence 1.3 The History of Artificial Intelligence 1.4 The State of the Art 1.5 Summary, Bibliographical and Historical Notes, Exercises 2 Intelligent Agents 2.1 Agents and Environments 2.2 Good Behavior: The Concept of Rationality 2.3 The Nature of Environments 2.4 The Structure of Agents 2.5 Summary, Bibliographical and Historical Notes, ExercisesII Problem-solving3 Solving Problems by Searching 3.1 Problem-Solving Agents 3.2 Example Problems r 3.3 Searching for Solutions 3.4 Uninformed Search Strategies 3.5 Informed (Heuristic) Search Strategies 3.6 Heuristic Functions 3.7 Summary, Bibliographical and Historical Notes, Exercises4 Beyond Classical Search 4.1 Local Search Algorithms and Optimization Problems 4.2 Local Search in Continuous Spaces 4.3 Searching with Nondeterministic Actions 4.4 Searching with Partial Observations 4.5 Online Search Agents and Unknown Environments 4.6 Summary, Bibliographical and Historical Notes, Exercises5 Adversariai Search 5.1 Games 5.2 Optimal Decisions in Games 5.3 Alpha-Beta Pruning 5.4 Imperfect Real-Time Decisions 5.5 Stochastic Games 5.6 Partially Observable Games 5.7 State-of-the-Art Game Programs 5.8 Alternative Approaches 5.9 Summary, Bibliographical and Historical Notes, Exercises6 Constraint Satisfaction Problems 6.1 Defining Constraint Satisfaction Problems 6.2 Constraint Propagation: Inference in CSPs 6.3 Backtracking Search for CSPs 6.4 Local Search for CSPs 6.5 The Structure of Problems 6.6 Summary, Bibliographical and Historical Notes, ExercisesIII Knowledge, reasoning, and planning7 Logical Agents 7.1 Knowledge-Based Agents 7.2 The Wumpus World 7.3 Logic 7.4 Propositional Logic: A Very Simple Logic 7.5 Propositional Theorem Proving 7.6 Effective Propositional Model Checking 7.7 Agents Based on Propositional Logic 7.8 Summary, Bibliographical and Historical Notes, Exercises8 First-Order Logic 8.1 Representation Revisited 8.2 Syntax and Semantics of First-Order Logic 8.3 Using First-Order Logic. 8.4 Knowledge Engineering in First-Order Logic 8.5 Summary, Bibliographical and Historical Notes, Exercises9 Inference in First-Order Logic 9.1 Propositional vs. First-Order Inference 9.2 Unification and Lifting 9.3 Forward Chaining 9.4 Backward Chaining 9.5 Resolution 9.6 Summary, Bibliographical and Historical Notes, Exer-cises10 Classical Planning 10.1 Definition of Classical Planning 10.2 Algorithms for Planning as State-Space Search 10.3 Planning Graphs 10.4 Other Classical Planning Approaches 10.5 Analysis of Planning Approaches 10.6 Summary, Bibliographical and Historical Notes, Exercises11 Planning and Acting in the Real World 11.1 Time,. Schedules, and Resources 11.2 Hierarchical Planning 11.3 Planning and Acting in Nondeterministic Domains 11.4 Multiagent Planning 11.5 Summary, Bibliographical and Historical Notes, Exercises12 Knowledge Representation 12.1 Ontological Engineering 12.2 Categories and Objects 12.3 Events 12.4 Mental Events and Ment.al Objects 12.5 Reasoning Systems for Categories 12.6 Reasoning with Default Information 12.7 The Internet Shopping World 12.8 Summary, Bibliographical and Historical Notes, ExercisesIV Uncertain knowledge and reasoning13 Quantifying Uncertainty 13.1 Acting under Uncertainty 13.2 Basic Probability Notation 13.3 Inference Using Full Joint Distributions 13.4 Independence 13.5 Bayes' Rule and Its Use 13.6 The Wumpus World Revisited 13.7 Summary, Bibliographical and Historical Notes, Exercises14 Probabilistic Reasoning 14.1 Representing Knowledge in an Uncertain Domain 14.2 The Semantics of Bayesian Networks 14.3 Efficient Representation of Conditional Distributions 14.4 Exact Inference in Bayesian Networks 14.5 Approximate Inference in Bayesian Networks 14.6 Relational and First-Order Probability Models 14.7 Other Approaches to Uncertain ReasOning 14.8 Summary, Bibliographical and Historical Notes, Exercises15 Probabilistic Reasoning over Time 15.1 Time and Uncertainty 15.2 Inference in Temporal Models 15.3 Hidden Markov Models 15.4 Kalman Filters 15.5 Dynamic Bayesian Networks 15.6 Keeping Track of Many Objects 15.7 Summary, Bibliographical and Historical Notes, Exercises16 Making Simple Decisions 16.1 Combining Beliefs and Desires under Uncertainty 16.2 The Basis of Utility Theory 16.3 Utility Functions 16.4 Multiattribute Utility Functions 16.5 Decision Networks 16.6 The Value of Information 16.7 Decision-Theoretic Expert Systems 16.8 Summary, Bibliographical and Historical Notes, Exercises17 Making Complex Decisions 17.1 Sequential Decision Problems 17.2 Value Iteration 17.3 Policy Iteration 17.4 Partially Observable MDPs 17.5 Decisions with Multiple Agents: Game Theory 17.6 Mechanism Design 17.7 Summary, Bibliographical and Historical Notes, ExercisesV Learning18 Learning from Examples 18.1 Forms of Learning 18.2 Supervised Learning 18.3 Learning Decision Trees 18.4 Evaluating and Choosing the Best Hypothesis 18.5 The Theory of Learning 18.6 Regression and:Classification with Linear Models 18.7 Artificial Neural Networks 18.8 Nonparametric Models 18.9 Support Vector Machines 18.10 Ensemble Learning 18. I 1 Practical Machine Learning 18.12 Summary, Bibliographical and Historical Notes, Exercises19 Knowledge in Learning 19.1 A Logical Formulation of Learning 19.2 Knowledge in Learning 19.3 Explanation-Based Learning 19.4 Learning Using Relevance Information 19.5 Inductive Logic Programming 19.6 Summary, Bibliographical and Historical Notes, Exercises20 Learning Probabilistic Models 20:1 Statistical Learning 20.2 Learning with Complete' Data 20.3 Learning with Hidden Variables: The EM Algorithm 20.4 Summary, Bibliographical and Historical Notes, Exercises21 Reinforcement Learning 21.1 Introduction 21.2 Passive Reinforcement Learning 21.3 Active Reinforcement Learning 21.4 Generalization in Reinforcement Learning 21.5 Policy Searcti 21.6 Applications of Reinforcement Learning 21.7 Summary, Bibliographical and Historical Notes, ExercisesVI Communicating, perceiving, and acting22 Natural Language Pi'ocessing 22.1 Language Models 22.2 Text Classification 22.3 Information Retrieval 22.4 Information Extraction 22.5 Summary, Bibliographical and Historical Notes, Exercises23 Natural Language for Communication 23.1 Phrase Structure Grammars 23.2 Syntactic Analysis (Parsing) 23.3 Augmented Grammars and Semantic Interpretation 23.4 Machine Translation 23.5 Speech Recognition 23.6 Summary, Bibliographical and Historical Notes, Exercises24 Perception 24.1 Image Formation 24.2 Early Image-Processing Operations 24.3 Object Recognition by Appearance 24.4 Reconstructing the3D World 24.5 Object Recognition from Structural Information 24.6 .Using Vision 24.7 Summary, Bibliographical and Histiarical Notes, Exercises25 Robotics 25.1 Introduction 25.2 Robot Hardware 25.3 Robotic Perception 25.4 Planning to Move 25.5 Planning Uncertain Movements 25.6 Moving 25.7 Robotic Software Architectures 25.8 Application Domains . 25.9 Summary, Bibliographical and Historical Notes, Exercises VII Conclusions26 Philosophical Foundations 26.1 Weak AI: Can Machines Act Intelligently? 26.2 Strong AI: Can Machines Really Think? 26.3 The Ethics and Risks of Developing Artificial Intelligence 26.4 Summary, Bibliographical and Historical Notes, Exercises27 AI: The Present and Future 27.1 Agent Components 27.2 Agent Architectures 27.3 Are We Going in the Right Direction? 27.4 What If AI Does Succeed? A Mathematical background A. 1 Complexity Analysis and O0 Notation A.2 Vectors, Matrices, and Linear Algebra A.3 Probability DistributionsB Notes on Languages and Algorithms B.1 Defining Languages with Backus-Naur Form (BNF) B.2 Describing Algorithms with Pseudocode B.3 Online HelpBibliographyIndex
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讀後感

評分

国内的人民邮电出过一本中译版,说老实话翻译的很差,非常影响阅读 如果真的有心读这本书的话,还是要看英文原版 这本书是一本指导性的AI书籍,哪个方向都涉及的不深,不过当需要查阅资料,尤其是概念性的资料的时候,这本书却是一个很不错的选择  

評分

这本书居然04年就出了,而且出了中文版。为什么我那时就没有找到这本书呢?不然现在的我可能就不是今天的我。 当然,一个很大的问题是:那时的我看了这本书以后能够看得懂吗?就算那时我可以解除到这本书,那时的我到底会怎样的对待呢?  

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这本书不是很好懂的,对于自学的初学者而言。我自学的,看这本书,半懂不懂的,最大的困难还是在逻辑那一块吧。这本书很全面,虽然不敢说把人工智能(包括机器学习)领域的一切都包括了吧,但是至少概况是都覆盖到了。或许正是这么全面的原因,也或许是译者翻译的原因,也有...  

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正本书的思维和逻辑是非常清晰的,适合各个水平的人看。可以看下微信公众ID:readsense 里面的内容,主要讲述人工智能、计算机视觉、嵌入式视觉的干货和诸多案例。人工智能从发展到今天一路坎坷也一路欣喜, 从实验室到工业车间再到消费级的应用场景,正在一步步改变着人们的...  

評分

为什么还没有翻译成中文呢? 英文看起来有点小困难,什么时候才出汉译版。 这个评论说太短了,下面将执行复制代码。 这个评论说太短了,下面将执行复制代码。 这个评论说太短了,下面将执行复制代码。 这个评论说太短了,下面将执行复制代码。 这个评论说太短了,下面将执行复...  

用戶評價

评分

第三版 2013-2-21

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還沒讀完呢,應該很快會齣新版瞭吧。google搜索一下,會有很多教學ppt的

评分

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其實並沒有讀完。是對AI這個大的領域的一個簡單入門吧。

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覆蓋的很廣,初學AI能遇見這本書真的太好瞭。

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