圖書名稱:ARTIFICIAL INTELLIGENCE: A MODERN APPROACH 4/E (GE)
Offer the most comprehensive, up-to-date introduction to the theory and practice of artificial intelligence ‧ Nontechnical learning material introduces major concepts using intuitive explanations, before going into mathematical or algorithmic details. The nontechnical language makes the book accessible to a broader range of readers. ‧ A unified approach to AI shows students how the various subfields of AI fit together to build actual, useful programs. ‧ UPDATED - The basic definition of AI systems is generalized to eliminate the standard assumption that the objective is fixed and known by the intelligent agent; instead, the agent may be uncertain about the true objectives of the human(s) on whose behalf it operates. ‧ In-depth coverage of both basic and advanced topics provides students with a basic understanding of the frontiers of AI without compromising complexity and depth. ‧ The Author-Maintained Website at http://aima.cs.berkeley.edu/ includes text-related comments and discussions, exercises, an online code repository, Instructor Resources, and more! ‧ UPDATED - Interactive student exercises are now featured on the website to allow for continuous updating and additions. ‧ UPDATED - Online software gives students more opportunities to complete projects, including implementations of the algorithms in the book, plus supplemental coding examples and applications in Python, Java, and Javascript. ‧ NEW - Instructional video tutorials deepen students’ engagement and bring key concepts to life. ‧ A flexible format makes the text adaptable for varying instructors' preferences. Stay current with the latest technologies and present concepts in a more unified manner ‧ NEW - New chapters feature expanded coverage of probabilistic programming (Ch. 15); multiagent decision making (Ch. 18 with Michael Wooldridge); deep learning (Ch. 21 with Ian Goodfellow); and deep learning for natural language processing (Ch. 24 with Jacob Devlin and Mei-Wing Chang). ‧ UPDATED - Increased coverage of machine learning. ‧ UPDATED - Significantly updated material on robotics includes robots that interact with humans and the application of reinforcement learning to robotics. ‧ NEW - New section on causality by Judea Pearl. ‧ NEW - New sections on Monte Carlo search for games and robotics. ‧ NEW - New sections on transfer learning for deep learning in general and for natural language. ‧ NEW - New sections on privacy, fairness, the future of work, and safe AI. ‧ NEW - Extensive coverage of recent advances in AI applications. ‧ UPDATED - Revised coverage of computer vision, natural language understanding, and speech recognition reflect the impact of deep learning methods on these fields.
The most comprehensive, up-to-date introduction to the theory and practice of artificial intelligence The long-anticipated revision of Artificial Intelligence: A Modern Approach explores the full breadth and depth of the field of artificial intelligence (AI). The 4th Edition brings readers up to date on the latest technologies, presents concepts in a more unified manner, and offers new or expanded coverage of machine learning, deep learning, transfer learning, multiagent systems, robotics, natural language processing, causality, probabilistic programming, privacy, fairness, and safe AI.
I Artificial Intelligence 1 Introduction 2 Intelligent Agents II Problem-solving 3 Solving Problems by Searching 4 Search in Complex Environments 5 Constraint Satisfaction Problems 6 Adversarial Search and Games III Knowledge, reasoning, and planning 7 Logical Agents 8 First-Order Logic 9 Inference in First-Order Logic 10 Knowledge Representation 11 Automated Planning IV Uncertain knowledge and reasoning 12 Quantifying Uncertainty 13 Probabilistic Reasoning 14 Probabilistic Reasoning over Time 15 Making Simple Decisions 16 Making Complex Decisions 17 Multiagent Decision Making 18 Probabilistic Programming V Machine Learning 19 Learning from Examples 20 Knowledge in Learning 21 Learning Probabilistic Models 22 Deep Learning 23 Reinforcement Learning VI Communicating, perceiving, and acting 24 Natural Language Processing 25 Deep Learning for Natural Language Processing 26 Robotics 27 Computer Vision VII Conclusions 28 Philosophy, Ethics, and Safety of AI 29 The Future of AI Appendix A: Mathematical Background Appendix B: Notes on Languages and Algorithms Bibliography Index
作者簡介:
Stuart Russell:加州大學柏克萊分校計算機科學教授、加州大學舊金山分校神經外科兼任教授 Peter Norvig:現為Google公司研究總監
目錄
I Artificial Intelligence 1 Introduction 2 Intelligent Agents II Problem-solving 3 Solving Problems by Searching 4 Search in Complex Environments 5 Constraint Satisfaction Problems 6 Adversarial Search and Games III Knowledge, reasoning, and planning 7 Logical Agents 8 First-Order Logic 9 Inference in First-Order Logic 10 Knowledge Representation 11 Automated Planning IV Uncertain knowledge and reasoning 12 Quantifying Uncertainty 13 Probabilistic Reasoning 14 Probabilistic Reasoning over Time 15 Making Simple Decisions 16 Making Complex Decisions 17 Multiagent Decision Making 18 Probabilistic Programming V Machine Learning 19 Learning from Examples 20 Knowledge in Learning 21 Learning Probabilistic Models 22 Deep Learning 23 Reinforcement Learning VI Communicating, perceiving, and acting 24 Natural Language Processing 25 Deep Learning for Natural Language Processing 26 Robotics 27 Computer Vision VII Conclusions 28 Philosophy, Ethics, and Safety of AI 29 The Future of AI Appendix A: Mathematical Background Appendix B: Notes on Languages and Algorithms Bibliography Index�
I Artificial Intelligence 1 Introduction 2 Intelligent Agents II Problem-solving 3 Solving Problems by Searching 4 Search in Complex Environments 5 Constraint Satisfaction Problems 6 Adversarial Search and Games III Knowledge, reasoning, and planning 7 Logical Agents 8 First-Order Logic 9 Inference in First-Order Logic 10 Knowledge Representation 11 Automated Planning IV Uncertain knowledge and reasoning 12 Quantifying Uncertainty 13 Probabilistic Reasoning 14 Prob...