Artificial Intelligence: A Modern Approach, 2/E (Anna University)

(for Anna University)

For one or two-semester, undergraduate or graduate-level courses in Artificial Intelligence.

The long-anticipated revision of this best-selling text offers the most comprehensive, up-to-date introduction to the theory and practice of artificial intelligence.

Features

  • : Artificial Intelligence: A Modern Approach 2e
  • : PEARSON EDUCATION(SINGAPORE) PTE. LTD.-DELHI
  • : 8131762319
  • : 9788131762318
  • : Paperback
  • : 1090
  • : English


Salient Features

 

  • NEW-Nontechnical learning material-provides a simple overview of major concepts, uses a nontechnical language to help increase understanding.
  • NEW-the Internet as a sample application for intelligent systems-Examples of logical reasoning, planning, and natural language processing using Internet agents.
  • NEW-Increased coverage of material-new or expanded coverage of constraint satisfaction, local search planning methods, multi-agent systems, game theory, statistical natural language processing and uncertain reasoning over time. More detailed descriptions of algorithms for probabilistic inference, fast propositional inference, probabilistic learning approaches including EM, and other topics.
  • NEW-Updated and expanded exercises- of the exercises are revised, with 100 new exercises.
  • NEW-More Online Software.
  • A unified, agent-based approach to AI-organizes the material around the task of building intelligent agents.
  • Comprehensive, up-to-date coverage-includes a unified view of the field organized around the rational decision making paradigm.
  • A flexible format-makes the text adaptable for varying instructors' preferences.



  •  
  •  

Table of Contents

 

 

  • Preface
  • 0. Introduction.
  • 1. Intelligent Agents.
  • 2. Solving Problems by Searching.
  • 3. Informed Search and Exploration.
  • 4. Constraint Satisfaction Problems
  • 5. Adversarial Search..
  • 6. Logical Agents.
  • 7. First-Order Logic.
  • 8. Inference in First-Order Logic.
  • 9. Knowledge Representation
  • 10. Planning.
  • 11. Planning and Acting in the Read World.
  • 12. Uncertainty.
  • 13. Probabilistic Reasoning Systems.
  • 14. Probabilistic Reasoning Over Time.
  • 15. Making Simple Decisions.
  • 16. Making Complex Decisions.
  • 17. Learning from Observations
  • 18. Statistical Learning.
  • 19. Reinforcement Learning.
  • 20. Knowledge in Learning.
  • 21. Agents that Communicate.
  • 22. Text Processing in the Large.
  • 23. Perception.
  • 24. Robotics
  • 25. Philosophical Foundations.
  • 26. AI: Present and Future.
  • Solved Question Papers

 

 

Write a review


Your Name:


Your Review: Note: HTML is not translated!

Rating: Bad           Good

Enter the code in the box below: