Image from Google Jackets

Artificial intelligence : a modern approach

By: Contributor(s): Material type: TextTextPublication details: New Delhi : Pearson Education, ©1995.Description: xxviii, 932 p. : illustrationsISBN:
  • 0131038052
  • 9780131038059
  • 0133601242
  • 9780133601244
  • 8178085542
Subject(s): DDC classification:
  • 006.3 RUS
Contents:
I. Artificial Intelligence. Intelligent Agents -- II. Problem-solving. Solving Problems by Searching. Informed Search Methods. Game Playing -- III. Knowledge and reasoning. Agents that Reason Logically. First-Order Logic. Building a Knowledge Base. Inference in First-Order Logic. Logical Reasoning Systems -- IV. Acting logically. Planning. Practical Planning. Planning and Acting -- V. Uncertain knowledge and reasoning. Uncertainty. Probabilistic Reasoning Systems. Making Simple Decisions. Making Complex Decisions -- VI. Learning. Learning from Observations. Learning in Neural and Belief Networks. Reinforcement Learning. Knowledge in Learning -- VII. Communicating, perceiving, and acting. Agents that Communicate. Practical Natural Language Processing. Perception. Robotics -- VIII. Conclusions. Philosophical Foundations. AI: Present and Future -- A Complexity analysis and O() notation -- B Notes on Languages and Algorithms.
Summary: Intelligent Agents - Stuart Russell and Peter Norvig show how intelligent agents can be built using AI methods, and explain how different agent designs are appropriate depending on the nature of the task and environment. Artificial Intelligence: A Modern Approach is the first AI text to present a unified, coherent picture of the field. The authors focus on the topics and techniques that are most promising for building and analyzing current and future intelligent systems. The material is comprehensive and authoritative, yet cohesive and readable. State of the Art - This book covers the most effective modern techniques for solving real problems, including simulated annealing, memory-bounded search, global ontologies, dynamic belief networks, neural networks, adaptive probabilistic networks, inductive logic programming, computational learning theory, and reinforcement learning. Leading edge AI techniques are integrated into intelligent agent designs, using examples and exercises to lead students from simple, reactive agents to advanced planning agents with natural language capabilities.
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Item type Current library Collection Call number Status Date due Barcode Item holds
Reference Books Reference Books Main Library Reference Reference 006.3 RUS (Browse shelf(Opens below)) Available 008246
Total holds: 0

Includes Bibliography, Index.

I. Artificial Intelligence. Intelligent Agents --
II. Problem-solving. Solving Problems by Searching. Informed Search Methods. Game Playing --
III. Knowledge and reasoning. Agents that Reason Logically. First-Order Logic. Building a Knowledge Base. Inference in First-Order Logic. Logical Reasoning Systems --
IV. Acting logically. Planning. Practical Planning. Planning and Acting --
V. Uncertain knowledge and reasoning. Uncertainty. Probabilistic Reasoning Systems. Making Simple Decisions. Making Complex Decisions --
VI. Learning. Learning from Observations. Learning in Neural and Belief Networks. Reinforcement Learning. Knowledge in Learning --
VII. Communicating, perceiving, and acting. Agents that Communicate. Practical Natural Language Processing. Perception. Robotics --
VIII. Conclusions. Philosophical Foundations. AI: Present and Future --
A Complexity analysis and O() notation --
B Notes on Languages and Algorithms.

Intelligent Agents - Stuart Russell and Peter Norvig show how intelligent agents can be built using AI methods, and explain how different agent designs are appropriate depending on the nature of the task and environment. Artificial Intelligence: A Modern Approach is the first AI text to present a unified, coherent picture of the field. The authors focus on the topics and techniques that are most promising for building and analyzing current and future intelligent systems. The material is comprehensive and authoritative, yet cohesive and readable. State of the Art - This book covers the most effective modern techniques for solving real problems, including simulated annealing, memory-bounded search, global ontologies, dynamic belief networks, neural networks, adaptive probabilistic networks, inductive logic programming, computational learning theory, and reinforcement learning. Leading edge AI techniques are integrated into intelligent agent designs, using examples and exercises to lead students from simple, reactive agents to advanced planning agents with natural language capabilities.

There are no comments on this title.

to post a comment.

© University of Vavuniya

------