Back to Search

Toward Learning Robots

PUBLISHER Bradford Book (09/02/1993)
PRODUCT TYPE Paperback (Paperback)

Description

The contributions in Toward Learning Robots address the question of how a robot can be designed to acquire autonomously whatever it needs to realize adequate behavior in a complex environment. In-depth discussions of issues, techniques, and experiments in machine learning focus on improving ease of programming and enhancing robustness in unpredictable and changing environments, given limitations of time and resources available to researchers. The authors show practical progress toward a useful set of abstractions and techniques to describe and automate various aspects of learning in autonomous systems. The close interaction of such a system with the world reveals opportunities for new architectures and learning scenarios and for grounding symbolic representations, though such thorny problems as noise, choice of language, abstraction level of representation, and operationality have to be faced head-on.

Contents
Introduction: Toward Learning Robots - Learning Reliable Manipulation Strategies without Initial Physical Models - Learning by an Autonomous Agent in the Pushing Domain - A Cost-Sensitive Machine Learning Method for the Approach and Recognize Task - A Robot Exploration and Mapping Strategy Based on a Semantic Hierarchy of Spatial Representations - Understanding Object Motion: Recognition, Learning and Spatiotemporal Reasoning - Learning How to Plan - Robo-Soar: An Integration of External Interaction, Planning, and Learning Using Soar - Foundations of Learning in Autonomous Agents - Prior Knowledge and Autonomous Learning

Show More
Product Format
Product Details
ISBN-13: 9780262720175
ISBN-10: 0262720175
Binding: Paperback or Softback (Trade Paperback (Us))
Content Language: English
More Product Details
Page Count: 171
Carton Quantity: 28
Product Dimensions: 8.08 x 0.43 x 9.97 inches
Weight: 0.93 pound(s)
Country of Origin: US
Subject Information
BISAC Categories
Computers | Artificial Intelligence - General
Computers | Robotics
Computers | Computer Science
Grade Level: College Freshman and up
Dewey Decimal: 006.3
Library of Congress Control Number: 91-33879
Descriptions, Reviews, Etc.
publisher marketing

The contributions in Toward Learning Robots address the question of how a robot can be designed to acquire autonomously whatever it needs to realize adequate behavior in a complex environment. In-depth discussions of issues, techniques, and experiments in machine learning focus on improving ease of programming and enhancing robustness in unpredictable and changing environments, given limitations of time and resources available to researchers. The authors show practical progress toward a useful set of abstractions and techniques to describe and automate various aspects of learning in autonomous systems. The close interaction of such a system with the world reveals opportunities for new architectures and learning scenarios and for grounding symbolic representations, though such thorny problems as noise, choice of language, abstraction level of representation, and operationality have to be faced head-on.

Contents
Introduction: Toward Learning Robots - Learning Reliable Manipulation Strategies without Initial Physical Models - Learning by an Autonomous Agent in the Pushing Domain - A Cost-Sensitive Machine Learning Method for the Approach and Recognize Task - A Robot Exploration and Mapping Strategy Based on a Semantic Hierarchy of Spatial Representations - Understanding Object Motion: Recognition, Learning and Spatiotemporal Reasoning - Learning How to Plan - Robo-Soar: An Integration of External Interaction, Planning, and Learning Using Soar - Foundations of Learning in Autonomous Agents - Prior Knowledge and Autonomous Learning

Show More
List Price $9.99
Your Price  $9.89
Paperback