[comp.edu] Information on new book in machine learning

morgan@unix.SRI.COM (Morgan Kaufmann) (10/15/90)

Morgan Kaufmann announces the publication of the third volume of
the publication Machine Learning:


                        MACHINE LEARNING:
               AN ARTIFICIAL INTELLIGENCE APPROACH
                           VOLUME III

                           edited by 

                         YVES KODRATOFF
          (French National Scientific Research Council)

                               and

                        RYSZARD MICHALSKI
                    (George Mason University)


This volume presents a comprehensive review of research in machine
learning.  Having experienced tremendous growth in recent years,
this area is now one of the most central and active research areas
of artificial intelligence.  MACHINE LEARNING, VOLUME III reflects
this recent progress by presenting work from the major subareas of
the field including empirical learning methods, analytical methods,
integrated learning systems, neural networks, genetic algorithms
and formal approaches.  Most chapters are invited original
contributions by leading researchers in the field.  The book also
contains an exhaustive bibliography encompassing the period 1986
through 1989 and containing over 1000 entries.

This book is the third in a series of important collections in this
area which includes Volume I (1983) and Volume II (1986).  Each
volume may be used independently.  Both previous volumes have been
extremely well received and are widely used as textbooks and
reference works.  Volume III, in addition to presenting new topics
of research not covered in the earlier volumes, also covers a
broader international scope reflecting the expansion of the field
throughout the world.

ISBN: 1-55860-119-8
825 pages, hardcover
Price: $49.95

                       Table of Contents 


PART ONE -- GENERAL ISSUES

Chapter 1      Research in Machine Learning; Recent Progress,
               Classification of Methods, and Future Directions
                    Ryszard S. Michalski and Yves Kodratoff

Chapter 2      Explanations, Machine Learning, and Creativity
                    Roger Schank and Alex Kass, Commentary by Jean-
                    Gabriel Ganascia

PART TWO -- EMPIRICAL LEARNING METHODS

Chapter 3      Learning Flexible Concepts:  Fundamental Ideas and
               a Method Bases on Two-Tiered Representation
                    Ryszard S. Michalski, Commentary by Robert E.
                    Stepp

Chapter 4      Protos:  an Exemplar-Based Learning Apprentice
                    E. Ray Bareiss, Bruce W. Porter, and Craig C.
                    Wier, Commentary by Robert C. Holte

Chapter 5      Probabilistic Decision Trees
                    J.R. Quinlan

Chapter 6      Integrating Quantitative and Qualitative Discovery
               in the ABACUS System
                    Brian C. Falkenhainer and Ryszard S. Michalski

Chapter 7      Learning by Experimentation:  The Operator
               Refinement Method
                    Jaime G. Carbonell and Yolanda Gil

Chapter 8      Learning Fault Diagnosis Heuristics from Device
               Descriptions
                    Michael J. Pazzani

Chapter 9      Conceptual Clustering and Categorization:  Bridging
               the Gap between Induction and Causal Models
                    Stephen Jose Hanson


PART THREE -- ANALYTICAL LEARNING METHODS

Chapter 10     LEAP:  A Learning Apprentice System for VLSI Design
                    Tom M. Mitchell, Sridhar Mahadevan, and Louis
                    I. Steinberg, Commentary by Pavel B. Brazdil

Chapter 11     Acquiring General Iterative Concepts by
               Reformulating Explanations of Observed Examples
                    Jude W. Shavlik and Gerald F. DeJong

Chapter 12     Discovering Algorithms from Weak Methods
                    Armand E. Prieditis

Chapter 13     OGUST:  A System that Learns Using Domain Properties
               Expressed as Theorems
                    Christel Vrain

Chapter 14     Conditional Operationality and Explanation-based
               Generalization
                    Haym Hirsh

PART FOUR -- INTEGRATED LEARNING SYSTEMS

Chapter 15     The Utility of Similarity-based Learning in a World
               Needing Explanation
                    Michael Lebowitz, Commentary by Larry A.
                    Rendell

Chapter 16     Learning Expert Knowledge by Improving the
               Explanations Provided by the System
                    Yves Kodratoff, Commentary by Robert E. Stepp

Chapter 17     Guiding Induction with Domain Theories
                    Francesco Bergadano and Attilio Giordana

Chapter 18     Knowledge Base Refinement as Improving an Incorrect
               and Incomplete Domain Theory
                    David C. Wilkins

Chapter 19     Apprenticeship Learning in Imperfect Domain Theories
                    Gheorge Tecuci and Yves Kodratoff

PART FIVE -- SUBSYMBOLIC AND HETEROGENOUS LEARNING SYSTEMS

Chapter 20     Connectionist Learning Procedures
                    Geoffrey I. Hinton

Chapter 21     Genetic-Algorithm-based Learning
                    Kenneth DeJong

PART SIX -- FORMAL ANALYSIS

Chapter 22     Applying Valiant's Learning Framework to AI Concept-
               Learning Problems
                    David Haussler

Chapter 23     A New Approach to Unsupervised Learning in
               Deterministic Environments
                    Ronald L. Rivest and Robert E. Schapire

Bibliography of Recent Machine Learning Research (1985-1989)
               Pawel A. Stefanski, Janusz Wnek, and Jianping Zhang

About the Authors
Author Index
Subject Index

_________________________________________________________________

Ordering Information:

     Please add $3.50 for the first book and $2.50 for each
     additional for surface shipping to the U.S. and Canada; $6.50
     for the first book and $3.50 for each additional for shipping
     to all other areas.  

     Master Card, Visa and personal checks drawn on US banks
     accepted.

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