New book: Learning to learn
Sebastian Thrun
Sebastian_Thrun at heaven.learning.cs.cmu.edu
Fri Nov 7 13:32:35 EST 1997
L E A R N I N G T O L E A R N
Sebastian Thrun and Lorien Pratt (eds.)
Kluwer Academic Publishers
Over the past three decades, research on machine learning and data
mining has led to a wide variety of algorithms that induce general
functions from examples. As machine learning is maturing, it has begun
to make the successful transition from academic research to various
practical applications. Generic techniques such as decision trees and
artificial neural networks, for example, are now being used in various
commercial and industrial applications.
Learning to learn is an exciting new research direction within
machine learning. Similar to traditional machine learning algorithms,
the methods described in LEARNING TO LEARN induce general functions
from experience. However, the book investigates algorithms that can
change the way they generalize, i.e., practice the last of learning
itself, and improve on it.
To illustrate the utility of learning to learn, it is worthwhile to
compare machine learning to human learning. Humans encounter a
continual stream of learning tasks. They do not just learn concepts of
motor skills, they also learn bias, i.e., they learn how to
generalize. As a result, humans are often able to generalize correctly
from extremely few examples---often just a single example suffices to
teach us a new thing.
A deeper understanding of computer programs that improve their ability
to learn can have large practical impact on the field of machine
learning and beyond. In recent years, the field has made significant
progress towards a theory of learning to learn along with practical
new algorithms, some of which led to impressive results in real-world
applications.
LEARNING TO LEARN provides a survey of some of the most exciting new
research approaches, written by leading researchers in the field. Its
objective is to investigate the utility and feasibility of computer
programs that can learn how to learn, both from a practical and a
theoretical point of view.
This book is organized into four parts
Part I: Overview articles, in which basic taxonomies and the
cognitive foundations for algorithms that "learn
to learn" are introduced and discussed,
Chapter 1: Learning To Learn: Introduction and Overview
Sebastian Thrun and Lorien Pratt
Chapter 2: A Survey of Connectionist Network Reuse
Through Transfer
Lorien Pratt and Barbara Jennings
Chapter 3: Transfer in Cognition
Anthony Robins
Part II: Prediction/Supervised Learning, in which specific
algorithms are presented that exploit information
in multiple learning tasks in the context of supervised learning,
Chapter 4: Theoretical Models of Learning to Learn
Jonathan Baxter
Chapter 5: Multitask Learning
Rich Caruana
Chapter 6: Making a Low-Dimensional Representation
Suitable for Diverse Tasks
Nathan Intrator and Shimon Edelman
Chapter 7: The Canonical Distortion Measure for
Vector Quantization and Function Approximation
Jonathan Baxter
Chapter 8: Lifelong Learning Algorithms
Sebastian Thrun
Part III: Relatedness, in which the issue of "task relatedness"
is investigated and algorithms are described that
selectively transfer knowledge across learning tasks, and
Chapter 9: The Parallel Transfer of Task Knowledge
Using Dynamic Learning Rates
Daniel L. Silver and Robert E. Mercer
Chapter 10: Clustering Learning Tasks and the
Selective Cross-TaskTransfer of Knowledge
Sebastian Thrun and Joseph O'Sullivan
Part IV: Control, in which algorithms specifically
designed for learning mappings from percepts to actions are
presented.
Chapter 11: CHILD: A First Step Towards Continual Learning
Mark B. Ring
Chapter 12: Reinforcement Learning With Self-Modifying
Policies
Juergen Schmidhuber, Jieyu Zhao, Nicol N. Schraudolph
Chapter 13: Creating Advice-Taking Reinforcement Learners
Richard Maclin and Jude W. Shavlik
All contributions went to a journal-style reviewing process and are of
journal quality (in fact, many of them were previously published in
Machine Learning or Connection Science). The material is suited for
advanced graduate classes in machine learning.
362 pages. More information at
http://www.cs.cmu.edu/~thrun/papers/thrun.book3.html
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