Artificial Intelligence is concerned with producing devices that help or
replace human beings in their daily activities. Neural-symbolic learning
systems play a central role in this task by combining, and trying to
benefit from, the advantages of both the neural and symbolic paradigms
of artificial intelligence.
This book provides a comprehensive introduction to the field of
neural-symbolic learning systems, and an invaluable overview of the
latest research issues in this area. It is divided into three sections,
covering the main topics of neural-symbolic integration - theoretical
advances in knowledge representation and learning, knowledge extraction
from trained neural networks, and inconsistency handling in
neural-symbolic systems. Each section provides a balance of theory and
practice, giving the results of applications using real-world problems
in areas such as DNA sequence analysis, power systems fault diagnosis,
and software requirements specifications.
Neural-Symbolic Learning Systems will be invaluable reading for
researchers and graduate students in Engineering, Computing Science,
Artificial Intelligence, Machine Learning and Neurocomputing. It will
also be of interest to Intelligent Systems practitioners and anyone
interested in applications of hybrid artificial intelligence systems.