Humans are often extraordinary at performing practical reasoning. There
are cases where the human computer, slow as it is, is faster than any
artificial intelligence system. Are we faster because of the way we
perceive knowledge as opposed to the way we represent it?
The authors address this question by presenting neural network models
that integrate the two most fundamental phenomena of cognition: our
ability to learn from experience, and our ability to reason from what
has been learned. This book is the first to offer a self-contained
presentation of neural network models for a number of computer science
logics, including modal, temporal, and epistemic logics. By using a
graphical presentation, it explains neural networks through a sound
neural-symbolic integration methodology, and it focuses on the benefits
of integrating effective robust learning with expressive reasoning
capabilities.
The book will be invaluable reading for academic researchers, graduate
students, and senior undergraduates in computer science, artificial
intelligence, machine learning, cognitive science and engineering. It
will also be of interest to computational logicians, and professional
specialists on applications of cognitive, hybrid and artificial
intelligence systems.