|
It is now clear that the brain is unlikely to be understood without
recourse to computational theories. The theme of An Introduction
to Natural Computation is that ideas from diverse areas such as
neuroscience, information theory, and optimization theory have
recently been extended in ways that make them useful for describing
the brains programs. This book provides a comprehensive introduction
to the computational material that forms the underpinnings of the
currently evolving set of brain models. It stresses the broad spectrum
of learning models -- ranging from neural network learning through
reinforcement learning to genetic learning -- and situates the various
models in their appropriate neural context.
To write about models of the brain before the brain is fully
understood is a delicate matter. Very detailed models of the neural
circuitry risk losing track of the task the brain is trying to
solve. At the other extreme, models that represent cognitive
constructs can be so abstract that they lose all relationship to
neurobiology. An Introduction to Natural Computation
takes the middle ground and stresses the computational task while
staying near the neurobiology.
|