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This interdisciplinary graduate text gives a full, explicit,
coherent and up-to-date account of the modern theory of neural
information processing systems and is aimed at student with an
undergraduate degree in any quantitative discipline (e.g. computer
science, physics, engineering, biology, or mathematics). The book
covers all the major theoretical developments from the 1940s tot he
present day, using a uniform and rigorous style of presentation and
of mathematical notation. The text starts with simple model neurons
and moves gradually to the latest advances in neural processing. An
ideal textbook for postgraduate courses in artificial neural
networks, the material has been class-tested. It is fully self
contained and includes introductions to the various
discipline-specific mathematical tools as well as multiple
exercises on each topic.
This interdisciplinary graduate text gives a full, explicit,
coherent and up-to-date account of the modern theory of neural
information processing systems and is aimed at student with an
undergraduate degree in any quantitative discipline (e.g. computer
science, physics, engineering, biology, or mathematics). The book
covers all the major theoretical developments from the 1940s tot he
present day, using a uniform and rigorous style of presentation and
of mathematical notation. The text starts with simple model neurons
and moves gradually to the latest advances in neural processing. An
ideal textbook for postgraduate courses in artificial neural
networks, the material has been class-tested. It is fully self
contained and includes introductions to the various
discipline-specific mathematical tools as well as multiple
exercises on each topic.
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