PSY5038W: Introduction to Neural Networks

3 CreditsWriting Intensive

Parallel distributed processing models in neural/cognitive science. Linear models, Hebbian rules, self-organization, non-linear networks, optimization, representation of information. Applications to sensory processing, perception, learning, memory. prereq: [[3061 or NSC 3102], [MATH 1282 or 2243]] or instr consent

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A- Average (3.629)Most Common: A (73%)

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