COSC 494 / 594 — Computational Cognitive Neuroscience
Students
will:
· Understand differences between different types of neural models.
· Understand membrane potential and generation of action potential.
· Understand neurons as pattern matchers.
· Understand interaction of neurons in networks.
· Understand learning and adaptive mechanisms (LTP, LTD, STDP, XCAL, etc.).
· Explore effects of parameters on learning.
· Be able to locate anatomical brain regions and discuss functions.
· Understand large-scale organization of perceptual systems.
· Understand self-organization in perceptual systems.
· Explore effects of lesions on attention.
· Understand mechanisms of reinforcement learning (dopamine, basal ganglia, temporal difference, PVLV, etc.).
· Understand differences between learning and dynamics in various brain regions (attractor, separator, integrative).
· Model error-driven learning (cerebellum).
· Understand mechanisms of short-term, episodic, procedural, and semantic memory. Understand basic mechanisms of language.
· Understand executive function, reinforcement, and planning.
· Be able to use emergent simulator to run experiments.
· Be able to modify emergent simulations to test new hypotheses.
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Computing Accreditation Commission Statement of Student Outcomes |
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Course Outcomes ¯ |
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Cognitive modeling |
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Neurons & networks |
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Learning & adaptation |
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Perception & attention |
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Motor control &
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Learning & memory |
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Language |
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Executive function |
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