Title: Computational Cognitive Neuroscience
1Computational Cognitive Neuroscience
- Shyh-Kang Jeng
- Department of Electrical Engineering/
- Graduate Institute of Communication/
- Graduate Institute of Networking and Multimedia
2Artificial Intelligence
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3Jeff Hawkinss Comments on Artificial Intelligence
- AI defenders a program that produces outputs
resembling (or surpassing) human performance on a
task in some narrow but useful way really is just
as good as the way our brains do it - this kind of ends-justify-the-means
interpretation of functionalism leads - AI researchers astray
J. Hawkins, On Intelligence, Times Books, 2004
4Artificial Neural Networks
R. O. Duda, P. E. Harr, and D. G. Stork, Pattern
Classification, 2nd ed., John Wiley Sons, 2001
5Jeff Hawkinss Comments on Artificial Neural
Networks
- Connectionists intuitively felt the brain wasnt
a computer and that its secrets lie in how
neurons behave when connected together - That was a good start, but the field barely moved
on from its early successes - Research on cortically realistic networks was,
and remains, rare
6Jeff Hawkinss Comments on Intelligence
- Since intelligence is an internal property of a
brain, we have to look inside the brain to
understand what intelligence is - To succeed, we will need to crib heavily from
natures engine of intelligence, the neocortex - No other roads will get us there
7Cognitive Neuroscience
- To understand how neural processes give rise to
cognition - Perception, attention, language, memory, problem
solving, planning, reasoning, coordination and
execution of action - Cognitive neuroscience with its concern about
perception, action, memory, language, and
selective attention will increasingly come to
represent the central focus of all neurosciences
in the twenty-first century.
8Experimental Methodologies
- fMRI and other imaging modalities
- Neural basis of cognition in human
- Multi-electrode arrays
- Record from many separate neurons at a time
- Insight into representation of information
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9Other Major Research Methods
- Processes occurring in individuals with disorders
- Helpful to understand the normal case
- Animal models are also often used
- Conscious experience
- Subject to scientific scrutiny through
observables - Including verbal reports or other readout methods
- Brief interval of time or longer periods of time
10Different Mechanistic Goals
- Some focus on partitioning the brain into
distinct modules with isolable functions - Some try to find detailed characterization of
actual physical and chemical processes - Some look for something more general
- Not the details themselves that matter
- Principles that are embodied in these details are
more important
11Two-Route Model for Reading
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12Computational Cognitive Neuroscience
- Understanding how the brain embodies the mind,
using biologically based computational models
made up of networks of neuron-like units - Intersection of many disciplines
- Neuroscience
- Cognitive psychology
- Computation
13Computational Model for Reading
Randall C. OReilly and Yuko Munakata,
Computational Explorations in Cognitive
Neuroscience Understanding the Mind by
Simulating the Brain, MIT Press, 2000
Randall C. OReilly and Yuko Munakata,
Computational Explorations in Cognitive
Neuroscience Understanding the Mind by
Simulating the Brain, MIT Press, 2000
http//www.lps.uci.edu/johnsonk/CLASSES/philpsych
/brain.jpg
14Usefulness of Models
- Work through in detail of proposed modular
mechanism - Lead to
- explicit predictions that can be compared for an
adequate account - exploration of what postulates imply about
resulting behaviors
15Course Outline
- Introduction and Overview
- I. Basic Neural Computational Mechanisms
- Individual Neurons
- Networks of Neurons
- Hebbian Model Learning
- Error-Driven Task Learning
- Combined Model and Task Learning
16Course Outline
- II. Large-Scale Brain Area Organization and
Cognitive Phenomena - Large-Scale Brain Area Functional Organization
- Perception and Attention
- Memory
- Language
- High-Level Cognition
17Textbook and Website
- Randall C. OReilly and Yuko Munakata,
Computational Explorations in Cognitive
Neuroscience Understanding the Mind by
Simulating the Brain, MIT Press, 2000. - http//cc.ee.ntu.edu.tw/skjeng/CCN2011.htm
18Software Emergent
- For practicing examples in the textbook and doing
homeworks as well as the term project - Enhanced from PDP
- Downloadable from
- http//grey.colorado.edu/emergent/index.php/
- Main_Page
http//grey.colorado.edu/emergent/index.php/FileS
creenshot_ax_tutorial.png
19References
- Thomas J. Anastasio, Tutorial on Neural Systems
Modeling, Sinauer Associates Inc. Publishers,
2010 - Bernard J. Baars and Nicole M. Gage, Cognition,
Brain, and ConsciousnessIntroduction to
Cognitive Neuroscience, 2nd ed., Academic Press,
2010
20References
- Friedemann Pulvermuller, The Neuroscience of
Language, Cambridge University Press, 2002 - Douglas Medin, Brian H. Ross, Arthur B. Markman,
Cognitive Psychology, 4th ed,. Wiley, 2004
21References
- Patricia Churchland and Terrence J. Sejnowski,
The Computational Brain (Computational
Neuroscience), MIT Press, 1994 - Peter Dayan and L. F. Abbott, Theoretical
Neuroscience Computational and Mathematical
Modeling of Neural Systems, MIT Press, 2005
22References
- J. Hawkins, On Intelligence, Times Books, 2004