Approaches to Cognitive Modeling Symbolic Models Connectionist Models Hybrid Models Cognitive Architectures
Cognitive Modeling
Lecture 2: Approaches Frank Keller
School of Informatics University of Edinburgh keller@inf.ed.ac.uk
January 31, 2005
Frank Keller Cognitive Modeling 1 Approaches to Cognitive Modeling Symbolic Models Connectionist Models Hybrid Models Cognitive Architectures
1
Approaches to Cognitive Modeling What makes a good model? Information Processing Connectionist School Symbolic School
2
Symbolic Models Symbolic Representations Production Systems
3
Connectionist Models Parallel Distributed Processing Feature Based Representations Learning, Generalization, Degradation
4
Hybrid Models
5
Cognitive Architectures Reading: Cooper (2002: Ch. 1)
Frank Keller Cognitive Modeling 2 Approaches to Cognitive Modeling Symbolic Models Connectionist Models Hybrid Models Cognitive Architectures What makes a good model? Information Processing Connectionist School Symbolic School
A Cognitive Model of a Task
Example: a teacher trying to diagnose the problems a student has with learning subtraction. Model may consist of a computer program that: takes some representation of the stimulus (the arithmetic test items) as input; produces a prediction of student s answer as output; perhaps also describes the difference between this model and that expected if the student were able to perform the task correctly.
Frank Keller Cognitive Modeling 3 Approaches to Cognitive Modeling Symbolic Models Connectionist Models Hybrid Models Cognitive Architectures What makes a good model? Information Processing Connectionist School Symbolic School
What makes a good model?
A good model has two critical properties:
1 it is complete – it does not abstract properties that are
important;
2 it is faithful – it does not introduce confounding details during
abstraction.
Frank Keller Cognitive Modeling 4