L17 - Category Learning 1 Flashcards
Describe Ashby and Madox’s 2 Systems of Category Learning
Explicit Hypothesis Testing System
- Working memory and executive function dependent.
- Considers explicit rules that treat stimulus dimensions one at a time.
- Doesn’t require feedback.
- Explicit rules mediate specific S-R associations.
e. g. medical diagnosis
Implicit Procedural System
- Does not require working memory.
- Integrated across multiple stimulus dimensions
- Learns via prediction and reinforcement
- Specific stimulus and response associations.
Two systems are in competition and type of task can determine which wins.
What do rule tasks elicit better performance from?
Explicit hypothesis testing system
What tasks require Implicit Procedural Learning?
Information-Integration tasks
Describe the study Fileto et al. (2010) did about working memory on category learning tasks?
- A working memory dual task using either conjunctive rule or information-integration.
- 2D task: only length and orientation
- 3D task: also position (doesn’t matter for classification)
- Having extra information decreased performance, but in I-I working memory load increased performance as it shuts of the explicit rule system earlier.
What did Markman et al (2006) find about social pressure on category learning tasks?
Adding social pressure of ($20 to both of you if you do well), helps Information-integration and harms rule learning.
What affects performance for the information-integration system?
Boosts:
- working memory load
- social pressure
Decreases:
- feedback delay
- button-switching
(opposite for rule based learning)
What did Chin-Parker and Ross (2002) conclude about category learning using description of employee files?
- inference learning supports acquisition of internal structure of the category than classification.
- we only learn what we need to learn.
What are the differences between inference and classification learners?
- inference learners are sensitive to all features equally.
- classification learners only care about diagnostic features.
What is inference learning bad for?
- Good at prototypes and feature-correlations.
- Bad at learning examples that share little with other examples (lions, bears, platypuses).