Concepts / Categorization
Is
Mental representations
LTM (Concepts are basic units)
Semantic Memory
Propositions: "Dogs" bark, Dogs have fur, Dogs are pets
Procedural Memory
Schemas
Rule based "What to do in a Restaurant"
Aquired by autobiographical experience
Forms of reps
by Rule / defintion
by Prototype
abstract, by relations
Compression and facilitation
Mental economy
Makes remembering more easiy: All cats have hearts
Predictions of behaviour
To guide action
A level of recognition
Naming
Semantic Classifacation
Familiarity: lov level
concept provides Meaning: Mental Lexicon
Categorizations not only natural but depend on purpose: "Things to take in case of fire"
Methods
Card Sorting
Attribute Lising
Neuropsychology
Connectionist models
Classical View (all or none), members are determined by a definition
Pros
Divides the world in distinct classes: taxonomies
Members
All or none are members
share a) neccessary and b) sufficient features
are equally good
Generality claims
All concepts are represented this way
Everybody represents in this way
Inheritance: Bird inherits all from animal but adds feathers
1. Some propertes in beginning / Most at end
Transitivity: A=B= C and C= A
Hierarchical. Food= Fruit or Vegatables
Bachelor: male, unmarried, adult
Collins & Quillian: Categorization takes longer for 2 levals
A canary is an animal > A canary is a bird
Cons
Everyday Concepts fuzzy not exact
Some Categories have no def. features
Example: Furniture / chair
No neccessary and sufficient properties for all chairs
Defined by functional /not defined by pyhsical properties
Typicality more important than defining features:
Wittgenstein: Games are similar
Some things dont have definitions - more holistic
Cats would still be cats even if turs out they are robots from mars
Does not explain Typicality effets
Varying Knowlege: Experts vs. Normal people
Bad RTs: RTs not a good predictor
is a dog an animal < Is a dog a mamal
Intransitivity: big ben = clock = furniture
Borderline Cases
McCloskey & Glucksberg: yes/no
bookends =furniture?: changes across people and time
Typical items: chair= furniture: high over time and people
Possilbly: Lack of knowledge
Where does red turn into orange
Categories are not single thing or process
Types of Categories differ
Well defined (a triangle)
Fuzzy (red)
Categorization differ according to action / purpose
Barsalou: internal structure not fixed but viewpoint and task driven
Smith & Sloman: Two routes: Similarity or Route based depending on the task
Decision based
Prototype: Fast and Superficial: Fast decisions under uncertainty
Classical: Exact definitions needed: law
Explanation based
Theory: If thing need explanations: This guy is intoxicated: Thats why he jumps the pool
Essentialism: Consistent with (current) expertise
Categorizers differ
Experts: Definition driven
Novices: Similarity Driven
Prototype theories (graded, some more typical than others)
Prototype: Other members determined by comp with typical member
What is typicality: Having moreo cue valid features in common with prototype
In some natural objects, attributes cluster together
Weighting=Cue Validity= Some features more important than others e.g. bird=feathers
How we do it?
comparing of features with stored rep
More similar features - quciker match
Statistacl distribution determines weight
high typicality instances match on high weighted values
Calculate family resemblecne: one shared by 16, one by 14=30
Pros
Mervis & Roesch: < RT faster and less errors for typical examplars
Armstrong: defined cat seem to have typiclity: female: mother vs. policewoman
Dual Proces: conept core to judge generel membership, prototype to evlauate instances
Roesch and Mervis: Robins share more properties with other category member than penguins
Cons
Hampton: Some astract concepts (belief) has no prototype
Implies we only use lists of attributes but we also use reason: blue bird=probably "warrum," but fat man is prob not a "klatau"
Medin & Shoeben: typicality context dependent: kaffeelöffel paradox: large wooden>small wooden
Barsalou: goal derived categories have no family resemlance: presents that john likes
Semanitc Transfer?: Complex Concepts Lead to wrong interpretaions in real life: pet-fish = dog trout
Evaluation
Explains many categories that lack clear definitions (game, furniture)
Family resemblence often predicts typicality scores
Unclear Definition: Are prototypes lists or typical members?
Rich Internal Structure
Demarcatino Line (Classical View)
Typical members (Prototype views)
Comon-Sense "Theoroy"
Problem with similarity: What properties are looked at? (Plumes and Lawnmowers-> knowledge makes the difference)
knowledge involved - not mere lists
Pros
Rips Pizza Dissotiation: More similar to quater but more likely (=categorized) a pizza
Kroska and Goldstone: 2 emo Szenario categorzed as fear but more similar to joy
Developemental Evi: Kiel: characterisic to defining shift
Looks and Behaves like Zebra: 4 yrs-zebra 7 yrs-horse
Racoon disguised as a skunk
Murpy: They dont know about biological categories
Evaluation
Good because it hints to problems with "similarity"
Underspciefied: How are complex categories/ theories combined?: pet fish
Its rather knowledge than theory
Bottom up: Facilitated by similarity
Top down: with more complex situations we have to think
Psychological essetialism (essential and constraining prop)
Difference to classical view
We have a belief about essential prop
If we are not shure: we create a placeholder
Filling the placeholder is job of science
A placeholder can change
Pro
Gelmann and Wellman: a dog still dog if inside is taken (4-5 yrs: no)
Con:
Malt: People know, the essece of water is H20
Tears are not water although rated to contain 87% H20
Pond is water although judged to contain only 63% H20
Categorizatio also driven by function, location socio-historical context
Braisby: Is a cat still (essentially) a cat a cat even when robot from mars?
50 "Yes, cat
50% both true, fals
Concepts dirven by context and content
Malt: We are essentialist for natural categories
Trout-Bass: Ask an expert
Boat-Ship: Call it whatever
Braisby: Experts say it is a salmon: 25% modify their opinion to conform w. experts
Function and appearane are imp as well
Connectionist Explanations
IAC model: Can learn from specific instances and link comon characteristics: Links are knowledge / instances are strength of connections
Neurological Evidence
Specific deficits for
Living things & Food
Fruit & Vegtables
body parts
With Alzheimers: Naming Superordinate: Horse--> Animal