1 / 40

Knowing

Knowing. Semantic memory. Semantic Memory. Memory of the general knowledge of the world While episodic memory is personal – events that happened to you – semantic memory is more general – information that everyone can learn about the world. Two basic questions asked.

jacob
Télécharger la présentation

Knowing

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Knowing Semantic memory

  2. Semantic Memory • Memory of the general knowledge of the world • While episodic memory is personal – events that happened to you – semantic memory is more general – information that everyone can learn about the world

  3. Two basic questions asked • 1. What is the structure and content of semantic memory? • Current perspective is that semantic memory is a network of nodes each representing a basic concept and nodes are linked together • 2. How do we access the information in semantic memory? • Accessing or retrieving information from the network involves spreading activation

  4. Semantic memory models • Quillen and Collins network model • Smith’s feature comparison model

  5. Collin and Quillian Model • A network model – interrelated concepts or nodes are organized into an interconnected network – these connections can be direct or indirect • Memory is the activation of a node which can spread to other nodes activating other memories • Two forms of connections or propositions: • Category membership “is a” • Property statements “has”

  6. Collin and Quillian Model

  7. Collin and Quillian Model

  8. Collin and Quillian Model

  9. Smith’s feature overlap model • Showed significant problems of the Quillen and Collins model • Used lists of characteristics instead of a network • Concepts are defined by a list of features. These features are stored in a redundant manner • The decision of whether one concept is an example of an another depends upon the level of overlap

  10. Smith’s feature overlap model

  11. Smith’s feature overlap model • Feature comparison • Where features of two concepts overlap a great deal or very little, the decision is made quickly • If some features overlap and others do not, then a stage 2 comparison has to be made and the decision is slower

  12. Smith’s feature overlap model

  13. Empirical Tests of Semantic Memory Models • Sentence Verification Task: Simple sentences are presented for the subjects’ yes/no decisions. • Most early tests of semantic memory models adopted the sentence verification task.

  14. Challenges to Collin and Quillian Model • Support for Collin and Quillian was cognitive economy – only nonredundant facts stored in memory. Conrad (1972) found that high frequency properties were stored in a redundant fashion

  15. Challenges to Collin and Quillian Model • Conrad (1972) found that high frequency properties were more highly associated with the concepts and are verified faster than low frequency properties – not shown in network model

  16. Challenges to Collin and Quillian Model

  17. Challenges to Collin and Quillian Model • Typicality: The degree to which items are viewed as typical, central members of a category. • Typicality Effect: Typical members of a category can be judged more rapidly than atypical members.

  18. Challenges to Collin and Quillian Model

  19. Modified Collin and Quillian Model

  20. Semantic Relatedness • Semantic Relatedness Effect: Concepts that are more highly interrelated can be retrieved and judged true more rapidly than those with a lower degree of relatedness. • Resulted in a third revision of the model which required a 3-dimensional model

  21. Knowing Categorization, classification, and prototypes

  22. Knowledge • Knowledge is the acquisition of concepts and categories – your mental representations that contain information about objects, events, etc.

  23. Categorization • Concepts usually involve the creation of categories • Categories – grouping things into groups based upon similar characteristics • Categories help organize information so that you do not have learn about every new thing you expereince

  24. Concepts and Categories • Two basic questions: • What is the nature of concepts? • How do we form concepts and categories? • Three approaches to these questions, classical, prototype, and exemplar

  25. Classical Approach - Aristotle • Categories have defining features – semantic features that are necessary and sufficient to define the category • Necessary – features have to be present for inclusion • Sufficient – if these features are present no other features are necessary for inclusion • Problem – most members of a category do not have the same defining features

  26. Prototypes • A prototype of the category is developed • The prototype has the semantic features that are most typical of the members of the category • New objects compared to different prototypes of different categories, and are included in category with the most similar prototype • Members of a category that are less similar to the prototype require longer to verify their inclusion

  27. Prototypes (cont) • Nonmembers of a category can be seen as members if they are similar to the prototype and the differences are not known • When asked to name members of a category, those members most like the prototype are named first • Priming most effected by prototypes

  28. Exemplars • Identification of examples or exemplars of the category • New objects are compared to to other objects you have seen in the past – your exemplars • Advantage of the use of exemplars – it uses actual examples not just a constructed prototype – atypical members can be exemplars of a category

  29. Prototypes and Exemplars • Evidence supports both models of categorization • One possibility is that we use prototypes in large categories and exemplars in defining smaller categories

  30. Feature comparison theory of determining category membership • This model focuses on the strategy used to decide whether an exemplar (i.e. a canary) is a member of a larger category (i.e. bird) • This strategy consists of two rules: • If the feature associated with the exemplar (canary has feathers) is found to be associated with the larger category (birds have feathers), it provides positive proof the exemplar is a member of the larger category • If the feature is not associated with the category (bats have fur), they are not members of the category (a bat is not a bird)

  31. Support for Feature comparison model • Consistent with typicality effects – typical exemplars have extensive overlap of features; atypical exemplars have less overlap and require more time to determine their membership • Consistent with the false relatedness effect- subjects respond faster when the exemplar is unrelated to the category than when it is somewhat related • Also consistent with levels effects

  32. Level effects • Categories are organized in a hierarchy – one category is part of a larger category which is part of an even larger category • Superordinate category – largest and most abstract – animal • Subordinate category – smallest and least level of abstraction – a canary • Base level category – in the middle and at an intermediate level of abstraction - bird

  33. Base level categories • Most useful and most likely to come to mind and tend to be the most important • Children develop base categories before superordinate or subordinate categories • When asked to identify pictures, people more likely to give base level category

  34. Category levels • When asked for common attributes of superordinate category, people give very few (vehicle) • When asked about attributes of base level categories, many more given (car) • When asked about attributes of base level categories, not many more than those given at the base level are added (SUV) • Movement from a superordinate category to a base level category results in a great increase in information, but movement to a subordinate category adds very little information

  35. Base level thinking • Humans prefer to think a the base level of categorization because it provides the most useful information for predicting membership in a category • Superordinate members of a category maybe very different with few similarities – fruit • Base level share many common features – apples • Subordinate categories are more informative , but are poor discriminators – McIntosh apples share many features of other apples • Subordinate level thinking most important in areas of expertise. Choosing wine for dinner

  36. Knowing Connectionism

  37. Importance of context • Context can act as a prime to understanding correct meaning • I saw a man eating fish. • Visiting relatives can be boring • Context can activate the meaning meant to be conveyed • By understanding the context of a communication, you can understand and remember the material better

  38. Connectionist model of semantic memory • Involves a network of interconnected nodes each node connected with specific information • The connections between nodes vary in strength – referred to as connection weights • Nodes that are more strongly connected have greater connection weights • Learning involves strengthening the connection by increasing connection weights

  39. A neural network

  40. A neural network example

More Related