1 / 38

Discourse Topics, Linguistics, and Language Teaching

Discourse Topics, Linguistics, and Language Teaching. Richard Watson Todd King Mongkut’s University of Technology Thonburi arts.kmutt.ac.th/crs/research/ Discourse_Topics_Linguistics_and_Language_Teaching. Topic. Everyday word Changing the topic The main topic of conversation

sreinoso
Download Presentation

Discourse Topics, Linguistics, and Language Teaching

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. Discourse Topics, Linguistics, and Language Teaching Richard Watson Todd King Mongkut’s University of Technology Thonburi arts.kmutt.ac.th/crs/research/ Discourse_Topics_Linguistics_and_Language_Teaching

  2. Topic • Everyday word • Changing the topic • The main topic of conversation • How to broach the topic • Go off topic • The hot topic

  3. Topic

  4. Topics in applied linguistics • Reading comprehension • The language of the cognitively impaired • Natural language processing • Analysis of texts and conversations

  5. Topics and reading comprehension • How can topics affect reading comprehension?

  6. Wrestling

  7. The prison break

  8. Rocky slowly got up from the mat, planning his escape. He hesitated a moment and thought. Things were not going well. What bothered him most was being held, especially since the charges against him had been weak. He considered his present situation. The lock that held him was strong but he thought he could break it. He knew, however, that his timing would have to be perfect.

  9. The language of the cognitively impaired • Topic maintenance patterns and signalling of topic changes differs from normal practice in • People with severe schizophrenia • People with Alzheimer’s disease • Certain types of head injuries • Certain types of aphasia

  10. Natural Language Processing • Automated topic identification and topic boundary identification • Applications for text summarisation, automated translation, automated essay scoring • Sample programs/approaches: Text Tiling, Texplore, TopCat

  11. Analysis of discourse • Text linguistics • Topicality as the general organising principle in discourse • Discourse processing • Relevance theory (and hence topics) as underpinning discourse • Conversation analysis • Clumping by topic as a key explanation of conversation structure • Language features in discourse • Relationship between prosody and topic

  12. Problems with topic • Much previous work in linguistics involving topics has • Not clearly identified what topic means • Relied on intuitive identifications of topic (especially DA and CA) • Focused on where topics change but not what topics are (especially DA and NLP) • Made problematic assumptions about communication e.g. its logicality (especially NLP)

  13. Topic issues: Defining topic • Replacement definitions • The topic is the “subject” • Area-specific definitions • “information which has a low degree of recoverability and which has persistence” • More general definitions • “cluster of associated or related concepts”

  14. Topic issues: Stating topics • 3 choices: • Topic as entity (i.e. noun phrase) • Topic as proposition (i.e. sentence) • Topic as question (which the relevant discourse answers)

  15. Topic issues: Level of topic • Topics identified by text length • Sentence topic (in topic-comment approach similar to theme-rheme analysis) • Paragraph topic (similar to main idea) • Text topic • Topics identified by text features • Topic of stretch of discourse between 2 topic boundaries

  16. Topic issues: Topic boundaries • Identifying topic boundaries • By prosody • By discourse markers (e.g. temporal adverbials; genre-specific markers e.g. “This just in”) • By pronoun referent shift • By change in content

  17. Topic issues: Topic change • Types of topic progression • Topic introduction • Topic maintenance • Topic shift • Topic drift/shading • Topic renewal • Topic insertion

  18. Topic issues: Topic identification • Topics identified in text (especially NLP) • Topics identified in interaction between reader and text • Topics identified through participant behaviour (especially CA) • General assumption that stretches of discourse have a unique topic

  19. Topic issues: Methods of analysis • Word frequency • Phrase frequency • Word co-occurrence frequency • Text position analysis • Lexical cohesion analysis • Theme-rheme progression • Given-new progression • Topic-based analysis (using logical relations or associations)

  20. Assumptions of methods of analysis • Word frequency/word co-occurrence frequency/lexical cohesion • Concepts are expressed by single words • Frequency is indicator of importance • Theme-rheme progression • Sentence topics combine to form discourse topics • Topic-based analysis (using logical relations) • Discourse structure and cognition are both hierarchical

  21. Gaps in topic • Testing validity of methods of analysis • Questioning assumptions underlying topic research • Investigating participant identification of topic

  22. Filling the gaps: Study 1 • Testing validity of methods of analysis • Using extracts from teacher eliciting from 12 lessons • Apply 6 methods to the data to identify topics and topic boundaries (and a control method) • Theme-rheme progression • Given-new progression • Lexical cohesion analysis • Topic-based analysis (using logical relations) • Topic-based analysis (using associations) • Exchange structure analysis

  23. Comparing methods for identifying topic boundaries

  24. Comparing methods for identifying topics

  25. Implications from comparisons • Exchange structure analysis (based on functions) and theme-rheme progression (based on surface forms) are problematic • Other approaches are based on discourse semantics or cognition • Network-based analyses cluster together

  26. Filling the gaps: Study 2 • Questioning assumptions underlying topic research • Same data as in Study 1; same 6 approaches but with bias based on findings from Study 1 • Combine findings from the approaches

  27. Combining findings

  28. Implications from combining findings • There is no single definitive topic for any stretch of discourse • At any point, several concepts have the potential to be considered as (part of) the topic at different levels of likelihood

  29. Filling the gaps: Study 3 • Investigating participant identification of topics • The data is an extract from An Inconvenient Truth • Topics and topic boundaries are identified by 7 informants • Topics and topic boundaries are analysed using 4 methods • Findings from informants and methods are compared

  30. Implications from Study 3 • Reasonable agreement in identifying topic boundaries and topics • Between informants • Between methods of analysis • Between informants and methods • For topic boundaries, given-new progression matches informants most closely • For topics, topic-based analysis (using logical relations) matches informants most closely

  31. Implications from Study 3 • Topic keywords = words included as part of the noun phrase describing the topic • All topic keywords identified by the 4 methods appear in the text • 28% of topic keywords identified by informants do not appear in the text (e.g. words showing rhetorical function) • Correlation between topic keywords and word frequency in the text is 0.65

  32. What does all this mean? • For discourse analysts and neuropsychologists • Most topic identification relies on researcher intuition • Ask participants about topics • Conduct loose analyses (using given-new progression and topic-based analysis) • Be open to multiple topics • Avoid theme-rheme progression

  33. What does all this mean? • For Natural Language Processing • Most NLP applications are very reliant on frequency • Attempt to account for saliency and rhetorical functions • Consider identifying multiple topics (fits with Bayesian approach)

  34. What does all this mean? • For language teachers • Topics most central in teaching reading • Reading for the main idea → Reading for a main idea? • If multiple topics exist, avoid correct/incorrect approaches to reading • Multiple topics fit with a constructivist approach

  35. Summary • Topics are central in much of linguistics • Most informal use of topics in linguistics is problematic • More rigorous approaches to topic are needed • Need for more work on topic as a linguistic concept

More Related