|
|
səhifə | 2/9 | tarix | 15.06.2023 | ölçüsü | 317 Kb. | | #130757 |
| cohesion3
Measuring Cohesion - Measurements from Computational Linguistics
- Hearst(94) topic segmentation, text
- Word-count similarity of spans of text
- Olney & Cai (05) topic segmentation, tutorial dialog
- Several measures, including Hearst’s
- Morris & Hirst (91) Lexical Chains
- Barzilay & Eldihad (97) Automatic Lexical Chains
- We develop measures similar to Hearst’s
- But novel in that:
- Applied to dialog rather than text,
- used to find correlations with learning
Issue 1: How identify cohesion in dialogs? - Defining Cohesion
- Halliday and Hassan (76)
- Grammatical vs Lexical Cohesion
- Lexical Cohesion
- Reiteration
- Exact word repetition
- Synonym repetition
- Near Synonym repetition
- Super-ordinate class
- General referring noun
- Cohesion measured by counting “cohesive ties”
- Two words joined by a cohesive device (i.e. reiteration)
Issue 1: How identify cohesion in dialogs? - Defining Cohesion
- Halliday and Hassan (76)
- Grammatical vs Lexical Cohesion
- Lexical Cohesion
- Reiteration
- Exact word repetition
- Synonym repetition
- Near Synonym repetition
- Super-ordinate class
- General referring noun
- Cohesion measured by counting “cohesive ties”
- Two words joined by a cohesive device (i.e. reiteration)
Issue 1: How identify cohesion in dialogs? - How we measure Lexical Cohesion
- We count cohesive ties between turns
- Tokens (with stop words)
- Tokens (stop words removed)
- (Stops = high frequency, low information words)
- Stems (stop words removed)
Dostları ilə paylaş: |
|
|