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SOCIAL METAPHOR
DETECTION VIA TOPICAL
ANALYSIS
Ting-Hao (Kenneth) Huang windx@cmu.edu
Language Technologies Institute, Carnegie Mellon University2013/10/13
2/17
Selectional Preference
 http://www.flickr.com/photos/uxud/320564052
4/
 http://www.flickr.com/photos/epc/313661914/
Verb has selectional preferences to its arguments.
Can you eat money?
3/17
Research QuestionsCould we capture metaphors
in social media
by selectional preference?
If yes, how?
Is it for verb only ?
If not, why not?
Could topic model help ?
4/17
Outline
 Selectional Preference
 3-Step Framework
1. Pre-processing
2. Modeling & Detection
3. Post-processing
 Topical Analysis
 Experiment & Result
 Conclusion
5/17
Selectional Preference
 Selectional Association (SA) (Resnik, 1997)
p: predicate
c: noun class
6/17
3-step Framework
Pre-processing -
Word Extraction &
Noun Clustering
Modeling & Detection -
SA Outlier Detection
Post-processing -
SA Strength Filter
7/17
Step 1: Pre-processing (1)
 Word Extraction
 Why?
 Parsing & POS tagging is hard on noisy data
 How?
 Using lemma form
 Set minimal term frequency
 Set minimal “POS rate”
 Proportion of occurrence of certain POS
 Predicates should be more strict than the nouns
 Noun: TF > 5, POS rate >= 0.7
 Verb & Adj: TF > 50, POS rate >= 0.8
8/17
Top 100
Similar Nouns
money:
1. funds
2. cash
3. profits
4. millions
5. monies
6. dollars
7. royalties
…
Weighted
Directed Graph
for Nouns
Spectral
Clustering
Step 1: Pre-processing (2)
 Semantic Noun Clustering
9/17
Step 2: Modeling & Detection
 Selectional Association
Another Candidate
Semantic Outlier Word Detection
 “Semantic Coherence” outlier
(Inkpen et al., 2005)
 Based on pair-wise word
semanic similarity
 Very High False Positive
 The influences of “general
words”
 Semantic similarity is not
reliable
Seafood
Fruit
Money
Human
Eat
…
!
SA1
SA2
SA(n-1)
SAn
10/17
Step 3: Post-processing
 SA Strength Filtering (Shutova, et al., 2010)
 SA Strength
 Strong (e.g., filmmake)
 Weak (e.g., “light verb”, put, take, …)
 Predicates with weak selectional preference barely
“violates” their own preference.
11/17
Topical Analysis
Entertainment
Food & Cook
Finance
Politics
Entertainment
Food & Cook
Politics
Finance
12/17
DataData  Online breast cancer support community
 All the public posts from Oct 2001 to Jan 2011.
 90,242 unique users who posted 1,562,459
messages belonging to 68,158 discussion
threads. (Wang, et al., 2012; Wen, et al., 2013)
13/17
Experiment Setting
Pre-processing -
- Stanford NLP/Parser
- 55k nouns, 3k adjs, and 1.8k verbs
Modeling & Detection -
- 3 deps: nsubj, dobj, amod
- Observe negative pairs
Post-processing -
- Follow (Shutova, et al., 2010)
Topical Model: JGibbLDA, 20 topics (k = 20)
14/17
Result
 Most outliers are NOT metaphors
 Parsing Error
“…yearly breast MRI…”: amod(breast, yearly)
 Non-metaphor
“…cancer cells float around in my blood…”: dobj(float, cancer)
 Metonymy
“If John win tomorrow night, …”: dobj(win, tomorrow)
 Only very few metaphors are identified
 “…keep my head occupied …”: nsubj(occupy, head)
 “… my belly has overtaken the boobs …”: nsubj(overtake, belly)
 Topic model does NOT help much
15/17
Discussion & ConclusionCould we capture metaphors
in social media by selectional preference?
If yes, how? Is it for verb only ?
If not, why not? Could topic model help ?
Maybe not by fully-automatic approaches.
Good parsing is challenging on social media.
Outliers of SA are not always metaphors.
Topic modeling does not help much.
Maybe seed-expansion method works better.
No, it could also work for amod dependency.
16/17
Thanks!
 Acknowledgement
 Zi Yang, Prof. Teruko Mitamura, Prof. Eric Nyberg for academic
supports, and Yi-Chia Wang , Dong Nguyen for data collection.
 Supported by the Intelligence Advanced Re-search Projects
Activity (IARPA) via Department of Defense US Army Research
Laboratory contract number W911NF-12-C-0020.
 Main References
 Resnik, P. (1997). Selectional preference and sense disambiguation.
In Proceedings of the ACL’97 SIGLEX Workshop.
 Shutova, E.; Sun, L.; and Korhonen, A. (2010). Metaphor
identification using verb and noun clustering. ACL’10.
 Wang, Y.-C., Kraut, R. E., & Levine, J. M. (2012). To Stay or Leave?
The Relationship of Emotional and Informational Support to
Commitment in Online Health Support Groups. CSCW'2012.
17/17
License
 Except where otherwise noted, content on this slide is licensed under a
Creative Commons. Attribution-ShareAlike 3.0 Unported License.
 Material used
 Backgournd image of slide 2: uxud@Flickr, “Plate of money”, CC BY 2.0
http://www.flickr.com/photos/uxud/3205640524/
 Backgournd image of slide 3, 15: jasonahowie@Flickr, “Social Media apps”,
CC BY 2.0
http://www.flickr.com/photos/jasonahowie/8583949219/
 Backgournd image of slide 12: susangkomenforthecure@Flickr, “Susan G.
Komen walkers gear up and take on Day 1 for breast cancer awareness.”, CC
BY-NC-ND 2.0
http://www.flickr.com/photos/susangkomenforthecure/9623480334/
 Backgournd image of slide 16: jam_project@Flickr, “IMG_0405 [2011-08-23]”,
CC BY-NC-ND 2.0
http://www.flickr.com/photos/jam_project/6075715482/

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Social Metaphor Detection via Topical Analysis

  • 1. SOCIAL METAPHOR DETECTION VIA TOPICAL ANALYSIS Ting-Hao (Kenneth) Huang windx@cmu.edu Language Technologies Institute, Carnegie Mellon University2013/10/13
  • 2. 2/17 Selectional Preference  http://www.flickr.com/photos/uxud/320564052 4/  http://www.flickr.com/photos/epc/313661914/ Verb has selectional preferences to its arguments. Can you eat money?
  • 3. 3/17 Research QuestionsCould we capture metaphors in social media by selectional preference? If yes, how? Is it for verb only ? If not, why not? Could topic model help ?
  • 4. 4/17 Outline  Selectional Preference  3-Step Framework 1. Pre-processing 2. Modeling & Detection 3. Post-processing  Topical Analysis  Experiment & Result  Conclusion
  • 5. 5/17 Selectional Preference  Selectional Association (SA) (Resnik, 1997) p: predicate c: noun class
  • 6. 6/17 3-step Framework Pre-processing - Word Extraction & Noun Clustering Modeling & Detection - SA Outlier Detection Post-processing - SA Strength Filter
  • 7. 7/17 Step 1: Pre-processing (1)  Word Extraction  Why?  Parsing & POS tagging is hard on noisy data  How?  Using lemma form  Set minimal term frequency  Set minimal “POS rate”  Proportion of occurrence of certain POS  Predicates should be more strict than the nouns  Noun: TF > 5, POS rate >= 0.7  Verb & Adj: TF > 50, POS rate >= 0.8
  • 8. 8/17 Top 100 Similar Nouns money: 1. funds 2. cash 3. profits 4. millions 5. monies 6. dollars 7. royalties … Weighted Directed Graph for Nouns Spectral Clustering Step 1: Pre-processing (2)  Semantic Noun Clustering
  • 9. 9/17 Step 2: Modeling & Detection  Selectional Association Another Candidate Semantic Outlier Word Detection  “Semantic Coherence” outlier (Inkpen et al., 2005)  Based on pair-wise word semanic similarity  Very High False Positive  The influences of “general words”  Semantic similarity is not reliable Seafood Fruit Money Human Eat … ! SA1 SA2 SA(n-1) SAn
  • 10. 10/17 Step 3: Post-processing  SA Strength Filtering (Shutova, et al., 2010)  SA Strength  Strong (e.g., filmmake)  Weak (e.g., “light verb”, put, take, …)  Predicates with weak selectional preference barely “violates” their own preference.
  • 11. 11/17 Topical Analysis Entertainment Food & Cook Finance Politics Entertainment Food & Cook Politics Finance
  • 12. 12/17 DataData  Online breast cancer support community  All the public posts from Oct 2001 to Jan 2011.  90,242 unique users who posted 1,562,459 messages belonging to 68,158 discussion threads. (Wang, et al., 2012; Wen, et al., 2013)
  • 13. 13/17 Experiment Setting Pre-processing - - Stanford NLP/Parser - 55k nouns, 3k adjs, and 1.8k verbs Modeling & Detection - - 3 deps: nsubj, dobj, amod - Observe negative pairs Post-processing - - Follow (Shutova, et al., 2010) Topical Model: JGibbLDA, 20 topics (k = 20)
  • 14. 14/17 Result  Most outliers are NOT metaphors  Parsing Error “…yearly breast MRI…”: amod(breast, yearly)  Non-metaphor “…cancer cells float around in my blood…”: dobj(float, cancer)  Metonymy “If John win tomorrow night, …”: dobj(win, tomorrow)  Only very few metaphors are identified  “…keep my head occupied …”: nsubj(occupy, head)  “… my belly has overtaken the boobs …”: nsubj(overtake, belly)  Topic model does NOT help much
  • 15. 15/17 Discussion & ConclusionCould we capture metaphors in social media by selectional preference? If yes, how? Is it for verb only ? If not, why not? Could topic model help ? Maybe not by fully-automatic approaches. Good parsing is challenging on social media. Outliers of SA are not always metaphors. Topic modeling does not help much. Maybe seed-expansion method works better. No, it could also work for amod dependency.
  • 16. 16/17 Thanks!  Acknowledgement  Zi Yang, Prof. Teruko Mitamura, Prof. Eric Nyberg for academic supports, and Yi-Chia Wang , Dong Nguyen for data collection.  Supported by the Intelligence Advanced Re-search Projects Activity (IARPA) via Department of Defense US Army Research Laboratory contract number W911NF-12-C-0020.  Main References  Resnik, P. (1997). Selectional preference and sense disambiguation. In Proceedings of the ACL’97 SIGLEX Workshop.  Shutova, E.; Sun, L.; and Korhonen, A. (2010). Metaphor identification using verb and noun clustering. ACL’10.  Wang, Y.-C., Kraut, R. E., & Levine, J. M. (2012). To Stay or Leave? The Relationship of Emotional and Informational Support to Commitment in Online Health Support Groups. CSCW'2012.
  • 17. 17/17 License  Except where otherwise noted, content on this slide is licensed under a Creative Commons. Attribution-ShareAlike 3.0 Unported License.  Material used  Backgournd image of slide 2: uxud@Flickr, “Plate of money”, CC BY 2.0 http://www.flickr.com/photos/uxud/3205640524/  Backgournd image of slide 3, 15: jasonahowie@Flickr, “Social Media apps”, CC BY 2.0 http://www.flickr.com/photos/jasonahowie/8583949219/  Backgournd image of slide 12: susangkomenforthecure@Flickr, “Susan G. Komen walkers gear up and take on Day 1 for breast cancer awareness.”, CC BY-NC-ND 2.0 http://www.flickr.com/photos/susangkomenforthecure/9623480334/  Backgournd image of slide 16: jam_project@Flickr, “IMG_0405 [2011-08-23]”, CC BY-NC-ND 2.0 http://www.flickr.com/photos/jam_project/6075715482/