Modeling Information Seeking Behavior in Social Media Eugene Agichtein Emory University.
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Transcript of Modeling Information Seeking Behavior in Social Media Eugene Agichtein Emory University.
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Modeling Information Seeking Behavior in Social Media
Eugene AgichteinEmory University
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Intelligent Information Access Lab (IRLab)
Qi Guo (2nd year Phd)
Yandong Liu (2nd year Phd)
Ablimit Aji (1st year PhD)
• Text and data mining• Modeling information seeking behavior• Web search and social media search• Tools for medical informatics and public health
Supported by:
External collaborators:- Beth Buffalo (Neurology)- Charlie Clarke (Waterloo)- Ernie Garcia (Radiology)- Phil Wolff (Psychology)- Hongyuan Zha (GaTech)
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Information sharing: blogs, forums, discussions
Search logs: queries, clicks
Client-side behavior: Gaze tracking, mouse movement, scrolling
Online Behavior and Interactions
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Research Overview
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Social media
Health Informati
cs
Cognitive Diagnosti
cs
Intelligent search
Discover Models of Behavior
(machine learning/data mining)
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Applications that Affect Millions
• Search: ranking, evaluation, advertising, search interfaces, medical search (clinicians, patients)
Collaboratively generated content: searcher intent, success, expertise, content quality
• Health informatics: self reporting of drug side effects, co-morbidity, outreach/education
• Automatic cognitive diagnostics: stress, frustration, Alzheimer’s, Parkinson's, ADHD, ….
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(Text) Social Media TodayPublished:
4Gb/daySocial Media:
10Gb/Day
Technorati+Blogpulse120M blogs2M posts/day
Twitter: since 11/07:2M users3M msgs/day
Facebook/Myspace: 200-300M usersAvg 19 m/day
Yahoo Answers: 90M users, 20M questions, 400M answers[Data from Andrew Tomkins, SSM2008 Keynote]
Yes, we could read your blog. Or, you could tell us about your day
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Total time: 7-10 minutes, active “work”
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Someone must know this…
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11+1 minute
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+7 hours: perfect answer
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Update (2/15/2009)
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http://answers.yahoo.com/question/index;_ylt=3?qid=20071008115118AAh1HdO
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Finding Information Online (Revisited)
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Next generation of search: Algorithmically-mediated information exchange
CQA (collaborative question answering):• Realistic information exchange
• Searching archives
• Train NLP, IR, QA systems
• Study of social behavior, norms
Content quality,
asker satisfaction
Current andfuture work
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(Some) Related Work• Adamic et al., WWW 2007, WWW 2008:
– Expertise sharing, network structure• Elsas et al., SIGIR 2008:
– Blog search• Glance et al.:
– Blog Pulse, popularity, information sharing• Harper et al., CHI 2008, 2009:
– Answer quality across multiple CQA sites• Kraut et al.:
– community participation• Kumar et al., WWW 2004, KDD 2008, …:
– Information diffusion in blogspace, network evolution
SIGIR 2009 Workshop on Searching Social Mediahttp://ir.mathcs.emory.edu/SSM2009/
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Finding High Quality Content in SM
• Well-written• Interesting• Relevant (answer)• Factually correct• Popular?• Provocative?• Useful?
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As judged by professional editors
E. Agichtein, C. Castillo, D. Donato, A. Gionis, and G. Mishne, Finding High Quality Content in Social Media, in WSDM 2008
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Social Media Content Quality E. Agichtein, C. Castillo, D. Donato, A. Gionis, G. Mishne, Finding High Quality Content in Social Media, WSDM 2008
quality
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2020
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How do Question and Answer Quality relate?
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Community
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Link Analysis for Authority Estimation
Question 1
Question 2
Answer 5
Answer 1
Answer 2
Answer 4
Answer 3
User 1
User 2
User 3
User 6
User 4
User 5
Answer 6
Question 3
User 1
User 2
User 3
User 6
User 4
User 5
Kj
jAiH..0
)()(
Mi
iHjA..0
)()(
Hub (asker) Authority (answerer)
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Qualitative Observations
HITS effective
HITS
ineffective
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Random forest classifier
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Result 1: Identifying High Quality Questions
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Top Features for Question Classification
• Asker popularity (“stars”)
• Punctuation density
• Question category
• Page views
• KL Divergence from reference LM31
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Identifying High Quality Answers
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Top Features for Answer Classification• Answer length
• Community ratings
• Answerer reputation
• Word overlap
• Kincaid readability score33
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Finding Information Online (Revisited)
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• Next generation of search: • human-machine-human
• CQA: a case study in complex IRContent quality• Asker satisfaction• Understanding the interactions
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Dimensions of “Quality”
• Well-written• Interesting• Relevant (answer)• Factually correct• Popular?• Timely?• Provocative?• Useful?
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As judged by the asker (or community)
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Are Editor Labels “Meaningful” for CGC?
• Information seeking process: want to find useful information about topic with incomplete knowledge– N. Belkin: “Anomalous states of knowledge”
• Want to model directly if user found satisfactory information
• Specific (amenable) case: CQA
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Yahoo! Answers: The Good News
• Active community of millions of users in many countries and languages
• Effective for subjective information needs– Great forum for socialization/chat
• Can be invaluable for hard-to-find information not available on the web
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Yahoo! Answers: The Bad News
May have to wait a long time to get a satisfactory answer
May never obtain a satisfying answer
0
5
10
15
20
25
30
35
40
1 2 3 4 5 6 7 8 9 10
1. FIFA World Cup2. Optical3. Poetry4. Football (American)5. Soccer6. Medicine7. Winter Sports8. Special Education9. General Health Care10. Outdoor Recreation
Time to close a question (hours)
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Predicting Asker Satisfaction
Given a question submitted by an asker in CQA, predict whether the user will be satisfied with the answers contributed by the community.
–“Satisfied” :• The asker has closed the question AND• Selected the best answer AND• Rated best answer >= 3 “stars” (# not important)
–Else, “Unsatisfied
Yandong Liu Jiang Bian
Y. Liu, J. Bian, and E. Agichtein, in SIGIR 2008
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ASP: Asker Satisfaction Prediction
asker is satisfied
asker is not satisfied
TextCategory
Answerer History
Asker History
Answer
Question
Wikipedia
News
Classifier
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Experimental Setup: Data
Crawled from Yahoo! Answers in early 2008
Questions
Answers
Askers
Categories
% Satisfied
216,170 1,963,615
158,515
100 50.7%
“Anonymized” dataset available at: http://ir.mathcs.emory.edu/shared/
1/2009: Yahoo! Webscope : “Comprehensive” Answers dataset: ~5M questions & answers.
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Satisfaction by Topic
Topic Questions
Answers
A per Q
Satisfied
Asker rating
Time to close by asker
2006 FIFA World Cup
1194 35,659
329.86
55.4%
2.63 47 minutes
Mental Health
151 1159 7.68 70.9%
4.30 1.5 days
Mathematics
651 2329 3.58 44.5%
4.48 33 minutes
Diet & Fitness
450 2436 5.41 68.4%
4.30 1.5 days
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Satisfaction Prediction: Human Judges
• Truth: asker’s rating• A random sample of 130 questions• Researchers
– Agreement: 0.82 F1: 0.45 2P*R/(P+R)
• Amazon Mechanical Turk– Five workers per question. – Agreement: 0.9 F1: 0.61 – Best when at least 4 out of 5 raters agree
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Performance: ASP vs. Humans (F1, Satisfied)
Classifier With Text Without Text Selected Features
ASP_SVM 0.69 0.72 0.62
ASP_C4.5 0.75 0.76 0.77
ASP_RandomForest
0.70 0.74 0.68
ASP_Boosting 0.67 0.67 0.67
ASP_NB 0.61 0.65 0.58
Best Human Perf
0.61
Baseline (random)
0.66
ASP is significantly more effective than humans
Human F1 is lower than the random baseline!
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Top Features by Information Gain
• 0.14 Q: Askers’ previous rating• 0.14 Q: Average past rating by
asker• 0.10 UH: Member since (interval)• 0.05 UH: Average # answers for by
past Q• 0.05 UH: Previous Q resolved for the
asker• 0.04 CA: Average asker rating for
category• 0.04 UH: Total number of answers
received…
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“Offline” vs. “Online” Prediction
• Offline prediction (AFTER answers arrive)– All features( question, answer, asker & category)– F1: 0.77
• Online prediction (BEFORE question posted)– NO answer features– Only asker history and question features (stars,
#comments, sum of votes…)– F1: 0.74
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Personalized Prediction of Satisfaction
Same information != same usefulness for different searchers!
Personalization vs. “Groupization”?
Y. Liu and E. Agichtein, You've Got Answers: Personalized Models for Predicting Success in Community Question Answering, ACL 2008
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Example Personalized Models
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Outline
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• Next generation of search: • Algorithmically mediated information exchange
• CQA: a case study in complex IRContent qualityAsker satisfaction
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Current Work (in Progress)• Partially supervised models of expertise
(Bian et al., WWW 2009)
• Real-time CQA
• Sentiment, temporal sensitivity analysis
• Understanding Social Media dynamics
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Answer Arrival
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5 10 15 20 25 30 35 40 45 50 55 600
100000
200000
300000
400000
500000
600000
700000
573086
378227
146845
7226046364 34573 27322 23194 19952 17260 15481 13985
First Hour (69%)
Time in minutes
Answer number arrived in < T
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Exponential Decay Model [Lerman 2007]
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Factors Influencing Dynamics
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Example: Answer Arrival | Category
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Subjectivity
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Answer, Rating Arrival
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Preliminary Results: Modeling SM Dynamics for Real-Time Classification
• Adapt SM dynamics models to classification
e.g.: predict ratings feature value:
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Outline
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• Next generation of search: • Algorithmically mediated information exchange
• CQA: a case study in complex IRContent qualityAsker satisfactionUnderstanding social media dynamics
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Goal: Query Processing over Web and Social Systems
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Takeaways
Robust machine learning over behavior data system improvements, insights into behavior
Contextualized models for NLP and text mining system improvements, insights into interactions
Mining social media: potential for transformative impact for IR, sociology, psychology, medical informatics, public health, …
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References • Modeling web search behavior [SIGIR 2006, 2007]• Estimating content quality [WSDM 2008]• Estimating contributor authority [CIKM 2007]• Searching CQA archives [WWW 2008, WWW 2009]• Inferring asker intent [EMNLP 2008]• Predicting satisfaction [SIGIR 2008, ACL 2008, TKDE]• Coping with spam [AIRWeb 2008]
More information, datasets, papers, slides:http://www.mathcs.emory.edu/~eugene/