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By: Tsoi Ho Keung Supervisor: Dr. Li Chen Co-Supervisor: Prof. Jiming Liu
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Title Understanding the Cultural Influence on Tagging Pattern
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Motivation Cultural originality determine/affect human behavior Examples: greeting method, table manner, and you name it… Cultural differences found in consumer behavior [1]. Western countries have individualism and a low context culture Eastern countries have collectivism and a high context culture How about tagging behavior? We are interested in exploring whether differences exist in this area. Reference: [1] Chau, P. Y. K., Cole, M., Massey, A. P., Montoya-Weiss, M. and O'Keefe, R. M. 2002. Cultural differences in the online behavior of consumers. Communications of the ACM 45 (10), 138-143.
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Introduction What is tag? User-created annotation, in the form of keywords, short-phrases, to describe a resource. What is the usage of assigning tags? Search, personal management goal Example systems Flickr, Last.FM, DEL.icio.us, Digg…
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Experimental Data (requirement) Two datasets Different target group Tagging-enabled Share common domain The following websites fulfilled our criteria SongTaste.com Last.FM
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Experimental Data (sources) SongTasteLast.FM Target user Chinese Popular in China (2.3M registered users) Song listening available Let users comment Different rankings Tag application Target user European Popular (30M registered users) Song listening available Let users comment Different rankings Tag application
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Experimental Data (Dataset) SongTasteLast.FM 200 popular songs(as at 6 th Dec, 09) 6,500 users applied at least 1 tag Avg. tags applied: 10.3 (SD 74.47) 200 popular songs(as at 6 th Dec, 09) 6,500 users applied at least 1 tag Avg. tags applied: 62.1 (SD 36.34)
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Research Questions RQ1: What is the tag agreement among friends in both cultures? RQ2: What is the tag agreement among members in both cultures? RQ3: What is the tag non-obviousness index in oriental users compare with western user? RQ4: How the tags classes distribution diverse from oriental users to western user?
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Metrics Evaluation method from [1] as baseline measurement t-test assuming unequal variances with a risk level(α) of 0.05 is used for comparing the datasets Reference: [1] U. Farooq, T. G. Kannampallil, Y. Song, C. H. Ganoe, J. M. Carroll, and L. Giles. Evaluating tagging behavior in social bookmarking systems: metrics and design heuristics. In GROUP ’07: Proceedings of the 2007 international ACM conference on Supporting group work, pages 351–360, New York, NY, USA, 2007. ACM.
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Tag Agreement among Friends & among Members RQ1: What is the tag agreement among friends in both cultures? RQ2: What is the tag agreement among members in both cultures?
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Tag Agreement among Friends & among Members Symmetric Jaccard Coefficient T user : the set of tags user applied T friend : the set of tags user’s friends applied
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Tag Agreement among Friends & among Members Friends Definition In both systems, user can explicitly state who their friends are. Members Definition Similarly, both systems allow users comment on a song. We define users who shared a common discussion maintain a membership
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Tag Agreement among Friends & among Members SongTasteLast.FMP value (t-test) Among Friends0.00060.1106 Among Members0.00210.0973 ۚۚ t-Test: Paired Two Sample for Means, p-value less than 0.05 is significant p< 0.05 (t=1.96)
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Tag non-obviousness RQ3: What is the tag non-obviousness index in oriental users compare with western user? Definition: The ratio of tags not appear in the content to the total number of tags of that item To access the usefulness of a tag
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Tag non-obviousness Formally, we have to evaluate this property (t=2.60, p = 0.004) SongTasteLast.FM Non-obviousness93%95%
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Tag Classes Distribution RQ4: How the tags classes distribution diverse from oriental users to western user? Another 200 songs common in both systems are considered Classify the tags into different categories Two classification schemes
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Tag Classes Distribution Examples of the three categories Examples of the seven categories
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Tag Classes Distribution Three Categories p-value Factual0.0002 Personal0.7183 Subjective3.79 x 10 -11 Remarks: These are average percentage
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Tag Classes Distribution Seven Categories p-value Cat.17.6 x 10 -7 Cat.20.4043 Cat.3NA Cat.40.005 Cat.51 x 10 -9 Cat.60.6235 Cat.70.0064 Remarks: These are average percentage
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Conclusion The two cultures exhibit different tagging behavior!!! PropertyDifference What is the tag agreement among friends in both cultures?√ What is the tag agreement among members in both cultures?√ What is the tag non-obviousness index in oriental users compare with western user? √ How the tags classes distribution diverse from oriental users to western user? √
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What’s next? Bearing the different tagging patterns in mind, we can.. Develop cultural-aware tag recommender system and; Provide tailor-made tag recommendation based on users’ cultural originality and; much more…
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Coming Soon… Cultural-aware Semantic Map based on SOM Tag Recommender
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Question & Answer Thank you
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