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Stop thinking, start tagging: Tag Semantics arise from  Collaborative Verbosity Christian Körner 1 , Dominik Benz 2 , Andreas Hotho 3 , Markus Strohmaier 1 , Gerd Stumme 2 1 Knowledge Management Institute and Know Center, Graz University of Technology, Austria 2 Knowledge and Data Engineering Group (KDE), University of Kassel, Germany 3 Data Mining and Information Retrieval Group University of Würzburg, Germany
Where do Semantics come from? ,[object Object],[object Object],[object Object],   Which factors influence emergence of semantics?    Do certain users contribute more than others?
The Story Emergent Tag  Semantics Pragmatics  of tagging Semantic  Implications  of Tagging Pragmatics Conclusions
Emergent Tag Semantics ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Tag Similarity Measures: Tag Context Similarity   ,[object Object],[object Object],[object Object],[object Object],design software blog web programming … JAVA    Will be used as indicator of emergent semantics! 50 10 1 30 5
Assessing the Quality of Tag Semantics JCN(t,t sim ) = 3.68 TagCont(t,t sim ) = 0.74 Folksonomy Tags = tag = synset WordNet Hierarchy Mapping Average JCN(t,t sim ) over all tags t: „ Quality  of semantics“
The Story Pragmatics  of tagging Semantic  Implications  of Tagging Pragmatics Conclusions Tag Similarity measures can capture  emergent tag semantics
Tagging motivation ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],donuts duff marge beer bart barty Duff-beer bev alc nalc beer wine
Tagging Pragmatics: Measures ,[object Object],[object Object],[object Object],[object Object],[object Object],high low
Tagging Pragmatics: Measures ,[object Object],[object Object],[object Object],high low
Tagging pragmatics: Limitations of measures ,[object Object],[object Object],[object Object],[object Object]
The Story Semantic  Implications  of Tagging Pragmatics Conclusions Tag Similarity measures can capture  emergent tag semantics Measures of  tagging pragmatics  differentiate users by tagging motivation
Influence of Tagging Pragmatics on Emergent Semantics ,[object Object],Extreme Categorizers Extreme Describers Complete folksonomy Subset of 30% categorizers = user
Experimental setup ,[object Object],[object Object],[object Object],[object Object],TagCont(t,t sim )= … JCN(t,t sim )= … DF 20 CF 5
Dataset ,[object Object],[object Object],[object Object],[object Object],140,333,714  18,782,132  667,128  2,454,546 ORIGINAL 96,298,409 12,125,176 100,363 9,944 MIN100RES 117,319,016 14,567,465 511,348 10,000 FULL |Y| |R| |U| |T| dataset
Results – adding Describers (DF i ) more describers better semantics Almost all sub-folksonomies are better than random-picked ones   40% of describers according to trr outperform complete data!  Optimal performance for  70% describers (trr)
Results – adding Categorizers (CF i ) better semantics more categorizers Almost all sub-folksonomies are worse than random-picked ones   Global optimum for 90% categorizers (tpp)    removing 10% most extreme describers! (Spammers?)
The Story Tag Similarity measures can capture  emergent tag semantics S ub-folksonomies  introduced by measures of pragmatics show different semantic qualities Conclusions Measures of  tagging pragmatics  differentiate users by tagging motivation
Summary & Conclusions ,[object Object],[object Object],[object Object],[object Object]
Guess who‘s a Categorizer from the authors  
Thanks for the attention! Questions? Be verbous   Tag Similarity measures can capture  emergent tag semantics S ub-folksonomies  introduced by measures of pragmatics show different semantic qualities Evidende of  causal link  between pragmatics and semantics of tagging! [email_address] [email_address] Measures of  tagging pragmatics  differentiate users by tagging motivation
References ,[object Object],[object Object],[object Object]

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Stop thinking, start tagging - Tag Semantics emerge from Collaborative Verbosity

  • 1. Stop thinking, start tagging: Tag Semantics arise from Collaborative Verbosity Christian Körner 1 , Dominik Benz 2 , Andreas Hotho 3 , Markus Strohmaier 1 , Gerd Stumme 2 1 Knowledge Management Institute and Know Center, Graz University of Technology, Austria 2 Knowledge and Data Engineering Group (KDE), University of Kassel, Germany 3 Data Mining and Information Retrieval Group University of Würzburg, Germany
  • 2.
  • 3. The Story Emergent Tag Semantics Pragmatics of tagging Semantic Implications of Tagging Pragmatics Conclusions
  • 4.
  • 5.
  • 6. Assessing the Quality of Tag Semantics JCN(t,t sim ) = 3.68 TagCont(t,t sim ) = 0.74 Folksonomy Tags = tag = synset WordNet Hierarchy Mapping Average JCN(t,t sim ) over all tags t: „ Quality of semantics“
  • 7. The Story Pragmatics of tagging Semantic Implications of Tagging Pragmatics Conclusions Tag Similarity measures can capture emergent tag semantics
  • 8.
  • 9.
  • 10.
  • 11.
  • 12. The Story Semantic Implications of Tagging Pragmatics Conclusions Tag Similarity measures can capture emergent tag semantics Measures of tagging pragmatics differentiate users by tagging motivation
  • 13.
  • 14.
  • 15.
  • 16. Results – adding Describers (DF i ) more describers better semantics Almost all sub-folksonomies are better than random-picked ones 40% of describers according to trr outperform complete data! Optimal performance for 70% describers (trr)
  • 17. Results – adding Categorizers (CF i ) better semantics more categorizers Almost all sub-folksonomies are worse than random-picked ones Global optimum for 90% categorizers (tpp)  removing 10% most extreme describers! (Spammers?)
  • 18. The Story Tag Similarity measures can capture emergent tag semantics S ub-folksonomies introduced by measures of pragmatics show different semantic qualities Conclusions Measures of tagging pragmatics differentiate users by tagging motivation
  • 19.
  • 20. Guess who‘s a Categorizer from the authors 
  • 21. Thanks for the attention! Questions? Be verbous  Tag Similarity measures can capture emergent tag semantics S ub-folksonomies introduced by measures of pragmatics show different semantic qualities Evidende of causal link between pragmatics and semantics of tagging! [email_address] [email_address] Measures of tagging pragmatics differentiate users by tagging motivation
  • 22.