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Looking for Experts? What can Linked Data do for you? Milan Stankovic    Claudia Wagner    Jelena Jovanovic    Philippe Laublet
Can it serve to find experts?
determine general needs for expert search what are the obstacles for expert search on LOD determine useful sources for expert search
How do we search for experts in general? different data corpuses different approach list of experts expertise hypothesis
If a user wrote a scientific publication on topic X than he is an expert on topic X.  If a user wrote a Wikipedia page on topic X than he is an expert on topic X.  If a user edited or revised a document about topic X on a collaborative shared online workspace, then he might be expert on topic X.  If a user blogs a lot about topic X, then he might be an expert for topic X.  If a user has lower entropy of interests, where topic X is a primary interest, then he is a better expert on topic X.  If a user has a lot of e-mails on topic X than he is an expert on topic X.  If the user has resources/documents on topic X then he is an expert on topic X.   If a user has subscription to feeds on topic X, then he is an expert in topic X.  If a user participates in a Q&A community on a topic X then he is an expert on the topic X.  If a user answers questions from experts than he might himself be an expert --> The more the user asking a question in a Q&A community is expert, the more significant is the expertise of the user giving the answer.  If a user participates lots of email conversations about topic X than he might be an expert.  If a user answers lots of questions about topic X then he is an expert on topic X.  If the user discovers (and shares) "important/good" resources (i.e. resources which become later popular) on topic X, then he is an expert on topic X.  If the user is among the first to find and share a good resource on topic X, then he is among the best experts on topic X.  If the user participates in collaborative software development project then he might be an expert in the programming language that is used in the project.  If a user claims in his resume/CV that he is skilled in a topic than he might be expert . If a user has obtained funded research grants in a certain (domain) field, then he is an expert in that field.
If the user wrote a paper saved a bookmark saved a bookmark before the others was retweeted  on TopicX then he/she is an expert then he/she is a better ranked expert on TopicX Expertise Hypothesis Expert Candidate Expertise Evidence Expertise Topic hypothesis
Expertise Hypothesis Expert Candidate Expertise Evidence Expertise Topic Activities Reputation & Authority Content related to the user Attending professional events, Roles on events, Experience, Projects, Bookmarking … Social Connectedness, Blog popularity, … Blogs, Publications, Wikipedia Articles, …
Test Cases T1: Does LOD contain data sets with the type of data needed for a certain hypothesis? T2: Are there relevant data in the concerned data sets? T3: Are there any links to the topics of competence? T4: Are there any links to the user data sources? Topic
hypothesis  related to content created by user Test Results : Content T1: Does LOD contain data sets with the type of data needed for a certain hypothesis? T2: Are there relevant data in the concerned data sets? T3: Are there any links to the topics of competence? T4: Are there any links to the user data sources? Topic H1: If a user wrote a scientific publication on topic X than he might be an expert on topic X + + +- + H2: If a user wrote a Wikipedia page on topic X than he might be an expert on topic X. + + + - H3: If a user blogs a lot about topic X, then he might be an expert for topic X + + +- +-
hypothesis  related to users’ online activities Test Results: Online Activities T1: Does LOD contain data sets with the type of data needed for a certain hypothesis? T2: Are there relevant data in the concerned data sets? T3: Are there any links to the topics of competence? T4: Are there any links to the user data sources? Topic H4: If a user answers questions (on topic X) from experts on topic X then he might himself be an expert on topic X + - - - H5: If a user is among the first to discover (and share) "important/good" resources (i.e. resources which become later popular) on topic X, then he might be an expert on topic X. + - + - H6: If a user participates in collaborative software development project then he might be an expert in the programming language that is used in the project. + + +- +-
hypothesis  related to users’ offline activities & achivements Test Results: Offline Activities T1: Does LOD contain data sets with the type of data needed for a certain hypothesis? T2: Are there relevant data in the concerned data sets? T3: Are there any links to the topics of competence? T4: Are there any links to the user data sources? Topic H7 If a user claims in his resume/CV that he is skilled in a topic X than he might be expert in topic X. - - - - H8: If a user has obtained funded research grants in a certain (domain) field, then he might be an expert in that field. + + - + H9: If a user has a certain position in company then he might be an expert on the topic related to his position. + - - +- H10: If a user supervises/teaches someone then he might be an expert on the topic he/she teaches. - - - - H11: If a user has several years of experience with working on something related to topic X then he might be an expert in topic X. - - - - H12: If a user is a member of the organization committee of a professional event, then he might be expert on the topic of the event. + + - + H13: If a user is giving a keynote or invited talk at a professional event, then he can be considered an expert in the domain topic of the event. + + - + H14: If a user is a chair of a session within a professional event, then he can be considered an expert in the topic of the session (and by generalization, also an expert in the domain topic of the event). + + - + H15: If a user is presenting within a session of a professional event, then he can be considered an expert in the topic his presentation is about. By generalizing, he can be considered an expert in the topic of the session/event his presentation is part of. + + - +
hypothesis  related to users’ reputation Test Results: Reputation T1: Does LOD contain data sets with the type of data needed for a certain hypothesis? T2: Are there relevant data in the concerned data sets? T3: Are there any links to the topics of competence? T4: Are there any links to the user data sources? Topic H17: If a user’s blog about a topic X gets lost of comments, then he might be an expert for topic X. + + +- +- H18: If a user has higher social connectedness with an expert in topic X, then he is considered to be a better expert in topic X + + +- +- H17: If a user’s blog about a topic X gets lost of comments, then he might be an expert for topic X. + + +- +-
Some Benefits Traditional Approaches Lineked Data hypothesis-first data-first data bound to a specific approach data reusable, multiple perspectives difficult to adapt easy to adapt to changes in hypothesis and user behavior data source limited one query rules them all
Some Issues with the Current LOD    Usage Restricted and Private Data    Lack of Data    Lack of Details in the Data    Lack of Interlinks :    to Topics    to User Data    equivalence of Trace data
Not just a critique, but a call for action!
Some Ideas    Lack of Data    Lack of Details in the Data    Lack of Interlinks : Mailing Lists, Q&A sites, Podcasts, More Events like SemanticWeb.org, Extracting Activities from Twitter Guidelines, Validators for data compleetness, Pedantic Web Group,  insist on VoID descriptions automatic: Zemanta, Open Calais;  crowdsourcing: Silk, Uberblick and alike…
Thank you for your attention. [email_address]

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Looking for Experts? What can Linked Data do for You?

  • 1. Looking for Experts? What can Linked Data do for you? Milan Stankovic  Claudia Wagner  Jelena Jovanovic  Philippe Laublet
  • 2. Can it serve to find experts?
  • 3. determine general needs for expert search what are the obstacles for expert search on LOD determine useful sources for expert search
  • 4. How do we search for experts in general? different data corpuses different approach list of experts expertise hypothesis
  • 5. If a user wrote a scientific publication on topic X than he is an expert on topic X. If a user wrote a Wikipedia page on topic X than he is an expert on topic X. If a user edited or revised a document about topic X on a collaborative shared online workspace, then he might be expert on topic X.  If a user blogs a lot about topic X, then he might be an expert for topic X. If a user has lower entropy of interests, where topic X is a primary interest, then he is a better expert on topic X. If a user has a lot of e-mails on topic X than he is an expert on topic X. If the user has resources/documents on topic X then he is an expert on topic X. If a user has subscription to feeds on topic X, then he is an expert in topic X. If a user participates in a Q&A community on a topic X then he is an expert on the topic X. If a user answers questions from experts than he might himself be an expert --> The more the user asking a question in a Q&A community is expert, the more significant is the expertise of the user giving the answer. If a user participates lots of email conversations about topic X than he might be an expert. If a user answers lots of questions about topic X then he is an expert on topic X. If the user discovers (and shares) "important/good" resources (i.e. resources which become later popular) on topic X, then he is an expert on topic X. If the user is among the first to find and share a good resource on topic X, then he is among the best experts on topic X. If the user participates in collaborative software development project then he might be an expert in the programming language that is used in the project. If a user claims in his resume/CV that he is skilled in a topic than he might be expert . If a user has obtained funded research grants in a certain (domain) field, then he is an expert in that field.
  • 6. If the user wrote a paper saved a bookmark saved a bookmark before the others was retweeted on TopicX then he/she is an expert then he/she is a better ranked expert on TopicX Expertise Hypothesis Expert Candidate Expertise Evidence Expertise Topic hypothesis
  • 7. Expertise Hypothesis Expert Candidate Expertise Evidence Expertise Topic Activities Reputation & Authority Content related to the user Attending professional events, Roles on events, Experience, Projects, Bookmarking … Social Connectedness, Blog popularity, … Blogs, Publications, Wikipedia Articles, …
  • 8. Test Cases T1: Does LOD contain data sets with the type of data needed for a certain hypothesis? T2: Are there relevant data in the concerned data sets? T3: Are there any links to the topics of competence? T4: Are there any links to the user data sources? Topic
  • 9. hypothesis related to content created by user Test Results : Content T1: Does LOD contain data sets with the type of data needed for a certain hypothesis? T2: Are there relevant data in the concerned data sets? T3: Are there any links to the topics of competence? T4: Are there any links to the user data sources? Topic H1: If a user wrote a scientific publication on topic X than he might be an expert on topic X + + +- + H2: If a user wrote a Wikipedia page on topic X than he might be an expert on topic X. + + + - H3: If a user blogs a lot about topic X, then he might be an expert for topic X + + +- +-
  • 10. hypothesis related to users’ online activities Test Results: Online Activities T1: Does LOD contain data sets with the type of data needed for a certain hypothesis? T2: Are there relevant data in the concerned data sets? T3: Are there any links to the topics of competence? T4: Are there any links to the user data sources? Topic H4: If a user answers questions (on topic X) from experts on topic X then he might himself be an expert on topic X + - - - H5: If a user is among the first to discover (and share) "important/good" resources (i.e. resources which become later popular) on topic X, then he might be an expert on topic X. + - + - H6: If a user participates in collaborative software development project then he might be an expert in the programming language that is used in the project. + + +- +-
  • 11. hypothesis related to users’ offline activities & achivements Test Results: Offline Activities T1: Does LOD contain data sets with the type of data needed for a certain hypothesis? T2: Are there relevant data in the concerned data sets? T3: Are there any links to the topics of competence? T4: Are there any links to the user data sources? Topic H7 If a user claims in his resume/CV that he is skilled in a topic X than he might be expert in topic X. - - - - H8: If a user has obtained funded research grants in a certain (domain) field, then he might be an expert in that field. + + - + H9: If a user has a certain position in company then he might be an expert on the topic related to his position. + - - +- H10: If a user supervises/teaches someone then he might be an expert on the topic he/she teaches. - - - - H11: If a user has several years of experience with working on something related to topic X then he might be an expert in topic X. - - - - H12: If a user is a member of the organization committee of a professional event, then he might be expert on the topic of the event. + + - + H13: If a user is giving a keynote or invited talk at a professional event, then he can be considered an expert in the domain topic of the event. + + - + H14: If a user is a chair of a session within a professional event, then he can be considered an expert in the topic of the session (and by generalization, also an expert in the domain topic of the event). + + - + H15: If a user is presenting within a session of a professional event, then he can be considered an expert in the topic his presentation is about. By generalizing, he can be considered an expert in the topic of the session/event his presentation is part of. + + - +
  • 12. hypothesis related to users’ reputation Test Results: Reputation T1: Does LOD contain data sets with the type of data needed for a certain hypothesis? T2: Are there relevant data in the concerned data sets? T3: Are there any links to the topics of competence? T4: Are there any links to the user data sources? Topic H17: If a user’s blog about a topic X gets lost of comments, then he might be an expert for topic X. + + +- +- H18: If a user has higher social connectedness with an expert in topic X, then he is considered to be a better expert in topic X + + +- +- H17: If a user’s blog about a topic X gets lost of comments, then he might be an expert for topic X. + + +- +-
  • 13. Some Benefits Traditional Approaches Lineked Data hypothesis-first data-first data bound to a specific approach data reusable, multiple perspectives difficult to adapt easy to adapt to changes in hypothesis and user behavior data source limited one query rules them all
  • 14. Some Issues with the Current LOD  Usage Restricted and Private Data  Lack of Data  Lack of Details in the Data  Lack of Interlinks :  to Topics  to User Data  equivalence of Trace data
  • 15. Not just a critique, but a call for action!
  • 16. Some Ideas  Lack of Data  Lack of Details in the Data  Lack of Interlinks : Mailing Lists, Q&A sites, Podcasts, More Events like SemanticWeb.org, Extracting Activities from Twitter Guidelines, Validators for data compleetness, Pedantic Web Group, insist on VoID descriptions automatic: Zemanta, Open Calais; crowdsourcing: Silk, Uberblick and alike…
  • 17. Thank you for your attention. [email_address]

Notes de l'éditeur

  1. What allows us to focus on a certain snapshot of LOD and still get useful resutls. We seek in fact to evaluate current state in order to draw general insights.