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Daniel




Data By The People, For The People
Daniel Tunkelang
Director, Data Science
LinkedIn
      Recruiting Solutions            1
Why do 175M+ people use LinkedIn?




                                    2
Identity: find and be found




                              3
Insights: discover and share knowledge




                                         4
People use LinkedIn because of other people.




                                          5
People as Users + People as Data



 Unique opportunities and challenges!
 §  Search
 §  Recommendations
 §  Networking




                                        6
Search




         7
People search is personal!




                             8
But not all relevance factors are personal.

        Good                     Bad




                                              9
People are semi-structured objects.




  for i in [1..n]!
    s ← w 1 w 2 … w i!
    if Pc(s) > 0!
      a ← new Segment()!
      a.segs ← {s}!
      a.prob ← Pc(s)!
      B[i] ← {a}!
    for j in [1..i-1]!
       for b in B[j]!
         s ← wj wj+1 … wi!
         if Pc(s) > 0!
            a ← new Segment()!
            a.segs ← b.segs U {s}!
            a.prob ← b.prob * Pc(s)!
            B[i] ← B[i] U {a}!
     sort B[i] by prob!
     truncate B[i] to size k!



                                       10
LinkedIn uses scale to derive structure.




                                Software
                                Developer


                                            11
Social network is more than a ranking signal.




                                            12
People are a gateway to other entities.




                                          13
Search: Summary




        People finding people.
        People being found.
        People finding content.
        Through other people.
                                  14
Recommendations




                  15
Recommendation products at LinkedIn
                             Similar Profiles




                                  Connections




           Network updates
                                    Events You May
                                    Be Interested In




                                 News




                                                       16
LinkedIn’s recommender ecosystem
Recommendations drive:
> 50% of connections
            > 50% of job applications
                         > 50% of group joins




                                            17
Inputs for recommender systems
                Social Graph
 Content

                                 Behavior

                                     Queries
                                 Page Views
                                    Actions




           …
                                               18
Jobs You Might Be Interested In




                                  19
How LinkedIn matches people to jobs
              Job                                             Corpus Stats
                                           Matching   Transition probabilities
                                                      Connectivity
                                   Binary             yrs of experience to reach title
title         industry       …
                                     Exact matches:   education needed for this title
geo           description                             …
company       functional area        geo, industry,
                                     …

          User Base                Soft                              Similarity
                                                        (candidate expertise, job description)
                                     transition
           Filtered                                                    0.56
                                     probabilities,
                                                                     Similarity
          Candidate                  similarity,       (candidate specialties, job description)
                                     …                                  0.2
                                                               Transition probability
                                   Text                   (candidate industry, job industry)
General       Current Position                                         0.43
expertise     title
specialties   summary                                               Title Similarity

education     tenure length                                             0.8
headline      industry
                                                              Similarity (headline, title)
geo           functional area
experience    …                                                         0.7
                                                                          .
                      derive
                               d
                                                                          .
                                                                          .
                                                                                             20
Is job-hunting socially contagious?




                                      [Posse, 2012]




                                                      21
Social referral
Suggest based on connection strength
and relevance to target user.

                         2x conversion!




                               [Amin et al, 2012]

                                                    22
Suggested skill endorsements




                               23
Recommendations: Summary




  Content is king.
  Connections provide social dimension.
  Context determines where and when
  a recommendation is appropriate.
                                          24
Networking




             25
People You May Know




                      26
Closing the triangles
                         Carol
           Alice          ?
                        Bob
§  Triads suggest and affect relationships.
    [Simmel, 1908], [Granovetter, 1973]

§  Triangle closing is a Big Data problem.
    [Shah, 2011]

§  Use machine learning to rank candidates.
                                               27
Shared connections as a signal




                                 28
Power of social proof




                        29
More power of social proof




        …




                             30
Networking: Summary




  Close triangles to suggest connections.
  Connections as social proof.
  Unleash the power of weak ties.

                                            31
Conclusion

§  People use LinkedIn because of other people.
§  Primary use cases:
    – Find and be found.
    – Discover and share knowledge.
§  People are at the heart of LinkedIn’s products:
    – Search
    – Recommendations
    – Networking

                                                  32
Thank You!
                                     175M+           2/sec
                                     62% non U.S.


                                                    25th
                               90          We’re    Most visit website worldwide
                                                    (Comscore 6-12)



                          55
                                          Hiring!   >2M
                                                    Company pages



                                                    85%
                    32

               17
           8
 2    4                                             Fortune 500 Companies use
                                                    LinkedIn to hire
2004 2005 2006 2007 2008 2009 2010 2011
          LinkedIn Members (Millions)



          Learn more at http://data.linkedin.com/
                                                                                   33

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Data By The People, For The People

  • 1. Daniel Data By The People, For The People Daniel Tunkelang Director, Data Science LinkedIn Recruiting Solutions 1
  • 2. Why do 175M+ people use LinkedIn? 2
  • 3. Identity: find and be found 3
  • 4. Insights: discover and share knowledge 4
  • 5. People use LinkedIn because of other people. 5
  • 6. People as Users + People as Data Unique opportunities and challenges! §  Search §  Recommendations §  Networking 6
  • 7. Search 7
  • 8. People search is personal! 8
  • 9. But not all relevance factors are personal. Good Bad 9
  • 10. People are semi-structured objects. for i in [1..n]! s ← w 1 w 2 … w i! if Pc(s) > 0! a ← new Segment()! a.segs ← {s}! a.prob ← Pc(s)! B[i] ← {a}! for j in [1..i-1]! for b in B[j]! s ← wj wj+1 … wi! if Pc(s) > 0! a ← new Segment()! a.segs ← b.segs U {s}! a.prob ← b.prob * Pc(s)! B[i] ← B[i] U {a}! sort B[i] by prob! truncate B[i] to size k! 10
  • 11. LinkedIn uses scale to derive structure. Software Developer 11
  • 12. Social network is more than a ranking signal. 12
  • 13. People are a gateway to other entities. 13
  • 14. Search: Summary People finding people. People being found. People finding content. Through other people. 14
  • 16. Recommendation products at LinkedIn Similar Profiles Connections Network updates Events You May Be Interested In News 16
  • 17. LinkedIn’s recommender ecosystem Recommendations drive: > 50% of connections > 50% of job applications > 50% of group joins 17
  • 18. Inputs for recommender systems Social Graph Content Behavior Queries Page Views Actions … 18
  • 19. Jobs You Might Be Interested In 19
  • 20. How LinkedIn matches people to jobs Job Corpus Stats Matching Transition probabilities Connectivity Binary yrs of experience to reach title title industry … Exact matches: education needed for this title geo description … company functional area geo, industry, … User Base Soft Similarity (candidate expertise, job description) transition Filtered 0.56 probabilities, Similarity Candidate similarity, (candidate specialties, job description) … 0.2 Transition probability Text (candidate industry, job industry) General Current Position 0.43 expertise title specialties summary Title Similarity education tenure length 0.8 headline industry Similarity (headline, title) geo functional area experience … 0.7 . derive d . . 20
  • 21. Is job-hunting socially contagious? [Posse, 2012] 21
  • 22. Social referral Suggest based on connection strength and relevance to target user. 2x conversion! [Amin et al, 2012] 22
  • 24. Recommendations: Summary Content is king. Connections provide social dimension. Context determines where and when a recommendation is appropriate. 24
  • 26. People You May Know 26
  • 27. Closing the triangles Carol Alice ? Bob §  Triads suggest and affect relationships. [Simmel, 1908], [Granovetter, 1973] §  Triangle closing is a Big Data problem. [Shah, 2011] §  Use machine learning to rank candidates. 27
  • 28. Shared connections as a signal 28
  • 29. Power of social proof 29
  • 30. More power of social proof … 30
  • 31. Networking: Summary Close triangles to suggest connections. Connections as social proof. Unleash the power of weak ties. 31
  • 32. Conclusion §  People use LinkedIn because of other people. §  Primary use cases: – Find and be found. – Discover and share knowledge. §  People are at the heart of LinkedIn’s products: – Search – Recommendations – Networking 32
  • 33. Thank You! 175M+ 2/sec 62% non U.S. 25th 90 We’re Most visit website worldwide (Comscore 6-12) 55 Hiring! >2M Company pages 85% 32 17 8 2 4 Fortune 500 Companies use LinkedIn to hire 2004 2005 2006 2007 2008 2009 2010 2011 LinkedIn Members (Millions) Learn more at http://data.linkedin.com/ 33