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What Is the Added Value of Negative
Links in Online Social Networks?
Jérôme Kunegis, Julia Preusse, Felix Schwagereit
Institute for Web Science and Technologies (WeST), University of Koblenz–Landau
We thank Paolo Massa for providing the Epinions dataset. The research leading to these results has received funding from the
European Community's Seventh Framework Programme under grant agreement n° 257859, ROBUST.
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 2
Social Networks: Ties between People
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 3
Some People Don't Like Each Other
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 4
Real Social Networks Contain Negative Ties
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 5
Online Social Networks Have Many Forms of Positive Links
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 6
Where Are the Negative Ties?
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 7
They Are on Slashdot.org
79,120 users; 392,326 positive ties; 123,255 negative ties
http://konect.uni-koblenz.de/test/networks/slashdot-zoo
[1] J. Kunegis, A. Lommatzsch, C. Bauckhage. The Slashdot Zoo: Mining a Social
Network with Negative Edges. In Proc. WWW, pages 741– 750, 2009.
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 8
And Epinions.com
131,828 users; 717,667 positive ties; 123,705 negative ties
http://konect.uni-koblenz.de/networks/epinions
[2] P. Massa, P. Avesani. Controversial users demand local trust metrics: an
experimental study on epinions.com community. In Proc. AAAI, pages 121– 126, 2005.
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 9
What Is the Added Value of Negative Links?
Pro: More information about the community
Con: More negativity in the community
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 10
Pro: More information about the community
Really?
What Is the Added Value of Negative Links?
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 11
Our Idea
If negative links can be predicted from positive ones, then
negative links do not
bring any added
value to the network
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 12
Machine Learning Task
Prediction
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 13
Related Problem: Prediction of Future Ties (Link Prediction)
Prediction
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 14
Indicators for Link Prediction
?
Neighborhood-basedCentrality-based
➔Common neighbors
➔Cosine similarity
➔Jaccard coefficient
➔Adamic–Adar
➔Exponential/Neuman graph kernel
➔Paths of length 3
➔Degree
➔PageRank
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 15
Centrality-based Indicators
Degree
PageRank
u v
f(u, v) = d(u) d(v)
f(u, v) = PR(u) PR(v)
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 16
Neighborhood-based Indicators
Common neighbors
Jaccard index
Cosine similarity
A
B
u v
f(u, v) = |A Ո B|
f(u, v) = |A Ո B| / |A U B|
f(u, v) = |A Ո B| / sqrt(|A| |B|)
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 17
Link Prediction: Edge vs No Edge
?
tie
no tie
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 18
Our Task: Positive Edge vs Negative Edge vs No Edge
?
pos. tie
neg. tie
no tie
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 19
A Good and Simple Idea Which Does Not Work
?
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 20
Learning Feature Weights by Regression
Dataset Degree PageRank Common
neighbors
Paths of
length 3
Cosine
similarity
Slashdot 0.2502 0.2321 −0.5411 −0.4866 −3.9434
Epinions −0.0105 0.8498 −0.8587 −0.3827 −5.0360
Centrality-based Neighborhood-based
Preferential
attachment
holds for
negative edges
Conflict
is avoided
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 21
Measuring Prediction Accuracy
(1) Neg-tie vs Pos-tie + No-tie
(2) Neg-tie vs No-tie
(3) Neg-tie vs Pos-tie
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 22
Prediction Accuracy
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 23
Let's Look at the Data
Slashdot Epinions
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 24
Combine PageRank and Cosine Similarity
f = ® ({ ) − ¯ log(cos)
log(PR) if cos = 0
min(log(PR)) otherwise
Slashdot Epinions
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 25
Evaluation
All >0.5
Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 26
How Much Better Does It Get If We Have Negative Links?
The “enemy” function
adds 0.05 points
of AUC to knowing
negative ties
http://konect.uni-koblenz.de/
Add a (positive?) link to me on Twitter!
@kunegis
Thank You!

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What Is the Added Value of Negative Links in Online Social Networks?

  • 1. What Is the Added Value of Negative Links in Online Social Networks? Jérôme Kunegis, Julia Preusse, Felix Schwagereit Institute for Web Science and Technologies (WeST), University of Koblenz–Landau We thank Paolo Massa for providing the Epinions dataset. The research leading to these results has received funding from the European Community's Seventh Framework Programme under grant agreement n° 257859, ROBUST.
  • 2. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 2 Social Networks: Ties between People
  • 3. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 3 Some People Don't Like Each Other
  • 4. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 4 Real Social Networks Contain Negative Ties
  • 5. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 5 Online Social Networks Have Many Forms of Positive Links
  • 6. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 6 Where Are the Negative Ties?
  • 7. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 7 They Are on Slashdot.org 79,120 users; 392,326 positive ties; 123,255 negative ties http://konect.uni-koblenz.de/test/networks/slashdot-zoo [1] J. Kunegis, A. Lommatzsch, C. Bauckhage. The Slashdot Zoo: Mining a Social Network with Negative Edges. In Proc. WWW, pages 741– 750, 2009.
  • 8. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 8 And Epinions.com 131,828 users; 717,667 positive ties; 123,705 negative ties http://konect.uni-koblenz.de/networks/epinions [2] P. Massa, P. Avesani. Controversial users demand local trust metrics: an experimental study on epinions.com community. In Proc. AAAI, pages 121– 126, 2005.
  • 9. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 9 What Is the Added Value of Negative Links? Pro: More information about the community Con: More negativity in the community
  • 10. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 10 Pro: More information about the community Really? What Is the Added Value of Negative Links?
  • 11. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 11 Our Idea If negative links can be predicted from positive ones, then negative links do not bring any added value to the network
  • 12. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 12 Machine Learning Task Prediction
  • 13. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 13 Related Problem: Prediction of Future Ties (Link Prediction) Prediction
  • 14. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 14 Indicators for Link Prediction ? Neighborhood-basedCentrality-based ➔Common neighbors ➔Cosine similarity ➔Jaccard coefficient ➔Adamic–Adar ➔Exponential/Neuman graph kernel ➔Paths of length 3 ➔Degree ➔PageRank
  • 15. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 15 Centrality-based Indicators Degree PageRank u v f(u, v) = d(u) d(v) f(u, v) = PR(u) PR(v)
  • 16. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 16 Neighborhood-based Indicators Common neighbors Jaccard index Cosine similarity A B u v f(u, v) = |A Ո B| f(u, v) = |A Ո B| / |A U B| f(u, v) = |A Ո B| / sqrt(|A| |B|)
  • 17. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 17 Link Prediction: Edge vs No Edge ? tie no tie
  • 18. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 18 Our Task: Positive Edge vs Negative Edge vs No Edge ? pos. tie neg. tie no tie
  • 19. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 19 A Good and Simple Idea Which Does Not Work ?
  • 20. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 20 Learning Feature Weights by Regression Dataset Degree PageRank Common neighbors Paths of length 3 Cosine similarity Slashdot 0.2502 0.2321 −0.5411 −0.4866 −3.9434 Epinions −0.0105 0.8498 −0.8587 −0.3827 −5.0360 Centrality-based Neighborhood-based Preferential attachment holds for negative edges Conflict is avoided
  • 21. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 21 Measuring Prediction Accuracy (1) Neg-tie vs Pos-tie + No-tie (2) Neg-tie vs No-tie (3) Neg-tie vs Pos-tie
  • 22. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 22 Prediction Accuracy
  • 23. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 23 Let's Look at the Data Slashdot Epinions
  • 24. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 24 Combine PageRank and Cosine Similarity f = ® ({ ) − ¯ log(cos) log(PR) if cos = 0 min(log(PR)) otherwise Slashdot Epinions
  • 25. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 25 Evaluation All >0.5
  • 26. Jérôme Kunegis et al. What Is the Added Value of Negative Links in Online Social Networks? 26 How Much Better Does It Get If We Have Negative Links? The “enemy” function adds 0.05 points of AUC to knowing negative ties
  • 27. http://konect.uni-koblenz.de/ Add a (positive?) link to me on Twitter! @kunegis Thank You!