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M ETA - PATH BASED M ULTI - N ETWORK C OLLECTIVE L INK P REDICTION Speaker: Jim-An Tsai Advisor: Jia-ling Koh Author: Jiawei Zhang, Philip S. Yu, Zhi-Hua.

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Presentation on theme: "M ETA - PATH BASED M ULTI - N ETWORK C OLLECTIVE L INK P REDICTION Speaker: Jim-An Tsai Advisor: Jia-ling Koh Author: Jiawei Zhang, Philip S. Yu, Zhi-Hua."— Presentation transcript:

1 M ETA - PATH BASED M ULTI - N ETWORK C OLLECTIVE L INK P REDICTION Speaker: Jim-An Tsai Advisor: Jia-ling Koh Author: Jiawei Zhang, Philip S. Yu, Zhi-Hua Zhou Date: 2015/6/18 Source: KDD’14 1

2 O UTLINE Introduction Framework Experiment Conclusion 2

3 M OTIVATION 3

4 P URPOSE 4

5 O UTLINE Introduction Framework Experiment Conclusion 5

6 M ULTI - NETWORK LINK PREDICTION PROBLEM 1. lack of features 2. partial alignment 3. network difference problem 4. simultaneous link prediction in multiple networks 6

7 M ULTI - NETWORK L INK I DENTIFIER 7

8 P ART OF MLI 1. Social meta path based feature extraction and selection 2. PU link prediction 3. Multi-network link prediction framework 8

9 S OCIAL META PATH BASED FEATURE EXTRACTION AND SELECTION 1. Intra-Network Social Meta Path 2. Social Meta Path based Features 3. Anchor Meta Path 4. Inter-Network Social Meta Paths 5. Social Meta Path Selection 9

10 I NTRA -N ETWORK S OCIAL M ETA P ATH 10

11 I NTRA -N ETWORK S OCIAL M ETA P ATH 11

12 I NTRA -N ETWORK S OCIAL M ETA P ATH 12

13 I NTER -N ETWORK S OCIAL M ETA P ATHS 13

14 S OCIAL M ETA P ATH S ELECTION 14 X : a feature extracted based on a meta path in Y: the label

15 PU LINK PREDICTION 15

16 M ULTI - NETWORK LINK PREDICTION FRAMEWORK 16

17 O UTLINE Introduction Framework Experiment Conclusion 17

18 D ATASETS 18

19 R ESULTS 19

20 R ESULTS 20

21 O UTLINE Introduction Framework Experiment Conclusion 21

22 C ONCLUSION We have studied the multi-network link prediction problems across partially aligned networks. An effective general link prediction framework, MLI, has been proposed to solve the problem. MLI can work very well in predicting social links in multiple partially aligned networks simultaneously. 22

23 T HANKS F OR L ISTENING 23


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