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Nonparametric Latent Feature Models for Link Prediction

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LFRM outperforms IRM and MMSB with proper initialization. 234 authors who published with the most other people in NIPS 1-17 are used, and ... – PowerPoint PPT presentation

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Title: Nonparametric Latent Feature Models for Link Prediction


1
Nonparametric Latent Feature Modelsfor Link
Prediction
  • Kurt T. Miller, Thomas L. Griffiths, Michael I.
    Jordan
  • NIPS 2009
  • Presented by Minhua Chen, 06.04.2010.

2
Problem Formulation
  • Link prediction in Social Network (Binary Matrix
    completion)

1 0 ? ?
0 1 ? 0
1 ? 1 ?
0 1 0 1
Y
Yij 1 person i is linked to person j. Yij
0 person i is not linked to person j. Yij ?
unobserved entry to be filled in.
  • Linkage can stand for different relations,
    e.g., friends or not, colleagues or not.
  • If the network is a directed graph, then Y can
    be asymmetric.
  • Observed entries auxiliary information
    (optional) ? unobserved entries

3
Methods
  • Class-based model
  • Entities are clustered into classes.
  • Linkage is determined by which classes they
    belong to.
  • Models Infinite Relational Model (IRM)
  • Mixed Membership Stochastic
    Blockmodel (MMSB)
  • Disadvantage clustering description is too
    coarse, not expressive.
  • Latent-feature model
  • Interactions between latent-features
    determine the linkage.
  • This paper extends it to a nonparametric
    model using IBP.
  • Number of latent features can be inferred as
    well as their interactions.

4
Model
  • Define Z to be a binary NK matrix with N people
    and K latent features.
  • Define W to be a KK weighting matrix for the K
    latent features.
  • The model is
  • Or expressed in more details

5
Results on Synthetic Data
(c) Ground truth of Z (d) Generated
Y (e) Inferred Z Although the
missing values are imputed correctly, the
inferred Z is different from ground truth. This
indicates that the model is unidentifiable.
6
Results on Multi-Task Data
  • The Countries data contains 54 relation matrices
    among 14 countries, along with 90 given
    covariates.
  • The Alyawarra data contains 26 kinship
    relationship matrices of 104 people in the
    Alyawarra tribe in Central Australia.
  • For each dataset, 80 of the data is used for
    training and the rest 20 is used for testing.
  • LFRM outperforms IRM and MMSB with proper
    initialization.

7
Results on Single-Task Data
AUC performance
LFRM w/IRM 0.9509
LFRM rand 0.9466
IRM 0.8906
MMSB 0.8705
  • 234 authors who published with the most other
  • people in NIPS 1-17 are used, and their
  • coauthorship matrix is constructed.
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