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Semiparametric differential graph models

Publication ,  Conference
Xu, P; Gu, Q
Published in: Advances in Neural Information Processing Systems
January 1, 2016

In many cases of network analysis, it is more attractive to study how a network varies under different conditions than an individual static network. We propose a novel graphical model, namely Latent Differential Graph Model, where the networks under two different conditions are represented by two semiparametric elliptical distributions respectively, and the variation of these two networks (i.e., differential graph) is characterized by the difference between their latent precision matrices. We propose an estimator for the differential graph based on quasi likelihood maximization with nonconvex regularization. We show that our estimator attains a faster statistical rate in parameter estimation than the state-of-the-art methods, and enjoys the oracle property under mild conditions. Thorough experiments on both synthetic and real world data support our theory.

Duke Scholars

Published In

Advances in Neural Information Processing Systems

ISSN

1049-5258

Publication Date

January 1, 2016

Start / End Page

1072 / 1080

Related Subject Headings

  • 4611 Machine learning
  • 1702 Cognitive Sciences
  • 1701 Psychology
 

Citation

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MLA
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Xu, P., & Gu, Q. (2016). Semiparametric differential graph models. In Advances in Neural Information Processing Systems (pp. 1072–1080).
Xu, P., and Q. Gu. “Semiparametric differential graph models.” In Advances in Neural Information Processing Systems, 1072–80, 2016.
Xu P, Gu Q. Semiparametric differential graph models. In: Advances in Neural Information Processing Systems. 2016. p. 1072–80.
Xu, P., and Q. Gu. “Semiparametric differential graph models.” Advances in Neural Information Processing Systems, 2016, pp. 1072–80.
Xu P, Gu Q. Semiparametric differential graph models. Advances in Neural Information Processing Systems. 2016. p. 1072–1080.

Published In

Advances in Neural Information Processing Systems

ISSN

1049-5258

Publication Date

January 1, 2016

Start / End Page

1072 / 1080

Related Subject Headings

  • 4611 Machine learning
  • 1702 Cognitive Sciences
  • 1701 Psychology