Multi-View Weighted Network

dc.contributor.advisor

Mukherjee, Sayan

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Yang, Xi

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2016-06-06T16:50:57Z

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2016-06-06T16:50:57Z

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2016

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Statistical and Economic Modeling

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Extensive investigation has been conducted on network data, especially weighted network in the form of symmetric matrices with discrete count entries. Motivated by statistical inference on multi-view weighted network structure, this paper proposes a Poisson-Gamma latent factor model, not only separating view-shared and view-specific spaces but also achieving reduced dimensionality. A multiplicative gamma process shrinkage prior is implemented to avoid over parameterization and efficient full conditional conjugate posterior for Gibbs sampling is accomplished. By the accommodating of view-shared and view-specific parameters, flexible adaptability is provided according to the extents of similarity across view-specific space. Accuracy and efficiency are tested by simulated experiment. An application on real soccer network data is also proposed to illustrate the model.

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https://hdl.handle.net/10161/12357

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Statistics

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Multi-View

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Network

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Weighted

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Multi-View Weighted Network

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Master's thesis

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