Gaussian determinantal processes: A new model for directionality in data

Author:

Ghosh SubhroshekharORCID,Rigollet PhilippeORCID

Abstract

Determinantal point processes (DPPs) have recently become popular tools for modeling the phenomenon of negative dependence, or repulsion, in data. However, our understanding of an analogue of a classical parametric statistical theory is rather limited for this class of models. In this work, we investigate a parametric family of Gaussian DPPs with a clearly interpretable effect of parametric modulation on the observed points. We show that parameter modulation impacts the observed points by introducing directionality in their repulsion structure, and the principal directions correspond to the directions of maximal (i.e., the most long-ranged) dependency. This model readily yields a viable alternative to principal component analysis (PCA) as a dimension reduction tool that favors directions along which the data are most spread out. This methodological contribution is complemented by a statistical analysis of a spiked model similar to that employed for covariance matrices as a framework to study PCA. These theoretical investigations unveil intriguing questions for further examination in random matrix theory, stochastic geometry, and related topics.

Funder

Ministry of Education - Singapore

NSF | CISE | Division of Information and Intelligent Systems

NSF | MPS | Division of Mathematical Sciences

NSF | CISE | Division of Computing and Communication Foundations

DOD | United States Navy | Office of Naval Research

Publisher

Proceedings of the National Academy of Sciences

Subject

Multidisciplinary

Reference44 articles.

1. Determinantal point process models and statistical inference;Lavancier;J. R. Stat. Soc. Ser. B Stat. Methodol.,2015

2. A. Kulesza , B. Taskar , Determinantal Point Processes for Machine Learning (Foundations and Trends in Machine Learning, Now Publishers Inc., 2012), vol. 5.

3. Learning the parameters of determinantal point process kernels;Affandi,2014

4. J. A. Gillenwater , “Approximate inference for determinantal point processes,” PhD thesis, University of Pennsylvania, Philadelphia, PA (2014).

5. Fixed-point algorithms for learning determinantal point processes;Mariet,2015

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