Latent distance estimation for random geometric graphs.

Abstract: Random geometric graphs are a popular choice for a latent points generative model for networks. Their definition is based on a sample of $n$ points $X_1,X_2,\cdots,X_n$ on the Euclidean sphere~$\mathbb{S}^{d-1}$ which represents the latent positions of nodes of the network. The connection probabilities between the nodes are determined by an unknown function (referred to as the “link” function) evaluated at the distance between the latent points. We introduce a spectral estimator of the pairwise distance between latent points and we prove that its rate of convergence is the same as the nonparametric estimation of a function on $\mathbb{S}^{d-1}$, up to a logarithmic factor. In addition, we provide an efficient spectral algorithm to compute this estimator without any knowledge on the nonparametric link function. As a byproduct, our method can also consistently estimate the dimension $d$ of the latent space.

Date: Jan 07, 2020 at 15:00:00 h
Venue: Beauchef 851, Torre Norte, Piso 7, Sala de Seminarios Jacques L. Lions
Speaker: Ernesto Araya
Affiliation: Université Paris-Sud 11, Francia
Coordinator: Prof. Felipe Tobar
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Posted on Jan 6, 2020 in Seminario Aprendizaje de Máquinas, Seminars