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      Latent Space Model for Higher-order Networks and Generalized Tensor Decomposition

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          Abstract

          We introduce a unified framework, formulated as general latent space models, to study complex higher-order network interactions among multiple entities. Our framework covers several popular models in recent network analysis literature, including mixture multi-layer latent space model and hypergraph latent space model. We formulate the relationship between the latent positions and the observed data via a generalized multilinear kernel as the link function. While our model enjoys decent generality, its maximum likelihood parameter estimation is also convenient via a generalized tensor decomposition procedure.We propose a novel algorithm using projected gradient descent on Grassmannians. We also develop original theoretical guarantees for our algorithm. First, we show its linear convergence under mild conditions. Second, we establish finite-sample statistical error rates of latent position estimation, determined by the signal strength, degrees of freedom and the smoothness of link function, for both general and specific latent space models. We demonstrate the effectiveness of our method on synthetic data. We also showcase the merit of our method on two real-world datasets that are conventionally described by different specific models in producing meaningful and interpretable parameter estimations and accurate link prediction. We demonstrate the effectiveness of our method on synthetic data. We also showcase the merit of our method on two real-world datasets that are conventionally described by different specific models in producing meaningful and interpretable parameter estimations and accurate link prediction.

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          Author and article information

          Journal
          30 June 2021
          Article
          2106.16042
          7d534b17-0b20-4996-8a7e-d5cfecc5261f

          http://creativecommons.org/licenses/by/4.0/

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          Custom metadata
          cs.LG math.ST stat.ME stat.TH

          Artificial intelligence,Methodology,Statistics theory
          Artificial intelligence, Methodology, Statistics theory

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