English

Multi-relational Network Autoregression Model with Latent Group Structures

Methodology 2024-06-06 v1

Abstract

Multi-relational networks among entities are frequently observed in the era of big data. Quantifying the effects of multiple networks have attracted significant research interest recently. In this work, we model multiple network effects through an autoregressive framework for tensor-valued time series. To characterize the potential heterogeneity of the networks and handle the high dimensionality of the time series data simultaneously, we assume a separate group structure for entities in each network and estimate all group memberships in a data-driven fashion. Specifically, we propose a group tensor network autoregression (GTNAR) model, which assumes that within each network, entities in the same group share the same set of model parameters, and the parameters differ across networks. An iterative algorithm is developed to estimate the model parameters and the latent group memberships simultaneously. Theoretically, we show that the group-wise parameters and group memberships can be consistently estimated when the group numbers are correctly- or possibly over-specified. An information criterion for group number estimation of each network is also provided to consistently select the group numbers. Lastly, we implement the method on a Yelp dataset to illustrate the usefulness of the method.

Keywords

Cite

@article{arxiv.2406.03296,
  title  = {Multi-relational Network Autoregression Model with Latent Group Structures},
  author = {Yimeng Ren and Xuening Zhu and Ganggang Xu and Yanyuan Ma},
  journal= {arXiv preprint arXiv:2406.03296},
  year   = {2024}
}

Comments

arXiv admin note: text overlap with arXiv:2212.02107

R2 v1 2026-06-28T16:54:35.898Z