Uniform Inference on High-dimensional Spatial Panel Networks

Victor Chernozhukov, Chen Huang, Weining Wang

Research output: Contribution to journalArticle (Academic Journal)peer-review

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Abstract

We propose employing a debiased-regularized, high-dimensional generalized method of moments (GMM) framework to perform inference on large-scale spatial panel networks. In particular, network structure with a flexible sparse deviation, which can be regarded either as latent or as misspecified from a predetermined adjacency matrix, is estimated using debiased machine learning approach. The theoretical analysis establishes the consistency and asymptotic normality of our proposed estimator, taking into account general temporal and spatial dependency inherent in the data-generating processes. A primary contribution of our study is the development of uniform inference theory that enables hypothesis testing on the parameters of interest, including zero or non-zero elements in the network structure. Additionally, the asymptotic properties for the estimator are derived for both linear and nonlinear moments. Simulations demonstrate superior performance of our proposed approach. Lastly, we apply our methodology to investigate the spatial network effect of stock returns.
Original languageEnglish
JournalJournal of business & economic statistics
DOIs
Publication statusAccepted/In press - 1 Jul 2025

Keywords

  • econ.EM
  • stat.ME

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