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      Network inference via process motifs for lagged correlation in linear stochastic processes

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          Abstract

          A major challenge for causal inference from time-series data is the trade-off between computational feasibility and accuracy. Motivated by process motifs for lagged covariance in an autoregressive model with slow mean-reversion, we propose to infer networks of causal relations via pairwise edge measure (PEMs) that one can easily compute from lagged correlation matrices. Motivated by contributions of process motifs to covariance and lagged variance, we formulate two PEMs that correct for confounding factors and for reverse causation. To demonstrate the performance of our PEMs, we consider network interference from simulations of linear stochastic processes, and we show that our proposed PEMs can infer networks accurately and efficiently. Specifically, for slightly autocorrelated time-series data, our approach achieves accuracies higher than or similar to Granger causality, transfer entropy, and convergent crossmapping -- but with much shorter computation time than possible with any of these methods. Our fast and accurate PEMs are easy-to-implement methods for network inference with a clear theoretical underpinning. They provide promising alternatives to current paradigms for the inference of linear models from time-series data, including Granger causality, vector-autoregression, and sparse inverse covariance estimation.

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          Author and article information

          Journal
          18 August 2022
          Article
          2208.08871
          8b8ff175-1103-45af-9a04-3fd7cddc071b

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

          History
          Custom metadata
          92C42, 92B20, 94A16
          28 pages, 17 figures
          stat.ML cs.LG cs.SI math.DS physics.soc-ph

          Social & Information networks,General physics,Differential equations & Dynamical systems,Machine learning,Artificial intelligence

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