The GNAR-edge model: a network autoregressive model for networks with time-varying edge weights

Author:

Mantziou Anastasia1ORCID,Cucuringu Mihai123,Meirinhos Victor4,Reinert Gesine12ORCID

Affiliation:

1. The Alan Turing Institute, Department of Finance and Economics, British Library , 96 Euston Rd ., London NW1 2DB, UK

2. University of Oxford, Department of Statistics , 24-29 St Giles’ , Oxford, OX1 3LB, UK

3. Oxford-Man Institute of Quantitative Finance, University of Oxford, Eagle House , Walton Well Road , Oxford, OX2 6ED

4. Office for National Statistics, Department of Macroeconomic and Environment Statistics and Analysis, Government Buildings , Cardiff Road , Newport South Wales, NP10 8XG

Abstract

Abstract In economic and financial applications, there is often the need for analysing multivariate time series, comprising of time series for a range of quantities. In some applications, such complex systems can be associated with some underlying network describing pairwise relationships among the quantities. Accounting for the underlying network structure for the analysis of this type of multivariate time series is required for assessing estimation error and can be particularly informative for forecasting. Our work is motivated by a dataset consisting of time series of industry-to-industry transactions. In this example, pairwise relationships between Standard Industrial Classification (SIC) codes can be represented using a network, with SIC codes as nodes and pairwise transactions between SIC codes as edges, while the observed time series of the amounts of the transactions for each pair of SIC codes can be regarded as time-varying weights on the edges. Inspired by Knight et al. (2020, J. Stat. Softw., 96, 1–36), we introduce the GNAR-edge model which allows modelling of multiple time series utilizing the network structure, assuming that each edge weight depends not only on its past values, but also on past values of its neighbouring edges, for a range of neighbourhood stages. The method is validated through simulations. Results from the implementation of the GNAR-edge model on the real industry-to-industry data show good fitting and predictive performance of the model. The predictive performance is improved when sparsifying the network using a lead–lag analysis and thresholding edges according to a lead–lag score.

Funder

Engineering and Physical Sciences Research Council

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics,Computational Mathematics,Control and Optimization,Management Science and Operations Research,Computer Networks and Communications

Reference38 articles.

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