Abstract

The assessment of information transfer in the global economic network helps to understand the current environment and the outlook of an economy. Most approaches on global networks extract information transfer based mainly on a single variable. This paper establishes an entirely new bioinformatics-inspired approach to integrating information transfer derived from multiple variables and develops an international economic network accordingly. In the proposed methodology, we first construct the transfer entropies (TEs) between various intra- and inter-country pairs of economic time series variables, test their significances, and then use a weighted sum approach to aggregate information captured in each TE. Through a simulation study, the new method is shown to deliver better information integration compared to existing integration methods in that it can be applied even when intra-country variables are correlated. Empirical investigation with the real world data reveals that Western countries are more influential in the global economic network and that Japan has become less influential following the Asian currency crisis.

Highlights

  • Determining how information transfers in a global network is helpful in revealing the economic conditions of a country; it may be a key to predicting future changes

  • Domestic Cross-variable Networks We constructed a graphical representation called a cross-variable network in order to understand the information transfer between the five macro-economic variables in a given country

  • Each node represents one macro-economic variable, and directed edges indicate the direction of information transfer between nodes

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Summary

Introduction

Determining how information transfers in a global network is helpful in revealing the economic conditions of a country; it may be a key to predicting future changes. In this type of network, a node represents a macro-economic variable, and a directed edge connects two nodes representing the same variable for two countries, if there is a statistically significant information transfer between the two nodes.

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