Vertex centralities in input-output networks reveal the structure of modern economies
Author(s) -
Florian Blöchl,
Fabian J. Theis,
Fernando VegaRedondo,
Eric O'n. Fisher
Publication year - 2011
Publication title -
physical review e
Language(s) - English
Resource type - Journals
eISSN - 1550-2376
pISSN - 1539-3755
DOI - 10.1103/physreve.83.046127
Subject(s) - betweenness centrality , centrality , vertex (graph theory) , salient , node (physics) , shock (circulatory) , computer science , set (abstract data type) , complex network , random walk , cluster analysis , network science , graph , mathematics , combinatorics , theoretical computer science , statistics , physics , artificial intelligence , quantum mechanics , medicine , programming language
Received 26 July 2010; revised 26 January 2011; published 28 April 2011Input-output tables describe the flows of goods and services between the sectors of an economy. These tables can be interpreted as weighted directed networks. At the usual level of aggregation, they contain nodes with strong self-loops and are almost completely connected. We derive two measures of node centrality that are well suited for such networks. Both are based on random walks and have interpretations as the propagation of supply shocks through the economy. Random walk centrality reveals the vertices most immediately affected by a shock. Counting betweenness identifies the nodes where a shock lingers longest. The two measures differ in how they treat self-loops. We apply both to data from a wide set of countries and uncover salient characteristics of the structures of these national economies. We further validate our indices by clustering according to sectors’ centralities. This analysis reveals geographical proximity and similar developmental status
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