Identifying and Interpreting Convergence Clusters Across Europe
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Authors
Corrado, Luisa
Martin, Ron
Weeks, Melvyn
Publication Date
2004-06-16Series
Cambridge Working Papers in Economics
Publisher
Faculty of Economics
Language
en_GB
Type
Working Paper
Metadata
Show full item recordCitation
Corrado, L., Martin, R., & Weeks, M. (2004). Identifying and Interpreting Convergence Clusters Across Europe. https://doi.org/10.17863/CAM.5407
Abstract
In this paper we examine the spatial and temporal distribution of per capita income across Europe. We base our analysis on a cluster methodology which allows for an endogenous selection of regional clusters using a multivariate test for stationarity where the number and composition of clusters are determined by the application of pairwise tests of regional contrasts. To circumvent the problem of how to interpret the composition of resulting convergence clusters we construct a number of testable hypotheses based upon orderings consistent with the findings of recent studies on regional growth and convergence. We do this using a set of geographical, socio-demographic and political indicators measuring contiguity and institutional similarity, accessibility, specialisation, region specific levels of agglomeration and regional classification according to the European Union Structural Fund objectives. One of the contributions of our study is a method which facilitates the interpretation of the cluster outcomes on the basis of the factors identified above. Unlike previous studies, we present our results using a geographic representation of regions across Europe.
Keywords
Classification-JEL: C51, R11, R15, regional convergence, pairwise regional comparison, new economics geography
Identifiers
This record's DOI: https://doi.org/10.17863/CAM.5407
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