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Identifying industrial clusters with a novel big-data methodology: Are SIC codes (not) fit for purpose in the Internet age?
Journal article   Peer reviewed

Identifying industrial clusters with a novel big-data methodology: Are SIC codes (not) fit for purpose in the Internet age?

Savvas Papagiannidis, Eric W. K. See-To, Dimitris Assimakopoulos and Yang Yang
Computers and Operations Research, pp.355-366
01/10/2018

Abstract

Industry classification SIC codes Big data analytics Clusters Operations Strategic co-operation Regional policy North East of England
In this paper we propose using a novel big-data-mining methodology and the Internet as a new source of useful meta-data for industry classification. The proposed methodology can be utilised as a decision support system for identifying industrial clusters in almost real time in a specific geographic region, contributing to strategic co-operation and policy development for operations and supply chain management across organisational boundaries through big data analytics. Our theoretical discussion on discerning industrial activity of firms in geographical regions starts by highlighting the limitations of the Standard Industrial Classification (SIC) codes. This discussion is followed by the proposed methodology, which has three main steps revolving around web-based data collection, pre-processing and analysis, and reporting of clusters. We discuss each step in detail, presenting the experimental approaches tested. We apply our methodology to a regional case, in the North East of England, in order to demonstrate how such a big data decision support system/analytics can work in practice. Implications for theory, policy and practice are discussed, as well as potential avenues for further research.
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Collaboration types
Domestic collaboration
International collaboration
Citation topics
6 Social Sciences
6.86 Human Geography
6.86.280 Agglomeration Economies
Web of Science research areas
Computer Science, Interdisciplinary Applications
Engineering, Industrial
Operations Research & Management Science
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