Data-based Startup Profile Analysis in the European Smart Specialization Strategy: A Text Mining Approach
Data-based Startup Profile Analysis in the European Smart Specialization Strategy: A Text Mining Approach
Author(s): Sohaib S. Hassan, Jari Kaivo-Oja, Levan BzhalavaSubject(s): Economic development, EU-Accession / EU-DEvelopment
Published by: Exeley Inc.
Keywords: European Union; Smart Specialization Strategy (S3); S3 Implementation Handbook; Text Mining; Entrepreneurship; The Entrepreneurial Discovery Process (EDP) cycle; Innovation; opportunity search;
Summary/Abstract: The aim of the paper is to develop novel scientific metrics approach to the European Smart Specialization Strategy. The European Union (EU) has introduced Smart Specialization Strategy (S3) to increase the innovation and competitive potential of its member states by identifying promising economic areas for investment and specialization. While the evaluation of Smart Specialization Strategy requires measurable criteria for the comparison of rate and level of development of countries and regions, policy makers lack efficient and viable tools for mapping promising sectors for smart specialization. To cope with this issue, we used a text mining approach to analyze the business description of startups from Nordic and Baltic countries in order to identify sectors in which entrepreneurs from these regions see new business opportunities. In particular, a topic modeling, Latent Dirichlet Allocation approach is employed to classify business descriptions and to identify sectors, in which start-up entrepreneurs identify possibilities of smart specialization. The results of the analysis show country-specific differences in national startup profiles as well as variations among entrepreneurs coming from developed and less developed EU regions in terms of detecting business opportunities. Finally, we present policy implications for the European Smart Specialization Strategy.
Journal: European Integration Studies
- Issue Year: 12/2018
- Issue No: 1
- Page Range: 118-128
- Page Count: 11
- Language: English