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  3. Faculty of Economics 03: Journal Articles / Статии во научни списанија
  4. Empirical Determinants of Innovation in European Countries: Firm-level Analysis Based on CIS 2018
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Empirical Determinants of Innovation in European Countries: Firm-level Analysis Based on CIS 2018

Journal
European Review
Date Issued
2024-06
Author(s)
Makrevska Disoska, Elena
Tonovska, Jasna
Toshevska-Trpchevska, Katerina
Stojkoski, Viktor
DOI
10.1017/s106279872400019x
Abstract
This study examines the role of perceptions about environmental regulations and their influence on the innovative performance and productivity of firms in Germany, Southern Europe, and Central and Eastern Europe. Utilizing the CDM model for innovative performance and data stemming from the Community Innovation Survey (CIS), we explore the alignment with the Porter hypothesis, which posits that well-designed environmental regulations can stimulate technological innovation and enhance market competitiveness. Our findings present a mixed view: in Germany, positive perceptions about environmental regulations correlate with the initiation of innovation activities, contributing to an increase in labour productivity. This supports the Porter hypothesis, evidencing that regulations can lead to beneficial ‘innovation offsets’ such as reduced resource use and pollution. Conversely, in Southern Europe and Central and Eastern Europe, the perceptions about these regulations on innovation activities are insignificant, with no considerable correlation observed between perceptions about environmental regulations and innovation output. Our findings are crucial for policymakers, environmental regulators, and business leaders aiming to leverage environmental regulations to boost innovation and competitiveness within their regions.
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