Ricardo Costa-Climent, Samuel Ribeiro Navarrete, Darek M. Haftor, Marcin W. Staniewski
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Value creation and appropriation from the use of machine learning: a study of start-ups using fuzzy-set qualitative comparative analysis
This study focuses on how start-ups use machine learning technology to create and appropriate value. A firm’s use of machine learning can activate data network effects. These data network effects can then create perceived value for users. This study examines the interaction between the activation of data network effects by start-ups and the value that they are able to create and appropriate based on their business model. A neo-configurational approach built on fuzzy-set qualitative comparative analysis (fsQCA) explores how the design of a firm’s business model interacts with various aspects to explain value creation and appropriation using machine learning. The study uses a sample of 122 European start-ups created between 2019 and 2022. It explores the system of interactions between business model value drivers and value creation factors under the theory of data network effects. The findings show that start-ups primarily activate the efficiency and novelty elements of value creation and value capture.
期刊介绍:
The International Entrepreneurship and Management Journal (IEMJ) publishes high quality manuscripts dealing with entrepreneurship, broadly defined, and the management of entrepreneurial organizations. The journal will expand the study of entrepreneurship and management by publishing innovative articles based on different perspectives using a variety of methodological approaches and showing the practical implications of the research for its readership. IEMJ is unique; providing a multi-disciplinary forum for researchers, scholars, consultants, entrepreneurs, businessmen, managers and practitioners in the field of entrepreneurship. The journal covers the relationship between management and entrepreneurship including both conceptual and empirical papers, leading to an improvement in the understanding of international entrepreneurial perspectives of the organisations concerned. Entrepreneurial studies are important in creating new economic activity that in turn increases innovation, employment, economic wealth and growth. The journal focuses on the diverse and complex characteristics of entrepreneurship in SMEs and large companies in local, regional, national or international markets that lead to competitiveness in the face of the effects of globalization. Though preference will be given to manuscripts that are international in scope, papers focused on domestic contexts and issues are welcome also, in order to facilitate the sharing of knowledge and potential generalizability of findings worldwide. IEMJ will publish original papers which contribute to the advancement of the field of entrepreneurship and the interface between management and entrepreneurship, as well as articles on business corporate strategy and government economic policy. On occasions, the journal will also feature case studies of successful firms or other cases having important practical implications. The journal places great emphasis on the quality of the papers it publishes. Submission of a paper will imply that it contains original unpublished work and is not being submitted for publication elsewhere. Officially cited as: Int Entrep Manag J