13th Annual Conference of the EuroMed Academy of Business, 2020
The purpose of this study is to explore the perceptions of chief technology officers (CTO) of sof... more The purpose of this study is to explore the perceptions of chief technology officers (CTO) of software development firms (SDF) about how and why machine learning (ML) methodologies might be used to support foreign market evaluation decisions. The research design is a qualitative multiple case study with six interviews with CTOs of SDFs and corporate documents about ML applications from the case study firms as sources of evidence. The results of this multiple case study suggest the following four findings: 1) The usage of ML to support foreign market evaluation and selection decisions has the potential to improve quality and efficiency, 2) data availability is a key factor of ML to support foreign market evaluation decisions, 3) "easy to use" and "easy to interpret" ML supervised methods are the most suitable to support foreign market evaluation and selection decisions, and 4) existing ML development methodologies can be applied to support market evaluation and selection decisions. These findings have a limited generalizability due to the research methodology and are valid only for these case study firms. The results of this study may be relevant for researchers who are interested in a further digitalization of decision-making processes. The results may also be relevant for practitioners to better understand the use of ML methodologies in complex important decision-making processes like the evaluation of foreign markets. This work integrated fundamental theories of internationalization (Uppsala Model) with the concepts and methodologies of machine learning, whose relationship is yet not covered by the academic discourse.
13th Annual Conference of the EuroMed Academy of Business, 2020
The purpose of this study is to explore the perceptions of chief technology officers (CTO) of sof... more The purpose of this study is to explore the perceptions of chief technology officers (CTO) of software development firms (SDF) about how and why machine learning (ML) methodologies might be used to support foreign market evaluation decisions. The research design is a qualitative multiple case study with six interviews with CTOs of SDFs and corporate documents about ML applications from the case study firms as sources of evidence. The results of this multiple case study suggest the following four findings: 1) The usage of ML to support foreign market evaluation and selection decisions has the potential to improve quality and efficiency, 2) data availability is a key factor of ML to support foreign market evaluation decisions, 3) "easy to use" and "easy to interpret" ML supervised methods are the most suitable to support foreign market evaluation and selection decisions, and 4) existing ML development methodologies can be applied to support market evaluation and selection decisions. These findings have a limited generalizability due to the research methodology and are valid only for these case study firms. The results of this study may be relevant for researchers who are interested in a further digitalization of decision-making processes. The results may also be relevant for practitioners to better understand the use of ML methodologies in complex important decision-making processes like the evaluation of foreign markets. This work integrated fundamental theories of internationalization (Uppsala Model) with the concepts and methodologies of machine learning, whose relationship is yet not covered by the academic discourse.
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Conference Presentations by Briam Daniel Falcó