Knowledge Overlap and Iterative Development in ML Projects: An Information Processing View

Oliver Krancher, Ilan Oshri, Julia Kotlarsky

Publikation: Artikel i tidsskrift og konference artikel i tidsskriftKonferenceartikelForskningpeer review

Abstract

Machine Learning (ML) projects encounter significant uncertainty due to the search for potential use cases and the opacity of ML models, which may challenge project efficiency and model effectiveness. Taking an Information Processing (IP) View, we examine how projects can counter these sources of uncertainty with appropriate sources of IP capacity, including iterative development and knowledge overlap between data scientists and domain experts. Survey data from 141 ML project teams shows that iterative development and knowledge overlap in the form of domain experts’ data science knowledge can significantly enhance ML project efficiency. Our interaction analysis shows that iterative development and domain experts’ data science knowledge helps address uncertainty in the business sphere (i.e., requirements uncertainty), while data scientists’ domain knowledge helps address uncertainty in the technical sphere (i.e., inscrutability). We conclude by providing implications for the IS ML literature and practice.
OriginalsprogEngelsk
TidsskriftProceedings of the International Conference on Information Systems
Antal sider17
ISSN0000-0033
StatusUdgivet - 2024
BegivenhedInternational Conference on Information Systems - Bangkok, Thailand
Varighed: 15 dec. 202418 dec. 2024
Konferencens nummer: 45

Konference

KonferenceInternational Conference on Information Systems
Nummer45
Land/OmrådeThailand
ByBangkok
Periode15/12/202418/12/2024

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