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Theoretical foundation, effectiveness, and design artefact for machine learning service repositories

  • Machine learning (ML) has played an important role in research in recent years. For companies that want to use ML, finding the algorithms and models that fit for their business is tedious. A review of the available literature on this problem indicates only a few research papers. Given this gap, the aim of this paper is to design an effective and easy-to-use ML service repository. The corresponding research is based on a multi-vocal literature analysis combined with design science research, addressing three research questions: (1) How is current white and gray literature on ML services structured with respect to repositories? (2) Which features are relevant for an effective ML service repository? (3) How is a prototype for an effective ML service repository conceptualized? Findings are relevant for the explanation of user acceptance of ML repositories. This is essential for corporate practice in order to create and use ML repositories effectively.

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Metadaten
Author of HS ReutlingenBalaban, Ebru; Murtada, Yasser; Walker, Dustin; Jawwad, Jumana; Rossmann, Alexander
URL:https://aisel.aisnet.org/pacis2022/251/
ISBN:978-1-958200-01-8
Erschienen in:PACIS 2022 Proceedings, 5-9 July 2022, Taipei/Sydney virtual conference
Publisher:Association for Information Systems (AIS)
Place of publication:Atlanta, GA
Document Type:Conference proceeding
Language:English
Publication year:2022
Tag:design science; machine learning; repository
Page Number:17
First Page:1
Last Page:17
Article Number:251
DDC classes:004 Informatik
Open access?:Nein
Licence (German):License Logo  In Copyright - Urheberrechtlich geschützt