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Reassessing taxonomy-based data clustering: Unveiling insights and guidelines for application

Clustering for taxonomy-based archetype identification has become an established method in Information Systems (IS) research, aiding strategic decision-making across diverse research and business domains. However, the effectiveness of the approach depends critically on the compatibility of clusterin...

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Bibliographic Details
Published in:Decision Support Systems 2024-12, Vol.187, p.114344, Article 114344
Main Authors: Heumann, Maximilian, Kraschewski, Tobias, Werth, Oliver, Breitner, Michael H.
Format: Article
Language:English
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Summary:Clustering for taxonomy-based archetype identification has become an established method in Information Systems (IS) research, aiding strategic decision-making across diverse research and business domains. However, the effectiveness of the approach depends critically on the compatibility of clustering methods and algorithms with the specific data characteristics. This study, based on a comprehensive review of 87 articles employing taxonomy-based clustering in IS research, reveals a notable mismatch between the chosen clustering algorithms and the nature of the data, particularly in the context of archetype development from taxonomy-based data. To address these methodological inconsistencies, we introduce a set of clustering guidelines tailored to the unique requirements of archetype development from taxonomy-based data. These guidelines are informed by a computational study involving seven identified datasets from the taxonomy-building literature, ensuring their practical applicability and scientific relevance. Our guidelines are designed to enhance the robustness and scientific validity of insights and decisions derived from taxonomy-based clustering. By improving the methodological rigor of clustering methods, our research addresses a critical mismatch in current practices and contributes to enhancing the quality of decision-making informed by taxonomy-based analysis in IS research. •Identification of key shortcomings in clustering methods across 87 taxonomy studies.•Appropriate clustering methods show improvement for archetype development.•Tailored clustering guidelines for taxonomy data to support informed decision-making.
ISSN:0167-9236
DOI:10.1016/j.dss.2024.114344