Clarifying Core Dimensions in Digital Maturity Models: An Integrative Approach
- URL: http://arxiv.org/abs/2602.07569v1
- Date: Sat, 07 Feb 2026 14:30:05 GMT
- Title: Clarifying Core Dimensions in Digital Maturity Models: An Integrative Approach
- Authors: Eduardo C. Peixoto, Hector Oliveira, Geber L. Ramalho, Cesar França,
- Abstract summary: Digital Transformation initiatives frequently face high failure rates.<n>DMMs offer potential solutions, but they have notable shortcomings.<n>This study proposes integrative definitions of the most frequently used dimensions.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Digital Transformation (DT) initiatives frequently face high failure rates, and while Digital Maturity Models (DMMs) offer potential solutions, they have notable shortcomings. Specifically, there is significant disparity in the dimensions considered relevant, a lack of clarity in their definitions, and uncertainty regarding their components. This study aims to provide a clearer understanding of DMMs by proposing integrative definitions of the most frequently used dimensions. Using a Systematic Mapping approach, including automatic search and snowballing techniques, we analyzed 76 DMMs to answer two Research Questions: (RQ1) What are the most frequent dimensions in DMMs? and (RQ2) How are these dimensions described, including their components? We reconcile varying interpretations of the ten most frequent dimensions -- Organization, Strategy, Technology, Culture, Process, Operations, People, Management, Customer, and Data -- and propose integrative definitions for each. Compared to previous analyses, this study provides a broader and more recent perspective on Digital Maturity Models.
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