Archive/The Evolution of Competitive Strategy: An Unsupervised Machine Learning Approach Using Topic Modeling and Keyword Clustering
The Evolution of Competitive Strategy: An Unsupervised Machine Learning Approach Using Topic Modeling and Keyword Clustering
Cemal Zehir, Tuğçe Ekiz Yılmaz, Ali Kurt et al.
July 16, 2026
en

Abstract

The field of competitive strategy has attracted growing academic interest in recent years; however, the intellectual framework and thematic evolution of this research area remain fragmented. This study aims to systematically map the evolution of competitive strategy research using an unsupervised machine learning framework. Drawing on a dataset of approximately 3900 journal articles indexed in the Scopus database between 2015 and 2025, the study employs probabilistic topic modeling, specifically Latent Dirichlet Allocation (LDA), together with keyword co-occurrence network analysis, thematic mapping, and community detection techniques to identify the latent thematic structure of the field. The findings reveal a modular and interconnected conceptual landscape in which capability-based strategic perspectives, particularly dynamic capabilities and the resource-based view, continue to occupy central positions in the literature. At the same time, themes related to digital transformation, artificial intelligence, supply chain resilience, environmental, social, and governance (ESG)-oriented management, and sustainability-focused strategic capabilities demonstrate substantial growth and emerging prominence. Temporal analyses further indicate a gradual reconfiguration toward digitally integrated, sustainability-oriented, and capability-driven strategic frameworks. By integrating topic modeling with network-based bibliometric analysis, the study provides a comprehensive and data-driven mapping of the field’s intellectual evolution. The study contributes to competitive strategy research by synthesizing the latent thematic structure of the field and by showing how complementary computational and bibliometric techniques can support large-scale literature mapping in a rapidly evolving research domain.

IPC Classification

G06H04

Keywords

evolutioncompetitivestrategyunsupervisedmachinelearningapproachtopicmodelingkeywordclusteringalgorithmsfieldattractedgrowingacademicinterestrecentyearshoweverintellectualframeworkthematicresearch
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