管理科学
认识论
社会学
选择(遗传算法)
操作化
概念框架
论证理论
领域(数学)
独创性
知识管理
计算机科学
工程伦理学
社会科学
定性研究
经济
人工智能
哲学
数学
纯数学
工程类
出处
期刊:Management Decision
[Emerald Publishing Limited]
日期:2024-05-29
卷期号:62 (12): 3761-3781
标识
DOI:10.1108/md-08-2023-1423
摘要
Purpose Theories are crucial for addressing research questions and advancing the boundaries of knowledge. However, in the field of strategic management, the existence of diverse schools of thought from various disciplines, including economics, politics, and sociology, poses significant challenges for researchers seeking to develop theories for argumentation and theorization. In this study, we have conceptualized a novel approach to selecting an appropriate theory for addressing specific research questions. Design/methodology/approach Thought experiment, disciplined imagination, and a conceptual examination of a diverse set of theories. Findings Because the central focus in the field of strategic management revolves around how firms achieve sustainable high performance, a research question should initially clarify the fundamental phenomenological issues it aims to address. Subsequently, the process of problematization should identify the ontological assumptions and premises that establish a connection between the research question and existing theories. Finally, the identification and abstraction of rhetorical concepts derived from these assumptions and premises lead to theory selection criteria, namely connectedness, reliability, parsimoniousness, and falsifiability. Research limitations/implications Although we believe that our model for theory selection is generalizable to a wide range of management disciplines, we have primarily focused on its application in the field of strategic management. Future work could validate and further explore the applicability and effectiveness of this model in selecting appropriate theories for conceptual development in other domains. Originality/value While many researchers have proposed methods for writing theoretical papers, few have provided suggestions specifically focused on theory selection. This paper stands out as one of the few that not only attempts to address this gap but successfully develops a comprehensive model for theory selection.
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