Eyyub Can Odacioglu, Lihong Zhang, Richard Allmendinger, Azar Shahgholian
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引用次数: 0
摘要
目的在推进运营管理(OM)的过程中,越来越需要方法的多元化,特别是随着用于分析大量文本数据的机器学习(ML)技术的出现。为了弥补这一知识差距,本文介绍了一种将 ML 技术与传统定性方法相结合的新方法,旨在从现有出版物中重构知识。在这种以实用主义为基础的归纳法中,作者采用了主题建模(TM)这一 ML 技术来实现建构主义基础理论(CGT)。作者采用了四步编码流程(原始编码、专家编码、重点编码和理论构建),力求程序和解释的严谨性。为了展示这种方法,作者从一个开源的专业项目管理(PM)网站上收集了数据,并说明了他们的研究设计和数据分析,最终形成了理论。该方法采用基础理论,从海量文本数据中重构潜在知识,发现隐藏在已发布数据中的管理现象,为学术界开发商业和管理研究的潜在理论提供了一种新方法。
Big textual data research for operations management: topic modelling with grounded theory
Purpose
There is a growing need for methodological plurality in advancing operations management (OM), especially with the emergence of machine learning (ML) techniques for analysing extensive textual data. To bridge this knowledge gap, this paper introduces a new methodology that combines ML techniques with traditional qualitative approaches, aiming to reconstruct knowledge from existing publications.
Design/methodology/approach
In this pragmatist-rooted abductive method where human-machine interactions analyse big data, the authors employ topic modelling (TM), an ML technique, to enable constructivist grounded theory (CGT). A four-step coding process (Raw coding, expert coding, focused coding and theory building) is deployed to strive for procedural and interpretive rigour. To demonstrate the approach, the authors collected data from an open-source professional project management (PM) website and illustrated their research design and data analysis leading to theory development.
Findings
The results show that TM significantly improves the ability of researchers to systematically investigate and interpret codes generated from large textual data, thus contributing to theory building.
Originality/value
This paper presents a novel approach that integrates an ML-based technique with human hermeneutic methods for empirical studies in OM. Using grounded theory, this method reconstructs latent knowledge from massive textual data and uncovers management phenomena hidden from published data, offering a new way for academics to develop potential theories for business and management studies.
期刊介绍:
The mission of the International Journal of Operations & Production Management (IJOPM) is to publish cutting-edge, innovative research with the potential to significantly advance the field of Operations and Supply Chain Management, both in theory and practice. Drawing on experiences from manufacturing and service sectors, in both private and public contexts, the journal has earned widespread respect in this complex and increasingly vital area of business management.
Methodologically, IJOPM encompasses a broad spectrum of empirically-based inquiry using suitable research frameworks, as long as they offer generic insights of substantial value to operations and supply chain management. While the journal does not categorically exclude specific empirical methodologies, it does not accept purely mathematical modeling pieces. Regardless of the chosen mode of inquiry or methods employed, the key criteria are appropriateness of methodology, clarity in the study's execution, and rigor in the application of methods. It's important to note that any contribution should explicitly contribute to theory. The journal actively encourages the use of mixed methods where appropriate and valuable for generating research insights.