用定性大数据和主题建模理论化供应链

IF 10.2 2区 管理学 Q1 MANAGEMENT
Pratima (Tima) Bansal, Jury Gualandris, Nahyun Kim
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引用次数: 16

摘要

大数据的可用性为研究供应链提供了机会。虽然大多数学者都指望定量大数据来建立理论见解,但在本文中,我们说明了定性大数据的价值。我们首先描述定性大数据的性质和特性。然后,我们解释了一个特定的方法,主题建模,如何在理论化供应链方面特别有用。主题建模识别定性大数据中的共出现词,这可以揭示在如此大量的数据中难以看到的新结构。分析结构之间的关系或它们的描述性内容可以帮助理解和解释供应链是如何随着时间的推移而出现、运作和适应的。由于主题建模尚未被用于供应链理论化,我们通过分析发表在组织理论期刊上的两篇论文来说明这种方法的使用及其与未来研究的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Theorizing Supply Chains with Qualitative Big Data and Topic Modeling

The availability of Big Data has opened up opportunities to study supply chains. Whereas most scholars look to quantitative Big Data to build theoretical insights, in this paper we illustrate the value of qualitative Big Data. We begin by describing the nature and properties of qualitative Big Data. Then, we explain how one specific method, topic modeling, is particularly useful in theorizing supply chains. Topic modeling identifies co-occurring words in qualitative Big Data, which can reveal new constructs that are difficult to see in such volume of data. Analyzing the relationships among constructs or their descriptive content can help to understand and explain how supply chains emerge, function, and adapt over time. As topic modeling has not yet been used to theorize supply chains, we illustrate the use of this method and its relevance for future research by unpacking two papers published in organizational theory journals.

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来源期刊
CiteScore
16.00
自引率
6.60%
发文量
18
期刊介绍: ournal of Supply Chain Management Mission: The mission of the Journal of Supply Chain Management (JSCM) is to be the premier choice among supply chain management scholars from various disciplines. It aims to attract high-quality, impactful behavioral research that focuses on theory building and employs rigorous empirical methodologies. Article Requirements: An article published in JSCM must make a significant contribution to supply chain management theory. This contribution can be achieved through either an inductive, theory-building process or a deductive, theory-testing approach. This contribution may manifest in various ways, such as falsification of conventional understanding, theory-building through conceptual development, inductive or qualitative research, initial empirical testing of a theory, theoretically-based meta-analysis, or constructive replication that clarifies the boundaries or range of a theory. Theoretical Contribution: Manuscripts should explicitly convey the theoretical contribution relative to the existing supply chain management literature, and when appropriate, to the literature outside of supply chain management (e.g., management theory, psychology, economics). Empirical Contribution: Manuscripts published in JSCM must also provide strong empirical contributions. While conceptual manuscripts are welcomed, they must significantly advance theory in the field of supply chain management and be firmly grounded in existing theory and relevant literature. For empirical manuscripts, authors must adequately assess validity, which is essential for empirical research, whether quantitative or qualitative.
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