Measuring the effects of time: repeated cross-sectional research in operations and supply chain management
ISSN: 1359-8546
Article publication date: 2 December 2019
Issue publication date: 16 January 2020
Abstract
Purpose
Longitudinal investigations are often suggested but rarely used in operations and supply chain management (OSCM), mainly due to the difficulty of obtaining data. There is a silver lining in the form of existing large-scale and planned repeated cross-sectional (RCS) data sets, an approach commonly used in sociology and political sciences. This study aims to review all relevant RCS surveys with a focus on OSCM, as well as data and methods to motivate longitudinal research and to study trends at the plant, industry and geographic levels.
Design/methodology/approach
A comparison of RCS, panel and hybrid surveys is presented. Existing RCS data sets in the OSCM discipline and their features are discussed. In total, 30 years of Global Manufacturing Research Group data are used to explore the applicability of analytical methods at the plant and aggregate level and in the form of multilevel modeling.
Findings
RCS analysis is a viable alternative to overcome the confines associated with panel data. The structure of the existing data sets restricts quantitative analysis due to survey and sampling issues. Opportunities surrounding RCS analysis are illustrated, and survey design recommendations are provided.
Practical implications
The longitudinal aspect of RCS surveys can answer new and untested research questions through repeated random sampling in focused topic areas. Planned RCS surveys can benefit from the provided recommendations.
Originality/value
RCS research designs are generally overlooked in OSCM. This study provides an analysis of RCS data sets and future survey recommendations.
Keywords
Citation
Doering, T., Suresh, N.C. and Krumwiede, D. (2020), "Measuring the effects of time: repeated cross-sectional research in operations and supply chain management", Supply Chain Management, Vol. 25 No. 1, pp. 122-138. https://doi.org/10.1108/SCM-04-2019-0142
Publisher
:Emerald Publishing Limited
Copyright © 2019, Emerald Publishing Limited