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Application of social media data in supply chain management : a systematic review
Citation Link: https://doi.org/10.15480/882.3963
Publikationstyp
Conference Paper
Publikationsdatum
2021-12-01
Sprache
English
Author
Herausgeber*innen
First published in
Number in series
31
Start Page
499
End Page
523
Citation
Hamburg International Conference of Logistics (HICL) 31: 499-523 (2021)
Contribution to Conference
Publisher
epubli
Peer Reviewed
true
Purpose: Recently, big data has received considerable industrial and academic attention. Social media(SM) are becoming reliable big data sources that include various information such as customer’s opinions, product reviews and trends. However, the supply chain management (SCM) field has been lagging behind other industries in adopting SM. Hence, this paper aims to explore the value of SM and its application in SCM with recommendation for future work.
Methodology: This paper reviews the existing literature systematically to highlight major research works and trends by using bibliometric analysis.
Findings: Our review results show that the research on SM and SCM has attracted significant attention over the decade. SM data has been used together with different analytical tools (e.g. text mining, sentiment analysis) to manage different supply chain activities (e.g. demand forecasting, production). However, the potential of SM has not been thoroughly investigated due to the inherent nature of SM data. Therefore, this study field is in its infancy. We suggest some directions can be considered for future research, e.g. sentiment indicators for SC related posts.
Originality: This paper is the first attempt to systematically analyse the interaction of SM data and SCM and to highlight the new approaches of adopting SM data for improving SCM.
Methodology: This paper reviews the existing literature systematically to highlight major research works and trends by using bibliometric analysis.
Findings: Our review results show that the research on SM and SCM has attracted significant attention over the decade. SM data has been used together with different analytical tools (e.g. text mining, sentiment analysis) to manage different supply chain activities (e.g. demand forecasting, production). However, the potential of SM has not been thoroughly investigated due to the inherent nature of SM data. Therefore, this study field is in its infancy. We suggest some directions can be considered for future research, e.g. sentiment indicators for SC related posts.
Originality: This paper is the first attempt to systematically analyse the interaction of SM data and SCM and to highlight the new approaches of adopting SM data for improving SCM.
Schlagworte
Business Analytics
DDC Class
330: Wirtschaft
Publication version
publishedVersion
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Chen et al. (2021) - Application of Social Media Data in Supply Chain Management a Systematic Review.pdf
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