Jeeshan Mirza, Yany Grégoire, Chatura Ranaweera and Chau Minh Nguyen
The service failure and recovery (SFR) research field has reached its maturity stage and is now at a critical juncture. There are growing calls for fresh perspectives and…
Abstract
Purpose
The service failure and recovery (SFR) research field has reached its maturity stage and is now at a critical juncture. There are growing calls for fresh perspectives and innovative approaches in SFR research to ensure its continued relevance and growth. The purpose of this paper is to identify boundary-breaking opportunities in SFR research by fundamentally challenging some of the central assumptions of the field.
Design/methodology/approach
This paper employs a unique “review of reviews” methodology to synthesise findings from 19 prior SFR reviews, complemented by an in-depth analysis of 116 primary articles published in the past five years.
Findings
This paper makes several contributions. First, it identifies and critically evaluates the central underlying assumptions of SFR, highlighting their inherent limitations in light of emerging conceptual and substantive developments. Second, it offers alternative perspectives that reframe these assumptions and open up new avenues for research. Third, within each alternative perspective, we propose specific research ideas that can benefit from further exploration. To develop the ideas, we build on recent conflicts and negative events in the marketplace. Our review of reviews approach also enables us to track how frequently such ideas have been proposed in prior reviews. Finally, the paper briefly discusses some methodological considerations for conducting more impactful research.
Originality/value
This paper leverages insights from prior SFR literature reviews and recent research and steeps into real-world marketing issues to challenge the central assumptions of the field and recommend future research avenues.
Details
Keywords
Arne Walter, Kamrul Ahsan and Shams Rahman
Demand planning (DP) is a key element of supply chain management (SCM) and is widely regarded as an important catalyst for improving supply chain performance. Regarding the…
Abstract
Purpose
Demand planning (DP) is a key element of supply chain management (SCM) and is widely regarded as an important catalyst for improving supply chain performance. Regarding the availability of technology to process large amounts of data, artificial intelligence (AI) has received increasing attention in the DP literature in recent years, but there are no reviews of studies on the application of AI in supply chain DP. Given the importance and value of this research area, we aimed to review the current body of knowledge on the application of AI in DP to improve SCM performance.
Design/methodology/approach
Using a systematic literature review approach, we identified 141 peer-reviewed articles and conducted content analysis to examine the body of knowledge on AI in DP in the academic literature published from 2012 to 2023.
Findings
We found that AI in DP is still in its early stages of development. The literature is dominated by modelling studies. We identified three knowledge clusters for AI in DP: AI tools and techniques, AI applications for supply chain functions and the impact of AI on digital SCM. The three knowledge domains are conceptualised in a framework to demonstrate how AI can be deployed in DP to improve SCM performance. However, challenges remain. We identify gaps in the literature that make suggestions for further research in this area.
Originality/value
This study makes a theoretical contribution by identifying the key elements in applying AI in DP for SCM. The proposed conceptual framework can be used to help guide further empirical research and can help companies to implement AI in DP.
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Yan Shi, Baiqing Sun, Ou Li and Chunhong Li
Online learning is increasingly popular, and educational platforms provide a wealth of courses. Improving course sales is the key to promoting sustainable development of online…
Abstract
Purpose
Online learning is increasingly popular, and educational platforms provide a wealth of courses. Improving course sales is the key to promoting sustainable development of online course platforms. However, limited research has explored the marketing of online courses. We study how to drive online course sales by leveraging teacher information.
Design/methodology/approach
We performed an empirical study. We collected data through a crawler and image recognition from Tencent classroom.
Findings
Our results show that providing teacher information and profile images helps promote online course sales. However, detailed course descriptions weaken the positive impact of teachers' profile images on online course sales. Furthermore, our study shows an inverted U-shaped relationship between the intensity of smiling in teacher profile photos and online course sales, and teacher descriptions negatively moderate this relationship.
Research limitations/implications
Our study contributes to the research on online course sales and extends the context of the research on smiling as well as the studies of visual and textual information.
Practical implications
The results have practical implications for online course sellers and platforms.
Originality/value
Existing scholarly efforts have explored online courses mainly from an education perspective. More research is needed to advance the understanding of online course sales. Our study advances research in the marketing of online courses.
Details
Keywords
Smita Abhijit Ganjare, Sunil M. Satao and Vaibhav Narwane
In today's fast developing era, the volume of data is increasing day by day. The traditional methods are lagging for efficiently managing the huge amount of data. The adoption of…
Abstract
Purpose
In today's fast developing era, the volume of data is increasing day by day. The traditional methods are lagging for efficiently managing the huge amount of data. The adoption of machine learning techniques helps in efficient management of data and draws relevant patterns from that data. The main aim of this research paper is to provide brief information about the proposed adoption of machine learning techniques in different sectors of manufacturing supply chain.
Design/methodology/approach
This research paper has done rigorous systematic literature review of adoption of machine learning techniques in manufacturing supply chain from year 2015 to 2023. Out of 511 papers, 74 papers are shortlisted for detailed analysis.
Findings
The papers are subcategorised into 8 sections which helps in scrutinizing the work done in manufacturing supply chain. This paper helps in finding out the contribution of application of machine learning techniques in manufacturing field mostly in automotive sector.
Practical implications
The research is limited to papers published from year 2015 to year 2023. The limitation of the current research that book chapters, unpublished work, white papers and conference papers are not considered for study. Only English language articles and review papers are studied in brief. This study helps in adoption of machine learning techniques in manufacturing supply chain.
Originality/value
This study is one of the few studies which investigate machine learning techniques in manufacturing sector and supply chain through systematic literature survey.
Highlights
A comprehensive understanding of Machine Learning techniques is presented.
The state of art of adoption of Machine Learning techniques are investigated.
The methodology of (SLR) is proposed.
An innovative study of Machine Learning techniques in manufacturing supply chain.
A comprehensive understanding of Machine Learning techniques is presented.
The state of art of adoption of Machine Learning techniques are investigated.
The methodology of (SLR) is proposed.
An innovative study of Machine Learning techniques in manufacturing supply chain.