What is it about?

The volume of user generated content (UGC) regarding the quality of provided services has increased exponentially. Meanwhile, research on how to leverage this data using data-driven methods to systematically measure service quality is rather limited. Several works have employed Data Analytics (DA) techniques on UGC and shown that using such data to measure service quality is promising and efficient. The purpose of this study is to provide insights into the studies which use Data Analytics techniques to measure service quality in different sectors, identify gaps in the literature and propose future directions. This study performs a systematic literature review (SLR) of Data Analytics (DA) techniques to measure service quality in various sectors. This paper focuses on the type of data, the approaches used, and the evaluation techniques found in these studies. The study derives a new categorization of the Data Analytics methods used in measuring service quality, distinguishes the most used data sources and provides insights regarding methods and data sources used per industry. Finally, the paper concludes by identifying gaps in the literature and proposes future research directions aiming to provide practitioners and academia with guidance on implementing DA for service quality assessment, complementary to traditional survey-based methods.

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Why is it important?

The study derives a new categorization of the Data Analytics methods used in measuring service quality, distinguishes the most used data sources and provides insights regarding methods and data sources used per industry.

Perspectives

Writing this article was a great pleasure since it involved a close collaboration with co-authors with a lot of expertise in the field of data analytics. Moreover, I gained insight into the research gaps of the sector and delved into methods and future directions for the field.

Georgia Gkioka
National Technical University of Athens

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This page is a summary of: Data analytics methods to measure service quality: A systematic review, Intelligent Decision Technologies, November 2023, IOS Press,
DOI: 10.3233/idt-230363.
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