Customer reviews analytics on food delivery services in social media: A review

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Abstract

Food delivery services have gained attention and become a top priority in developed cities by reducing travel time and waiting time by offering online food delivery options for a variety of dishes from a wide variety of restaurants. Therefore, customer analytics have been considered in business analysis by enabling businesses to collect and analyse customer feedback to make business decisions to be more advanced in the future. This paper aims to study the techniques used in customer analytics for food delivery services and identify the factors of customers’ reviews for food delivery services especially in social media. A total of 53 papers reviewed, several techniques and algorithms on customer analytics for food delivery services in social media are Lexicon, machine learning, natural language processing (NLP), support vector machine (SVM), and text mining. The paper further analyse the challenges and factors that give impacts to the customers’ reviews for food delivery services. These findings would be appropriate for development and enhancement of food delivery services in future works.

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APA

Shaeeali, N. S., Mohamed, A., & Mutalib, S. (2020, December 1). Customer reviews analytics on food delivery services in social media: A review. IAES International Journal of Artificial Intelligence. Institute of Advanced Engineering and Science. https://doi.org/10.11591/ijai.v9.i4.pp691-699

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