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Twitter sentiment analysis of app based online food delivery companies

Shrawan Kumar Trivedi (Department of Management, Indian Institute of Technology (ISM) Dhanbad, Dhanbad, India)
Amrinder Singh (Department of Finance and Accounting, Indian Institute of Management Sirmaur, Sirmaur, India)

Global Knowledge, Memory and Communication

ISSN: 2514-9342

Article publication date: 26 February 2021

Issue publication date: 16 November 2021

1812

Abstract

Purpose

There is a strong need for companies to monitor customer-generated content of social media, not only about themselves but also about competitors, to deal with competition and to assess competitive environment of the business. The purpose of this paper is to help companies with social media competitive analysis and transformation of social media data into knowledge creation for decision-makers, specifically for app-based food delivery companies.

Design/methodology/approach

Three online app-based food delivery companies, i.e. Swiggy, Zomato and UberEats, were considered in this study. Twitter was used as the data collection platform where customer’s tweets related to all three companies are fetched using R-Studio and Lexicon-based sentiment analysis method is applied on the tweets fetched for the companies. A descriptive analytical method is used to compute the score of different sentiments. A negative and positive sentiment word list is created to match the word present on the tweets and based on the matching positive, negative and neutral sentiments score are decided. The sentiment analysis is a best method to analyze consumer’s text sentiment. Lexicon-based sentiment classification is always preferable than machine learning or other model because it gives flexibility to make your own sentiment dictionary to classify emotions. To perform tweets sentiment analysis, lexicon-based classification method and text mining were performed on R-Studio platform.

Findings

Results suggest that Zomato (26% positive sentiments) has received more positive sentiments as compared to the other two companies (25% positive sentiments for Swiggy and 24% positive sentiments for UberEats). Negative sentiments for the Zomato was also low (12% negative sentiments) compared to Swiggy and UberEats (13% negative sentiments for both). Further, based on negative sentiments concerning all the three food delivery companies, tweets were analyzed and recommendations for business provided.

Research limitations/implications

The results of this study reveal the value of social media competitive analysis and show the power of text mining and sentiment analysis in extracting business value and competitive advantage. Suggestions, business and research implications are also provided to help companies in developing a social media competitive analysis strategy.

Originality/value

Twitter analysis of food-based companies has been performed.

Keywords

Acknowledgements

The authors thank the anonymous referees and the editor for their valuable feedback, which significantly improved the positioning and presentation of this paper.

Citation

Trivedi, S.K. and Singh, A. (2021), "Twitter sentiment analysis of app based online food delivery companies", Global Knowledge, Memory and Communication, Vol. 70 No. 8/9, pp. 891-910. https://doi.org/10.1108/GKMC-04-2020-0056

Publisher

:

Emerald Publishing Limited

Copyright © 2021, Emerald Publishing Limited

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