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Exploring energy-saving refrigerators through online e-commerce reviews: an augmented mining model based on machine learning methods

Yuyan Luo (College of Management Science, Chengdu University of Technology, Chengdu, China)
Zheng Yang (College of Management Science, Chengdu University of Technology, Chengdu, China)
Yuan Liang (College of Management Science, Chengdu University of Technology, Chengdu, China)
Xiaoxu Zhang (College of Management Science, Chengdu University of Technology, Chengdu, China)
Hong Xiao (College of Management Science, Chengdu University of Technology, Chengdu, China)

Kybernetes

ISSN: 0368-492X

Article publication date: 16 July 2021

Issue publication date: 5 September 2022

502

Abstract

Purpose

Based on climate issues and carbon emissions, this study aims to promote low-carbon consumption and compel consumers to actively shift to energy-saving appliances. In this big data era, online reviews in social and electronic commerce (e-commerce) websites contain valuable product information, which can facilitate firm business strategies and consumer comparison shopping. This study is designed to advance existing research on energy-saving refrigerators by incorporating machine learning models in the analysis of online reviews to provide valuable suggestions to e-commerce platform managers and manufacturers to effectively understand the psychological cognition of consumers.

Design/methodology/approach

This study proposes an online e-commerce review mining and management strategy model based on “data acquisition and cleaning, data mining and analysis and strategy formation” through multiple machine learning methods, namely, Bayes networks, support vector machine (SVM), latent Dirichlet allocation (LDA) and importance–performance analysis (IPA), to help managers.

Findings

Based on a case study of one of the largest e-commerce platforms in China, this study linguistically analyzes 29,216 online reviews of energy-saving refrigerators. Results indicate that the energy-saving refrigerator features that consumers are generally satisfied with are, in sequential order, logistics, function, price, outlook, after-sales service, brand, quality and space. This study also identifies ten topics with 100 keywords by analyzing 18 different refrigerator models. Finally, based on the IPA, this study allocates different priorities to the features and provides suggestions from the perspective of consumers, the government and manufacturers.

Research limitations/implications

In terms of limitations, future research may focus on the following points. First, the topics identified in this study derive from specific points in time and reviews; thus, the topics may change with the text data. A machine learning-based online review analysis platform could be developed in the future to dynamically improve consumer satisfaction. Moreover, given that consumers' needs may change over time, e-commerce platform types and consumer characteristics, such as user profiles, can be incorporated into the model to effectively analyze trends in consumers' perceived dimensions.

Originality/value

This study fills the gap in previous research in this field, which uses small-sample data for qualitative analysis, while integrating management ideas and proposes an online e-commerce review mining and management strategy model based on machine learning methods. Moreover, this study considers how consumers' emotional and thematic preferences for products affect their purchase decision-making from the perspective of their psychological perception and linguistically analyzes online reviews of energy-saving refrigerators using the proposed mining model. Through the improved IPA model, this study provides optimizing strategies to help e-commerce platform managers and manufacturers.

Keywords

Acknowledgements

This research was funded by the Humanities and Social Sciences Program of the Ministry of Education of the People's Republic of China (Grant No. 20YJC630095), China's Post-doctoral Science Fund Project (Grant No. 2018M631069), the Funding Program for Middle-aged Core Teachers at Chengdu University of Technology (Grant No. 2019KY37-04203), Philosophy and Social Science Research Foundation of Chengdu University of Technology (Grant No. YJ2019-NS004) and the special funding for post-doctoral research projects on Sichuan in 2017 named “Dynamic evolution of multi-system coupling in resource-oriented cities of western China from a technology innovation-driven perspective”, the Program of Graduate Education Reform Program at Chengdu University of Technology (Grant Nos. 10800-00009824).

Citation

Luo, Y., Yang, Z., Liang, Y., Zhang, X. and Xiao, H. (2022), "Exploring energy-saving refrigerators through online e-commerce reviews: an augmented mining model based on machine learning methods", Kybernetes, Vol. 51 No. 9, pp. 2768-2794. https://doi.org/10.1108/K-11-2020-0788

Publisher

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Emerald Publishing Limited

Copyright © 2021, Emerald Publishing Limited

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