Text Mining Based Approach for Customer Sentiment and Product Competitiveness Using Composite Online Review Data

Author:

Wen Zhanming1,Chen Yanjun1,Liu Hongwei1,Liang Zhouyang2ORCID

Affiliation:

1. School of Management, Guangdong University of Technology, Guangzhou 510520, China

2. Center of Campus Network & Modern Educational Technology, Guangdong University of Technology, Guangzhou 510006, China

Abstract

We aimed to provide a realistic portrayal of customer sentiment and product competitiveness, as well as to inspire businesses to optimise their products and enhance their services. This paper uses 119,190 pairs of real composite review data as a corpus to examine customer sentiment analysis and product competitiveness. The research is conducted by combining TF-IDF text mining with a time-phase division through the k-means clustering method. The study identified ‘quality’, ‘taste’, ‘appearance packaging’, ‘logistics’, ‘prices’, ‘service’, ‘evaluations’, and ‘customer loyalty’ as the commodity dimensions that customers are most concerned about. These dimensions should therefore serve as the primary entry point for improving the commodity and understanding customers. A review of customer feedback reveals that the composite reviews can be divided into three time stages. Furthermore, the sentiment expressed by customers can become increasingly negative over time. The product competitiveness based on the composite review can be characterised by four regional quadrants, such as ‘Advantage Area’, ‘Struggle Area’, ‘Opportunity Area’, and ‘Waiting Area’, and merchants can target these areas to improve product competitiveness according to the dimensional distribution. In the future, it will also be possible to take customer demographics into account in order to gain a deeper understanding of the customer base.

Funder

National Education Science Planning Youth Project of the Ministry of Education

Publisher

MDPI AG

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