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Text Mining-Based Study on Consumer Satisfaction in the Mobile Phone Market

Published: 31 May 2024 Publication History

Abstract

In the current context of rapid technological advancement, smartphones have become an indispensable part of people's daily lives. This has led to an increasing focus on the satisfaction of consumers with smartphone products, as understanding consumer emotions and satisfaction has become a key factor for manufacturers and retailers to enhance the quality of products and services. This study delves into the satisfaction of consumers with smartphones in the market through an in-depth application of text mining techniques, leveraging advanced technologies such as natural language processing, sentiment analysis, and topic modeling. Our research methodology encompasses the process of collecting and preprocessing a substantial volume of consumer reviews from online shopping platforms. Subsequently, we apply Latent Dirichlet Allocation (LDA) for topic modeling and Extreme Learning Machine (ELM) for sentiment analysis.

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          Published In

          cover image Journal of Global Information Management
          Journal of Global Information Management  Volume 32, Issue 1
          Aug 2024
          1843 pages

          Publisher

          IGI Global

          United States

          Publication History

          Published: 31 May 2024

          Author Tags

          1. Consumer Satisfaction
          2. ELM
          3. LDA
          4. Sentiment Analysis
          5. Text Mining

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