Asymmetric effect of feature level sentiment on product rating: an application of bigram natural language processing (NLP) analysis

Yun Kyung Oh, Jisu Yi

Research output: Contribution to journalArticlepeer-review

14 Scopus citations

Abstract

Purpose: The evaluation of perceived attribute performance reflected in online consumer reviews (OCRs) is critical in gaining timely marketing insights. This study proposed a text mining approach to measure consumer sentiments at the feature level and their asymmetric impacts on overall product ratings. Design/methodology/approach: This study employed 49,130 OCRs generated for 14 wireless earbud products on Amazon.com. Word combinations of the major quality dimensions and related sentiment words were identified using bigram natural language processing (NLP) analysis. This study combined sentiment dictionaries and feature-related bigrams and measured feature level sentiment scores in a review. Furthermore, the authors examined the effect of feature level sentiment on product ratings. Findings: The results indicate that customer sentiment for product features measured from text reviews significantly and asymmetrically affects the overall rating. Building upon the three-factor theory of customer satisfaction, the key quality dimensions of wireless earbuds are categorized into basic, excitement and performance factors. Originality/value: This study provides a novel approach to assess customer feature level evaluation of a product and its impact on customer satisfaction based on big data analytics. By applying the suggested methodology, marketing managers can gain in-depth insights into consumer needs and reflect this knowledge in their future product or service improvement.

Original languageEnglish
Pages (from-to)1023-1040
Number of pages18
JournalInternet Research
Volume32
Issue number3
DOIs
StatePublished - 9 May 2022

Keywords

  • Big data analytics
  • Bigram NLP analysis
  • Feature level sentiment analysis
  • Online consumer review

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