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Understanding Antecedents That Affect Customer Evaluations of Head-Mounted Display VR Devices through Text Mining and Deep Neural Network

Title
Understanding Antecedents That Affect Customer Evaluations of Head-Mounted Display VR Devices through Text Mining and Deep Neural Network
Authors
Maeng Y.Lee C.C.Yun H.
Ewha Authors
윤혜정
SCOPUS Author ID
윤혜정scopus
Issue Date
2023
Journal Title
Journal of Theoretical and Applied Electronic Commerce Research
ISSN
7181-1876JCR Link
Citation
Journal of Theoretical and Applied Electronic Commerce Research vol. 18, no. 3, pp. 1238 - 1256
Keywords
big dataconsumer behaviorcustomer reviewe-commerceHMD VRneural networksentiment analysistext mining
Publisher
Multidisciplinary Digital Publishing Institute (MDPI)
Indexed
SSCI; SCOPUS WOS scopus
Document Type
Article
Abstract
Although the market for Head-Mounted Display Virtual Reality (HMD VR) devices has been growing along with the metaverse trend, the product has not been as widespread as initially expected. As each user has different purposes for use and prefers different features, various factors are expected to influence customer evaluations. Therefore, the present study aims to: (1) analyze customer reviews of hands-on HMD VR devices, provided with new user experience (UX), using text mining, and artificial neural network techniques; (2) comprehensively examine variables that affect user evaluations of VR devices; and (3) suggest major implications for the future development of VR devices. The research procedure consisted of four steps. First, customer reviews on HMD VR devices were collected from Amazon.com. Second, candidate variables were selected based on a literature review, and sentiment scores were extracted. Third, variables were determined through topic modeling, in-depth interviews, and a review of previous studies. Fourth, an artificial neural network analysis was performed by setting customer evaluation as a dependent variable, and the influence of each variable was checked through feature importance. The results indicate that feature importance can be derived from variables, and actionable implications can be identified, unlike in general sentiment analysis. © 2023 by the authors.
DOI
10.3390/jtaer18030063
Appears in Collections:
신산업융합대학 > 국제사무학과 > Journal papers
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