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ENHANCING THE ACCEPTABILITY OF VR PRODUCTS THROUGH MACHINE LEARNING: AMAZON'S HELPFUL REVIEW ACCEPTABILITY PREDICTION MODEL

  • 언어ENG
  • URLhttps://db.koreascholar.com/Article/Detail/422365
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글로벌지식마케팅경영학회 (Global Alliance of Marketing & Management Associations)
초록

Consumers' online reviews have become more powerful in the Internet market. Consumers share reviews, post comments and constantly evaluate products online. In previous studies, the analysis of online reviews mainly focused on purchasing products based on consumers' own use experience, but in innovative products, it was difficult to find an analysis of product acceptor's response to product user reviews. In particular, there is no online review study of VR covered in this study. This study not only quantitatively analyzed online reviews of consumers who purchased VR products on Amazon, an online distribution site, but also qualitatively analyzed them through crawling. This study used Amazon's VR product user review, where purchases were confirmed, to select algorithms that are more likely to be matched by predicting a helpful review and presenting a predictive model. In addition, the online review extracted deep text associated with Helpful and conducted topical modeling. As a result, topics related to 1) experience in use, 2) post-product evaluation, 3) product composition and peripherals, 4) immersion, and 5) comfort were highly acceptable to potential inmates. To enhance the acceptability of innovative products through online reviews, it is not just highlighting the product advantages of VR, but also suggests that the link between smartphones and applications can bring in more potential users. Also, interworking with other peripheral devices (speakers or screens) can be predicted as a way to increase the acceptability of VR products. From a marketing perspective, this study has found targeted topics that help consumers in pioneering the VR market, which will help potential customers create the services they want.

저자
  • Sunnyoung Lee(South Korea, Dongguk University)
  • Jongchan Lee(South Korea, SKKU National University)
  • Sangman Han(South Korea, SKKU National University)
  • Taewan Kim(South Korea, Konkuk National University)