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Identification of Key Service Features for Evaluating the Quality of Metaverse Services: A Text Mining Approach

Title
Identification of Key Service Features for Evaluating the Quality of Metaverse Services: A Text Mining Approach
Authors
Kim, MinjunYoo, Ha-Yeon
Ewha Authors
유하연
Issue Date
2024
Journal Title
IEEE ACCESS
ISSN
2169-3536JCR Link
Citation
IEEE ACCESS vol. 12, pp. 6719 - 6728
Keywords
Metaverseservice qualitytext miningsentiment analysistopic modeling
Publisher
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Indexed
SCIE; SCOPUS WOS
Document Type
Article
Abstract
Recent advances in the metaverse have revolutionized the way services are experienced, creating a virtual world that seamlessly blends real-life and digital experiences. While research on metaverse services has traditionally focused on technological advancements, recent efforts emphasize the need for a customer-oriented approach to evaluating service quality. However, few studies have explored this customer-oriented approach. To address this gap, this paper identifies and prioritizes nine service features that significantly influence customer satisfaction in metaverse services from a customer-oriented perspective. In particular, this study analyzed 437,527 online customer reviews of Roblox, Bitmoji, and VRchat by employing text mining and machine learning algorithms, such as topic modeling, sentiment analysis, and logistic regression. As a result, the 'co-experience' feature emerges as a crucial factor, closely aligned with user objectives when engaging with metaverse services. These findings provide valuable insights for service managers to enhance their offerings effectively, positioning them favorably in the evolving metaverse landscape.
DOI
10.1109/ACCESS.2024.3352008
Appears in Collections:
조형예술대학 > 산업디자인전공 > Journal papers
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