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Automated Keyword Filtering in Latent Dirichlet Allocation for Identifying Product Attributes From Online Reviews

Author(s)
Joung, JunegakKim, Harrison M.
Issued Date
2021-08
DOI
10.1115/1.4048960
URI
https://scholarworks.unist.ac.kr/handle/201301/53373
Fulltext
https://asmedigitalcollection.asme.org/mechanicaldesign/article/143/8/084501/1089704/Automated-Keyword-Filtering-in-Latent-Dirichlet
Citation
JOURNAL OF MECHANICAL DESIGN, v.143, no.8, pp.084501
Abstract
Identifying product attributes from the perspective of a customer is essential to measure the satisfaction, importance, and Kano category of each product attribute for product design. This article proposes automated keyword filtering to identify product attributes from online customer reviews based on latent Dirichlet allocation. The preprocessing for latent Dirichlet allocation is important because it affects the results of topic modeling; however, previous research performed latent Dirichlet allocation either without removing noise keywords or by manually eliminating them. The proposed method improves the preprocessing for latent Dirichlet allocation by conducting automated filtering to remove the noise keywords that are not related to the product. A case study of Android smartphones is performed to validate the proposed method. The performance of the latent Dirichlet allocation by the proposed method is compared to that of a previous method, and according to the latent Dirichlet allocation results, the former exhibits a higher performance than the latter.
Publisher
ASME
ISSN
1050-0472
Keyword (Author)
design automation

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