Abstract
AbstractThis study aims to identify fashion trends with design features and provide a consumer-driven fashion design application in digital dynamics, by using text mining and semantic network analysis. We examined the current role and approach of fashion forecasting and developed a trend analysis process using consumer text data. This study focuses on analyzing blog posts regarding fashion collections. Specifically, we chose the jacket as our fashion item to produce practical results for our trend report, as it is an item used in multiple seasons and can be representative of fashion as a whole. We collected 29,436 blog posts from the past decade that included the keywords “jacket” and “fashion collection.” After the data collection, we established a list of fashion trend words for each design feature by classifying styles (e.g., retro), colors (e.g., black), fabrics (e.g., leather), and patterns (e.g., checkered). A time-series cluster analysis was used to categorize fashion trends into four clusters—increasing, decreasing, evergreen, and seasonal trends—and a semantic network analysis visualized the latest season’s dominant trends along with their corresponding design features. We concluded that these results are useful as they can reduce the time-consuming process of fashion trend analysis and offer consumer-driven fashion design guidelines.
Funder
National Research Foundation of Korea
Publisher
Springer Science and Business Media LLC
Subject
Marketing,Strategy and Management,Materials Science (miscellaneous),Cultural Studies,Social Psychology
Reference52 articles.
1. Aldrich, W. (2003). The impact of fashion on the cutting practices for the woman’s tailored jacket 1800–1927. Textile History, 34(2), 134–170. https://doi.org/10.1179/004049603235001580.
2. Al-Hashemi, R. (2010). Text Summarization Extraction System (TSES) using extracted keywords. International Arab Journal of e-Technology, 1(4), 164–168.
3. An, H., & Lee, I. (2016). An investigation of sensibility evaluation method using big data in the field of design—Focusing on Hanbok related design factors, sensibility responses, and evaluation Terms. Journal of the Korean Society of Clothing and Textiles, 40(6), 1034–1044. https://doi.org/10.5850/JKSCT.2016.40.6.1034.
4. An, H., & Park, M. (2018). A study on the evaluation of fashion design based on big data text analysis-Focus on semantic network analysis of design elements and emotional terms. Journal of the Korean Society of Clothing and Textiles, 42(3), 428–437. https://doi.org/10.5850/JKSCT.2018.42.3.428.
5. Beheshti-Kashi, S., Lütjen, M., Stoever, L., & Thoben, K. D. (2015). Trend fashion-a framework for the identification of fashion trends. In GI-Jahrestagung. Proceedings of Informatik (pp. 1195–1205). Cottbus, Germany.
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