Proposal of recommender system based on user evaluation and cosmetic ingredients

2017 International Conference on Advanced Informatics, Concepts, Theory, and Applications (ICAICTA)(2017)

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摘要
Recent years have witnessed web services drastically becoming popular in our daily lives, and many consumers take user reviews of products into account when planning purchases. The number of cosmetic review sites, users, and products posted have been increasing year by year. For example, when a user searches for skin lotions using the @cosme website, she consults with reviews of users with similar attributes to her own (age, skin quality, etc.) and searches for items that are compatible with the skin lotion that she uses on a daily basis. However, since different basic cosmetics may have different effects, it is difficult to find products that are compatible with a user, even using the review information from @cosme. In this study, we assume that the compatibility between a user and a basic cosmetic product depends on its cosmetic ingredients. Combining review information from Bihada-Mania website with that from @cosme, we extracted the effective cosmetic ingredients for each user attribute and developed a recommender system of basic cosmetics based on ingredients. We applied the IF-IPF method which applied the concept of TF-IDF method to extraction of effective ingredients of cosmetics. We have defined the scale “invalidated product number” to evaluate the effectiveness of our recommendation service. From the results of the two experiments, the invalidated product number is less than 5% for all user attributes. This indicates that our recommender system has certain reliability.
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关键词
natural language processing,recommender system,review information,cosmetic ingredient information
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