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Embedding Model Design for Producing Book Recommendation

机译:图书推荐书的嵌入模型设计

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Internet services often recommend contents to users in order to maintain the interaction. Recommendation system plays a major role to formulate and produce a series of recommendation based on users' behavior. Surprisingly, user-generated scoring or known as ratings are the main raw materials to learn the pattern of favorable contents of each user. As a part of collaborative filtering strategy, rating is considerable to be included in formulating recommended contents. In this research, the basic formulation to recommend books is discovered. The recommendation system has been tested on one random-picked user behavior and successfully has generated five recommended books by analyzing prior activities. The embedding model produced the recommended books with 59% of accuracy. This research is done to provide an insightful experience for developing content recommendation system in Binus University's corporate learning system.
机译:Internet服务通常向用户推荐内容,以维持交互。推荐系统在根据用户行为制定和产生一系列推荐中起着主要作用。令人惊讶的是,用户生成的评分或称为评分是学习每个用户满意内容模式的主要原材料。作为协作过滤策略的一部分,在制定推荐内容时要考虑很多等级。在这项研究中,发现了推荐书籍的基本公式。推荐系统已针对一种随机挑选的用户行为进行了测试,并通过分析先前的活动成功生成了五本推荐书。嵌入模型产生的推荐书的准确性为59%。这项研究旨在为在Binus大学的公司学习系统中开发内容推荐系统提供深刻的经验。

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