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An approach to reduce cold start in compound recommender systems using semantic technology and social networks

机译:一种使用语义技术和社交网络减少复合推荐系统中冷启动的方法

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Today, the effort to build a "recommender system" with low precision and high speed in all conditions has become one of the most popular fields of research. Due to high percentage error, a basic method to build such systems is not usually being applied. In this research, two methods have been suggested in order to improve recommendations in recommender systems. The first suggested approach is a user-base method which predicts rates using similarity detection between target user and its neighbors. The second proposed approach is an item-base method which uses similarity detection between items, in order to predict possible rates of target user. Finally, the results show that combining semantic technology with social networks has reduced issues such as "cold start" and generally "data sparsity" in recommender systems.
机译:如今,在所有条件下构建具有低精度和高速度的“推荐系统”的努力已成为最受欢迎的研究领域之一。由于高百分比误差,通常不采用构建此类系统的基本方法。在这项研究中,已经提出了两种方法来改进推荐系统中的建议。第一种建议的方法是基于用户的方法,该方法使用目标用户及其邻居之间的相似性检测来预测速率。提出的第二种方法是基于项目的方法,该方法使用项目之间的相似性检测,以预测目标用户的可能比率。最后,结果表明,语义技术与社交网络的结合减少了推荐系统中的“冷启动”和通常的“数据稀疏”等问题。

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