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Personalized Recommendation Algorithm Based on Product Reviews

机译:基于产品评论的个性化推荐算法

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摘要

Under the background of leap-forward development for the internet, e-commerce has played an important role in people's daily life, but huge data sizes have also brought problems, such as information overload which can be solved by using a recommendation system effectively. However, with the development of the e-commerce, the amount of the product catalogs and users becomes larger, which causes lower performance of the traditional recommendation system. This article comes up with a personalized recommendation algorithm based on the data mining of product reviews to optimize the performance of the new recommendation system. Features of the product were extracted, for which the users' sentiment polarity was analyzed. This article develops a recommendation system based on the user's preference model and the product features to get the recommendation result. Experimental results show that a personalized recommendation has significantly improved the accuracy and recall rate when compared with a traditional recommendation algorithm.
机译:在互联网飞跃发展的背景下,电子商务在人们的日常生活中起着重要的作用,但是庞大的数据量也带来了诸如信息过载等问题,这些问题可以通过有效地使用推荐系统来解决。然而,随着电子商务的发展,产品目录和用户的数量越来越大,这导致传统推荐系统的性能下降。本文提出了基于产品评论数据挖掘的个性化推荐算法,以优化新推荐系统的性能。提取产品的特征,并分析用户的情感极性。本文基于用户的偏好模型和产品功能开发了一个推荐系统,以获得推荐结果。实验结果表明,与传统推荐算法相比,个性化推荐显着提高了准确性和召回率。

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