Hybrid Recommendation System for Better Mining Rules Generation of User and Consumer Data

G. Gupta, Atul D. Newase
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Abstract

In today's world, data and information play an essential role in each field, including online and software data. However, it is a challenging task to abstract & sorted consumer data for use. To solve this data overloading and sorting of useful data, a Hybrid Recommendation System (HRS) comes into existence. HRS's focus is to suggest the best applicable and useful items to the related customers or users. The recommendations can be applied to decision-making processes, like which types of things to get, which new videos to watch, which online latest games and software to search, or the best product. The benefits of the Hybrid Recommendation System persist on the quality efficiency of the system. The efficient things can be calculated in easy to use, reliable, accurate, and expandable. This proposed HRS's primary goal is to better mining rules based on user and consumer data to improve the Hybrid Recommendation System's accuracy.
在当今世界,数据和信息在各个领域发挥着至关重要的作用,包括在线和软件数据。然而,对消费者数据进行抽象和分类是一项具有挑战性的任务。为了解决这一问题,并对有用数据进行分类,混合推荐系统(HRS)应运而生。HRS的重点是向相关客户或用户建议最适用和最有用的项目。这些建议可以应用于决策过程,比如买哪种类型的东西,看哪些新视频,搜索哪些最新的在线游戏和软件,或者最好的产品。混合推荐系统的优点在于系统的质量和效率。有效的东西可以计算在易于使用,可靠,准确,可扩展。本文提出的混合推荐系统的主要目标是更好地挖掘基于用户和消费者数据的规则,以提高混合推荐系统的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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