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A novel hybrid based recommendation system based on clustering and association mining

机译:基于聚类和关联挖掘的新型基于混合的推荐系统

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In recent years, E-commerce had made a tremendous impact on the world. However before the emergence of E-commerce, individuals can't skim the information about the products within short time of the period, so therefore recommendation system was introduced. The principle point of the recommendation system is to prescribe the most appropriate items to the user. Many of the recommendation systems mainly use content based method, collaborative filtering method, demographic based method and hybrid method. In this paper, the major challenges such as “data sparsity” and “cold start problem” are addressed. To overcome these challenges, we propose a new methodology by combining the clustering algorithm with Eclat Algorithm for better rules generation. Firstly we cluster the rating matrix based on the user similarity. Then we convert the clustered data into Boolean data and applying Eclat Algorithm on Boolean data efficient rules generation takes place. At last based on rules generation recommendation takes place. Our experiments shows that approach not only decrease the sparsity level but also increase the accuracy of a system.
机译:近年来,电子商务对世界产生了巨大的影响。但是,在电子商务出现之前,个人无法在短时间内浏览有关产品的信息,因此引入了推荐系统。推荐系统的原则是为用户开出最合适的物品。许多推荐系统主要使用基于内容的方法,协作过滤方法,基于人口统计的方法和混合方法。在本文中,解决了诸如“数据稀疏性”和“冷启动问题”之类的主要挑战。为了克服这些挑战,我们提出了一种将聚类算法与Eclat算法结合使用的新方法,以更好地生成规则。首先,我们基于用户相似性对评级矩阵进行聚类。然后,我们将聚类的数据转换为布尔数据,并在布尔数据上应用Eclat算法,从而有效地生成规则。最后,基于规则生成推荐。我们的实验表明,该方法不仅降低了稀疏度,而且还提高了系统的准确性。

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