Personal Recommender System Based on Agglomerative Clustering together with User-based and Item-based Collaborative Filtering Methods

Ratawan Phantunin, N. Chirawichitchai
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Abstract

The objective of this study is to develop and increase efficiency of Personal Integrated Recommender System. The Recommender System plays an important role and is crucial to our everyday lives in online shopping and online services. We will find that the thing that comes with when shopping for products or using services is to recommend products or services. A good Recommender System helps generate more sales. In the meantime, various problems could be found with the system, e.g. scalable data, data sparsity, data accuracy, and having a lot of new users. Therefore, new techniques have been introduced and integrated with the recommender system in order to solve the problems and improve for greater recommender system efficiency. In this study, an Agglomerative Clustering together with a User-base and Item-base Collaborative Filtering Method is proposed. By combining the strengths of each method, we can improve the recommender system efficiency and accuracy. This combination helps to solve the problems of scalable data, data sparsity, and having a lot of new users. The results show that it reduces the processing time and increases precision. Therefore, we can conclude that
基于聚类与基于用户和基于项目的协同过滤的个人推荐系统
本研究的目的是开发和提高个人综合推荐系统的效率。推荐系统在我们的日常生活中扮演着重要的角色,对网上购物和网上服务至关重要。我们会发现,在购买产品或使用服务时,随之而来的是推荐产品或服务。一个好的推荐系统有助于产生更多的销售。与此同时,系统也会出现各种问题,例如数据的可扩展性、数据的稀疏性、数据的准确性以及大量的新用户。因此,为了解决问题和提高推荐系统的效率,人们引入了新的技术并将其与推荐系统相结合。本文提出了一种基于用户和项目的聚类协同过滤方法。通过结合每种方法的优点,可以提高推荐系统的效率和准确性。这种组合有助于解决可伸缩数据、数据稀疏性和拥有大量新用户的问题。结果表明,该方法缩短了加工时间,提高了加工精度。因此,我们可以得出结论
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