基于协同聚类的混合协同过滤模型

Aamana, N. Iltaf, H. Afzal, Qurat Ul Ain
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引用次数: 0

摘要

推荐系统是为客户提供相关建议的信息过滤智能系统。为客户生成相关信息的主要目的是改善他们的体验。一个能给用户提供快速、准确的推荐和良好体验的推荐系统更有吸引力,也更能吸引用户的兴趣。随着互联网用户和项目的日益壮大,推荐系统面临着许多挑战。其中一个挑战是数据稀疏性。高度稀疏的数据会降低预测的准确性。高质量的预测取决于推荐系统如何解决其挑战。本研究提出了基于协同过滤的推荐系统技术。使用基于降维的光谱共聚类技术确定邻居。该方法将基于置信度的加权融合方法(CBWF)与基于用户的评分预测方法(UbCF)和基于项目的评分预测方法(IbCF)相结合。与置信度一起使用参数σ。以前σ是根据不同的数据集而变化的。在此研究中,参数σ被控制并依赖于基于个体用户和物品状态的关联特征。谱共聚类克服了数据集的稀疏性和可扩展性的限制。而基于置信度加权和的UbCF和IbCF的融合提高了系统的预测精度。最后,利用预测评价指标将所提方法的结果与常规方法、一维聚类、二维聚类和HCF技术进行比较,以显示本研究工作所取得的进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Co-Clustering based Hybrid Collaborative Filtering Model
Recommender systems are intellectual systems of information filtering that makes relevant suggestions for customers. Main propose of generating relevant information for customers is to improve their experience. A recommender system which gives fast, accurate recommendations and good experience to users is more attractive and develop more interests in users. As the strength of internet users and items are growing day by day many challenges are faced by recommender systems. One of the challenges is data sparsity. Highly sparse data gives decreased accuracy of predictions. High quality predictions are dependent upon how well the recommender system address its challenges. This research work proposes Collaborative filtering based recommender system technique. Neighbours are determined using dimensionality reduction based Spectral Co-clustering technique. The approach presented is Confidence based weighted fusion method (CBWF) merged with the rating predictions from User based CF (UbCF) and Item based (IbCF). Along with confidence a parameter σ is used. Previously σ was varied based on the datasets. In this research parameter σ is controlled and made dependent upon the correlation characteristics of individual users and items based on their state. Spectral-co-clustering overcomes the sparseness of dataset and limitation of scalability. While fusion of UbCF and IbCF in confidence based weighted sum improves the prediction accuracy of system. Finally predictive evaluation metrics are used to compare results for proposed technique with conventional techniques, one dimensional clustering, two dimensional clustering and HCF techniques to show the improvement that this research work has made.
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