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Enhanced Prediction Algorithm for Item-Based Collaborative Filtering Recommendation

机译:增强了基于项目的协作滤波推荐预测算法

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As the Internet infrastructure has been developed, a substantial number of diverse effective applications have attempted to achieve the full potential offered by the infrastructure. Collaborative Filtering recommender system, one of the most representative systems for personalized recommendations in E-commerce on the Web, is a system assisting users in easily finding the useful information. But traditional collaborative filtering suffers some weaknesses with quality evaluation: the sparsity of the data, scalability, unreliable users. To address these issues, we have presented a novel approach to provide the enhanced prediction quality supporting the protection against the influence of malicious ratings, or unreliable users. In addition, an item-based approach is employed to overcome the sparsity and scalability problems. The proposed method combines the item confidence and item similarity, collectively called item trust using this value for online predictions. The experimental evaluation on MovieLens datasets shows that the proposed method brings significant advantages both in terms of improving the prediction quality and in dealing with malicious datasets.
机译:随着互联网基础设施的开发,大量不同的有效应用程序试图实现基础设施提供的全部潜力。协作过滤推荐系统,是网络上电子商务中的最具代表性的系统之一,是一个系统协助用户轻松查找有用信息。但传统的协作过滤具有质量评价的一些弱点:数据的稀疏性,可扩展性,不可靠的用户。为了解决这些问题,我们提出了一种新的方法来提供增强的预测质量,支持保护恶意评级的影响或不可靠的用户。此外,采用基于项目的方法来克服稀疏性和可扩展性问题。该提出的方法将项目置信度和项目相似性结合,统称地称为项目信任,使用此值用于在线预测。 Movielens数据集的实验评估表明,该方法在提高预测质量和处理恶意数据集方面都带来了显着的优势。

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