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A new collaborative filtering recommendation algorithm based on dimensionality reduction and clustering techniques

机译:基于降维和聚类技术的协同过滤推荐新算法

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With the advent and explosive growth of the Web over the past decade, recommender systems have become at the heart of the business strategies of e-commerce and Internet-based companies such as Google, YouTube, Facebook, Netflix, LinkedIn, Amazon, etc. Hence, the collaborative filtering recommendation algorithms are highly valuable and play a vital role at the success of such businesses in reaching out to new users and promoting their services and products. With the aim of improving the recommendation performance of such an algorithm, this paper proposes a new collaborative filtering recommendation algorithm based on dimensionality reduction and clustering techniques. The ¿-means algorithm and Singular Value Decomposition (SVD) are both used to cluster similar users and reduce the dimensionality. It proposes and evaluates an effective two stage recommender system that can generate accurate and highly efficient recommendations. The experimental results show that this new method significantly improves the performance of the recommendation systems.
机译:在过去十年中,随着Web的出现和爆炸性增长,推荐系统已成为电子商务和基于Internet的公司(例如Google,YouTube,Facebook,Netflix,LinkedIn,Amazon等)的业务战略的核心。因此,协作过滤推荐算法具有很高的价值,并且在此类企业成功接触新用户并推广他们的服务和产品方面起着至关重要的作用。为了提高这种算法的推荐性能,本文提出了一种新的基于降维和聚类技术的协同过滤推荐算法。 -均值算法和奇异值分解(SVD)都用于对相似的用户进行聚类并降低维数。它提出并评估了一个有效的两阶段推荐系统,该系统可以生成准确且高效的推荐。实验结果表明,该新方法显着提高了推荐系统的性能。

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