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A Memory-based Collaborative Filtering Algorithm for Recommending Semantic Web Services

机译:推荐语义Web服务的基于内存的协同过滤算法

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摘要

This paper focuses on the construction of collaborative filtering (CF) recommender systems for Web services. The main contribution of the proposed approach is to reduce the problems caused by sparse rating data - one of the main shortcomings of memory-base CF algorithms - using semantic markup of Web services. In the presented algorithm, the similarity between users is computed using the Pearson correlation coefficient, extended to consider also the ratings of users for similarity services. Likewise, to predict the rating a user would give to a target service, the algorithm considers the ratings of neighbor users for the target service and also for similar services. Experiments conducted to evaluate the algorithm show that our approach has a significant impact on the accuracy of the algorithm, particularly when rating data are sparse.
机译:本文重点介绍用于Web服务的协作过滤(CF)推荐器系统的构建。所提出的方法的主要贡献是使用Web服务的语义标记来减少由稀疏的评级数据(基于内存的CF算法的主要缺点之一)引起的问题。在提出的算法中,使用皮尔森相关系数来计算用户之间的相似度,并扩展到考虑相似服务用户的评分。同样,为了预测用户对目标服务的评级,该算法会考虑目标用户以及类似服务的邻居用户的评级。评估算法的实验表明,我们的方法对算法的准确性有重大影响,特别是在评估数据稀疏的情况下。

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