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Semantic Pattern Mining Based Web Service Recommendation

机译:基于语义模式挖掘的Web服务推荐

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This paper deals with the problem of web service recommendation. We propose a new content-based recommendation system. Its originality comes from the combination of probabilistic topic models and pattern mining to capture the maximal common semantic of sets of services. We define the notion of semantic patterns which are maximal frequent itemsets of topics. In the off-line process, the computation of these patterns is performed by using frequent concept lattices in order to find also the sets of services associated to the semantic patterns. These sets of services are then used to recommend services in the on-line process. We compare the results of the proposed system in terms of precision and normalized discounted cumulative gain with Apache Lucene and SAWSDL-MX2 Matchmaker on real-world data. Our proposition outperforms these two systems.
机译:本文涉及Web服务推荐问题。我们提出了一种新的基于内容的推荐系统。它的原创性来自概率主题模型和模式挖掘的组合,以捕获最大常见的服务。我们定义了语义模式的概念,这些模式是最大频繁的主题项。在离线过程中,通过使用频繁的概念格子来执行这些模式的计算,以便找到与语义模式相关联的服务集。然后,这些服务将用于在线过程中推荐服务。我们将建议系统的结果与Apache Lucene和Sawsdl-MX2 Matchmaker进行了精确度和归一化的折扣累积增益,在真实世界中。我们的命题优于这两个系统。

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