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Leverage Label and Word Embedding for Semantic Sparse Web Service Discovery

机译:利用标签和单词嵌入语义稀疏Web服务发现

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Information retrieval-based Web service discovery approach suffers from the semantic sparsity problem caused by lacking of statistical information when the Web services are described in short texts. To handle this problem, external information is often utilized to improve the discovery performance. Inspired by this, we propose a novel Web service discovery approach based on a neural topic model and leveraging Web service labels. More specifically, words in Web services are mapped into continuous embeddings, and labels are integrated by a neural topic model simultaneously for embodying external semantics of the Web service description. Based on the topic model, the services are interpreted into hierarchical models for building a service querying and ranking model. Extensive experiments on several datasets demonstrated that the proposed approach achieves improved performance in terms of F-measure. The results also suggest that leveraging external information is useful for semantic sparse Web service discovery.
机译:信息检索的Web服务发现方法在短文本中缺少Web服务时缺乏统计信息引起的语义稀疏问题。为了处理这个问题,通常利用外部信息来改善发现性能。灵感来自于此,我们提出了一种基于神经主题模型的新颖的Web服务发现方法,并利用Web服务标签。更具体地,Web服务中的单词被映射到连续嵌入品中,并通过一个神经主题模型集成了标签,用于体现Web服务描述的外部语义。基于主题模型,该服务被解释为用于构建服务查询和排名模型的分层模型。在若干数据集上的广泛实验表明,该方法在F测量方面实现了改善的性能。结果还表明,利用外部信息可用于语义稀疏Web服务发现。

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