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A scalable automatic service discovery approach based on probabilistic topic model

机译:基于概率主题模型的可扩展的自动服务发现方法

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摘要

Current service discovery approaches mainly focus on syntax matchmaking, which contains little semantic information to discover services automatically. This paper proposes a scalable automatic service discovery approach based on probabilistic topic model. Specifically, a novel service description model PTWSDM is proposed. With this model, heterogeneous service descriptions can be represented in a topic vector form on the same homogeneous plane. For the scarcity of word co-occurrence patterns in service functional descriptions, Biterm topic model is introduced to extract latent topics. Finally, a stream algorithm for topic model updating is introduced in order that the proposed approach is scalable and adaptable for large-scale dynamic registry. Experimental results confirm that the proposed approach outperforms the state-of-the-art solutions in terms of precision and normalised discounted cumulative gain values. It also has good time performance and scalability.
机译:当前的服务发现方法主要集中在语法匹配上,语法匹配很少包含语义信息以自动发现服务。本文提出了一种基于概率主题模型的可扩展的自动服务发现方法。具体而言,提出了一种新颖的服务描述模型PTWSDM。使用此模型,异构服务描述可以以主题向量形式在同一同质平面上表示。针对服务功能描述中单词共现模式的不足,引入了Biterm主题模型来提取潜在主题。最后,介绍了一种用于主题模型更新的流算法,以使所提出的方法具有可扩展性,并适用于大规模动态注册表。实验结果证实,该方法在精度和归一化折现累积增益值方面均优于最新解决方案。它还具有良好的时间性能和可伸缩性。

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