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User Feedback-Based Refinement for Web Services Retrieval using Multiple Instance Learning

机译:使用多实例学习的基于用户反馈的Web服务检索优化

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A critical step in the process of reusing existing WSDL-specified components is the discovery of potentially relevant Web services. Traditional category based Web service retrieval usually can achieve good recall but worse precision because some semantically relevant Web services are not actually relevant as they cannot provide suitable interfaces. In this paper, we present an interactive Web services retrieval mechanism to refine the coarse retrieval results set in category based retrieval. In the refinement, the signature matching of Web services that concerning the structure of operation specifications is investigated from a multi-instances view. In detail, each Web service is represented as a bag in multiple instance learning, while each operation in this Web service is regarded as an instance. This representation lies in that a user regards a service as useful if at least one operation provided by this Web service is useful. Experimental results show that our approach can improve the retrieval performance significantly: It can gain 83% precision in average after two rounds of user relevance feedback
机译:重用现有WSDL指定的组件过程中的关键步骤是发现潜在相关的Web服务。传统的基于类别的Web服务检索通常可以实现良好的回忆性,但准确性较差,因为某些语义相关的Web服务实际上不相关,因为它们无法提供合适的接口。在本文中,我们提出了一种交互式Web服务检索机制,以细化基于类别的检索中的粗略检索结果集。在改进方案中,从多实例的角度研究了与操作规范的结构有关的Web服务的签名匹配。详细地,每个Web服务在多个实例学习中都表示为一个包,而此Web服务中的每个操作都被视为一个实例。这种表示方式在于,如果此Web服务提供的至少一项操作有用,则用户认为该服务有用。实验结果表明,该方法可以显着提高检索性能:经过两轮用户相关反馈,平均准确率达到83%

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