A Service Annotation Quality Improvement Approach Based on Efficient Human Intervention

Xuehao Sun, Shizhan Chen, Zhiyong Feng, Weimin Ge, Keman Huang
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引用次数: 1

Abstract

Semantic Annotation plays an essential role in automatic service discovery and composition. However, existing approaches and tools cannot achieve high annotation quality to ensure the semantic service application. Meanwhile, the semi-automatic strategies for improving the annotation quality are time-consuming. To further improve the efficiency as well as the quality of the annotation, this paper presents an effective method involving human-computer interaction to further optimize the annotation procedure. Besides employing the feedback and propagation strategy to semi-automatically improve the annotation quality, the strategy to involve the manual annotation is developed when the efficiency of semi-automatically strategy is related low. To optimize the manual annotation procedure, a clustering based approach is presented to select the most impacted candidates to optimize the annotation improvement. In addition, to help the annotators to choose the correct annotation, the local ontology restriction based method is further designed to improve the recommendation performance. The experiments show that our approach effectively involving the human intervention can significantly improve the annotation quality, faster the quality improvement procedure and reduce the manual load by increasing the recommendation accuracy.
基于高效人工干预的服务标注质量改进方法
语义标注在自动服务发现和组合中起着重要的作用。然而,现有的方法和工具无法实现高质量的标注,以保证语义服务的应用。同时,提高标注质量的半自动策略非常耗时。为了进一步提高标注的效率和质量,本文提出了一种人机交互的有效方法来进一步优化标注过程。在采用反馈传播策略半自动提高标注质量的同时,针对半自动标注效率较低的情况,提出了引入人工标注的策略。为了优化人工标注过程,提出了一种基于聚类的方法来选择受影响最大的候选对象来优化标注改进。此外,为了帮助标注者选择正确的标注,进一步设计了基于局部本体约束的方法来提高推荐性能。实验表明,我们的方法有效地引入了人工干预,可以显著提高标注质量,加快质量改进过程,并通过提高推荐准确率来减少人工负荷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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