首页> 外文会议>International Joint Conference on Artifical Intelligence(IJCAI-05); 20050730-0805; Edinburgh(GB) >Exploiting Background Knowledge for Knowledge-Intensive Subgroup Discovery
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Exploiting Background Knowledge for Knowledge-Intensive Subgroup Discovery

机译:利用背景知识进行知识密集型亚组发现

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In general, knowledge-intensive data mining methods exploit background knowledge to improve the quality of their results. Then, in knowledge-rich domains often the interestingness of the mined patterns can be increased significantly. In this paper we categorize several classes of background knowledge for subgroup discovery, and present how the necessary knowledge elements can be modelled. Furthermore, we show how subgroup discovery methods benefit from the utilization of background knowledge, and discuss its application in an incremental process-model. The context of our work is to identify interesting diagnostic patterns to supplement a medical documentation and consultation system. We provide a case study in the medical domain, using a case base from a real-world application.
机译:通常,知识密集型数据挖掘方法利用背景知识来提高其结果的质量。然后,在知识丰富的领域中,经常可以极大地提高挖掘模式的趣味性。在本文中,我们对用于子组发现的几类背景知识进行了分类,并介绍了如何对必要的知识元素进行建模。此外,我们展示了子组发现方法如何从背景知识的利用中受益,并讨论了其在增量过程模型中的应用。我们的工作背景是确定有趣的诊断模式,以补充医学文档和咨询系统。我们使用实际应用程序中的案例库提供医学领域的案例研究。

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