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Combining data mining and ontology engineering to enrich ontologies and linked data

机译:将数据挖掘和本体工程相结合,以丰富本体和链接数据

摘要

In this position paper, we claim that the need for time consuming data preparation and result interpretation tasks in knowledge discovery, as well as for costly expert consultation and consensus building activities required for ontology building can be reduced through exploiting the interplay of data mining and ontology engineering. The aim is to obtain in a semi-automatic way new knowledge from distributed data sources that can be used for inference and reasoning, as well as to guide the extraction of further knowledge from these data sources. The proposed approach is based on the creation of a novel knowledge discovery method relying on the combination, through an iterative ?feedbackloop?, of (a) data mining techniques to make emerge implicit models from data and (b) pattern-based ontology engineering to capture these models in reusable, conceptual and inferable artefacts.
机译:在本立场文件中,我们声称,可以通过利用数据挖掘和本体的相互作用来减少知识发现中耗时的数据准备和结果解释任务以及本体构建所需的昂贵的专家咨询和共识构建活动的需要工程。目的是以半自动方式从分布式数据源中获取新知识,以用于推理和推理,并指导从这些数据源中提取更多知识。所提出的方法是基于一种新颖的知识发现方法的创建,该方法依赖于通过迭代“反馈回路”的组合,该组合通过以下方式进行组合:(a)数据挖掘技术以从数据中产生隐式模型,以及(b)基于模式的本体工程在可重用,概念性和可推断的伪像中捕获这些模型。

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