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Overcomplete Knowledge Mining, Organization and Ensemble: A Multiple Kernel Support Vector Machine Approach

机译:过度的知识挖掘,组织和集合:多核支持向量机方法

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摘要

Although data mining techniques are made tremendous progress, "knowledge-poor" is still a large gap of the current data mining systems. Few researches notice the fact that useful knowledge not only is the final results of an intelligent classification, clustering or prediction algorithm, but also runs through the whole process of data mining in which much potential useful information is viewed as redundancy and discarded. In this paper, we propose a new framework: over complete knowledge mining, organization and ensemble to make fully used of redundant information, incorporate expert knowledge and enhance the robustness of the final decision. As a popular data mining tool, multiple kernel support vector machine (MK-SVM) is used to systematically carry out a series of data mining tasks in those three stages of the framework such as feature selection, classification, decision rule extraction, associated rule extraction, subclass discovery, multiple feature subset and decision rule set ensemble. This approach is applied for medical decision support and achieves good performance.
机译:尽管数据挖掘技术取得了长足的进步,但是“知识贫乏”仍然是当前数据挖掘系统中的一大空白。很少有研究注意到这样一个事实,有用的知识不仅是智能分类,聚类或预测算法的最终结果,而且贯穿数据挖掘的整个过程,在该过程中,许多潜在的有用信息被视为冗余并被丢弃。在本文中,我们提出了一个新的框架:通过完整的知识挖掘,组织和集成,充分利用冗余信息,吸收专家知识并增强最终决策的鲁棒性。作为一种流行的数据挖掘工具,多内核支持向量机(MK-SVM)用于在框架的这三个阶段系统地执行一系列数据挖掘任务,例如特征选择,分类,决策规则提取,关联规则提取,子类发现,多特征子集和决策规则集集成。该方法可用于医疗决策支持,并具有良好的性能。

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