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Prediction of Severe Brain Damage Outcome Using Two Data Mining Methods

机译:使用两种数据采矿方法预测严重的脑损伤结果

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In this paper we report our results on prediction of the Glasgow Outcome Scale for patients affected by severe brain damage. We used two data mining methods: the LEM2 rule induction system and the BeliefSEEKER system generating belief networks. Additionally, the original data set, with missing attribute values and numerical attributes, was mined by the MLEM2 system (a modified version of LEM2). Though our results show that the rule set induced by LEM2 is worse than the rule set obtained by conversion of a belief network generated by the BeliefSEEKER, it is possible to simplify the LEM2 rule set to accomplish similar results.
机译:在本文中,我们向受严重脑损伤影响的患者预测Glasgow结果规模的结果。我们使用了两种数据挖掘方法:LEM2规则感应系统和Beliefseker系统产生信仰网络。另外,由MLEM2系统(LEM2的修改版本)开采了具有缺失属性值和数字属性的原始数据集。虽然我们的结果表明,LEM2引起的规则集比通过通过信仰Seker产生的信仰网络转换而获得的规则集,但是可以简化LEM2规则集以完成类似的结果。

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