首页> 外文期刊>University of Bucharest. Annals. Mathematical Series >Evolutionary conditional rules versus support vector machines weighted formulas for liver fibrosis degree prediction
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Evolutionary conditional rules versus support vector machines weighted formulas for liver fibrosis degree prediction

机译:进化条件规则与支持向量机加权公式的肝纤维化程度预测

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Present paper brings together two novel evolutionary techniques designed for classification and applied for the differentiation among five possible degrees of liver fibrosis within chronic hepatitis C. A purely evolutionary method - the cooperative coevolutionary classifier - endowed with a hill climbing algorithm for the selection of influential attributes is put in opposition to a hybridized approach for the task - the evolutionary support vector machine. Each of the two exhibits interesting resulting features as regards additional information on the importance of each indicator and the interaction among these for the final predicted outcome. The medical experts can eventually benefit from both methodologies as a support for their decision making and decide what further knowledge they need to extract from them, i.e. either in the form of conditional rules, weighted formulas or both.
机译:本文汇集了两种新颖的进化技术,用于分类,并适用于慢性丙型肝炎的五个可能程度的肝纤维化之间的区分。一种纯粹的进化方法-合作协同进化分类器-具有爬山算法来选择影响属性与这项任务的混合方法相反-进化支持向量机。相对于关于每个指标的重要性以及这些指标之间对于最终预测结果的相互作用的其他信息,这两个指标均表现出有趣的结果特征。医学专家最终可以从这两种方法中受益,以支持他们的决策,并确定他们需要从条件中提取哪些进一步的知识,即以条件规则,加权公式的形式或两者兼有。

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