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Combined Rule Extraction and Feature Elimination in Supervised Classification

机译:综合规则提取和特征消除在监督分类

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摘要

There are a vast number of biology related research problems involving a combination of multiple sources of data to achieve a better understanding of the underlying problems. It is important to select and interpret the most important information from these sources. Thus it will be beneficial to have a good algorithm to simultaneously extract rules and select features for better interpretation of the predictive model. We propose an efficient algorithm, Combined Rule Extraction and Feature Elimination (CRF), based on 1-norm regularized random forests. CRF simultaneously extracts a small number of rules generated by random forests and selects important features. We applied CRF to several drug activity prediction and microarray data sets. CRF is capable of producing performance comparable with state-of-the-art prediction algorithms using a small number of decision rules. Some of the decision rules are biologically significant.
机译:存在大量与生物学相关的研究问题,这些问题涉及多个数据源的组合,以更好地理解潜在问题。从这些来源中选择和解释最重要的信息非常重要。因此,拥有一个好的算法来同时提取规则和选择特征以更好地解释预测模型将是有益的。我们提出了一种有效的算法,即基于1范式正则化随机森林的组合规则提取和特征消除(CRF)。 CRF同时提取随机森林生成的少量规则并选择重要特征。我们将CRF应用于几种药物活性预测和微阵列数据集。 CRF能够使用少量决策规则产生与最新的预测算法相当的性能。一些决策规则具有生物学意义。

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