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Application of Breiman's Random Forest to Modeling Structure-Activity Relationships of Pharmaceutical Molecules

机译:Breiman随机林在药物分子建模结构关系中的应用

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Leo Breiman's Random Forest ensemble learning procedure is applied to the problem of Quantitative Structure-Activity Relationship (QSAR) modeling for pharmaceutical molecules. This entails using a quantitative description of a compound's molecular structure to predict that compound's biological activity as measured in an in vitro assay. Without any parameter tuning, the performance of Random Forest with default settings on six publicly available data sets is already as good or better than that of three other prominent QSAR methods: Decision Tree, Partial Least Squares, and Support Vector Machine. In addition to reliable prediction accuracy, Random Forest provides variable importance measures which can be used in a variable reduction wrapper algorithm. Comparisons of various such wrappers and between Random Forest and Bagging are presented.
机译:Leo Breiman的随机森林集合学习程序适用于药物分子的定量结构 - 活性关系(QSAR)建模的问题。这需要使用化合物的分子结构的定量描述,以预测在体外测定中测量的化合物的生物活性。如果没有任何参数调整,则六个公开数据集的随机林的性能已经与其他三种突出的QSAR方法的性能一样好或更好:决策树,偏最小二乘和支持向量机。除了可靠的预测精度之外,随机森林还提供可变的重要测量,可用于可变缩小包装算法。展示了各种这种包装纸的比较以及随机林和装袋之间的比较。

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