人类蛋白质功能预测的决策树分类器

M. Singh, P. Singh, Hardeep Singh
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引用次数: 11

摘要

药物发现者需要预测导致人体各种疾病的蛋白质的功能。提出的方法是使用基于优先级的sdf(序列衍生特征)包,这样可以通过深度探索而不是排除来创建决策树。本文提出了一种新的决策树归纳法,利用不确定性测度进行最优属性选择。该模型在深度方面比现有的C4.5技术创建了更好的决策树。深度更大的树确保在功能类分配之前进行更多的测试,从而产生比现有预测技术更准确的预测。对于相同的测试数据,新的HPF(人类蛋白质功能)预测器的百分比准确度为72%,现有预测技术的百分比准确度为44%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decision Tree Classifier for Human Protein Function Prediction
Drug discoverers need to predict the functions of proteins which are responsible for various diseases in human body. The proposed method is to use priority based packages of SDFs (Sequence Derived Features) so that decision tree may be created by their depth exploration rather than exclusion. This research work develops a new decision tree induction technique in which uncertainty measure is used for best attribute selection. The model creates better decision tree in terms of depth than the existing C4.5 technique. The tree with greater depth ensures more number of tests before functional class assignment and thus results in more accurate predictions than the existing prediction technique. For the same test data, the percentage accuracy of the new HPF (human protein function) predictor is 72% and that of the existing prediction technique is 44%.
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