使用粗糙集和概率神经网络挖掘原发性胆汁性肝硬化数据集

K. Revett, F. Gorunescu, M. Gorunescu, M. Ene
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引用次数: 9

摘要

提出了一种基于粗糙集和概率神经网络的决策支持系统。使用粗糙集是因为它们有能力降低数据集的维数,并产生一组易于理解的规则。采用概率神经网络对该数据集进行分类,并将分类精度与粗糙集进行比较。我们首先在一个真实的小型生物医学数据集上评估了这些机器学习算法的有效性。分类结果表明,两种分类器都产生了很高的准确率(87%或更高)。粗糙集算法产生了一组容易被领域专家解释的规则。PNN算法产生了对噪声和缺失值具有鲁棒性的分类器。这些初步结果表明,粗糙集和PNN机器学习方法可以成功地协同应用于包含各种属性类型、缺失值和多个决策类的生物医学数据集
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Mining A Primary Biliary Cirrhosis Dataset Using Rough Sets and a Probabilistic Neural Network
In this paper, a decision support system based on rough sets and a probabilistic neural network is presented. Rough sets were employed as they have the capacity to reduce the dimensionality of the dataset and also produce a set of readily understandable rules. A probabilistic neural network was also employed to classify this dataset, comparing the classification accuracy to that obtained with rough sets. We firstly evaluate the effectiveness of these machine learning algorithms on a real-life small biomedical dataset. The classification results indicate that both classifiers produce a high level of accuracy (87% or better). The rough sets algorithm produced a set of rules that are readily interpretable by a domain expert. The PNN algorithm produced a classifier that was robust to noise and missing values. These preliminary results indicate that the both rough sets and PNN machine learning approaches can be successfully applied synergistically to biomedical datasets that contain a variety of attribute types, missing values and multiple decision classes
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