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首页> 外文期刊>International journal of computational vision and robotics >Classification of type-2 diabetic patients by using Apriori and predictive Apriori
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Classification of type-2 diabetic patients by using Apriori and predictive Apriori

机译:通过使用Apriori和预测Apriori对2型糖尿病患者进行分类

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摘要

In this study a new approach to generate association rules on numeric data is proposed. It has been observed that equal binning techniques are not always useful to convert numerical data into categorical data, specifically in medical data. The proposed approach utilise a modified equal width binning interval technique to discretise continuous valued attributes to nominal based on opinion taken from medical experts. Approximate width of the desired intervals is chosen based on the advice given by medical experts and is given as an input to the model. Apriori algorithm usually used for the market basket analysis is used to generate rules on Pima Indian diabetes data. The study compares the quality of different association rule mining approaches for classification. The proposed approach utilises standard Apriori and predictive Apriori algorithms to generate association rules and highlights the importance of the often neglected pre-processing steps in data mining process. The proposed approach can help doctors to explore their data in a better way.
机译:在这项研究中,提出了一种在数字数据上生成关联规则的新方法。已经观察到,等分箱技术并不总是有用的,以将数值数据转换为分类数据,特别是在医学数据中。所提出的方法利用改进的等宽合并间隔技术,根据医学专家的意见将连续值属性离散化为名义值。根据医学专家的建议选择所需间隔的近似宽度,并将其作为模型的输入。通常用于市场分析的Apriori算法用于生成有关Pima印度糖尿病数据的规则。该研究比较了不同关联规则挖掘方法进行分类的质量。所提出的方法利用标准Apriori和预测Apriori算法生成关联规则,并强调了数据挖掘过程中经常被忽略的预处理步骤的重要性。所提出的方法可以帮助医生更好地探索其数据。

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