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An efficient framework for heart disease classification using feature extraction and feature selection technique in data mining

机译:在数据挖掘中使用特征提取和特征选择技术进行心脏病分类的有效框架

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In the classification of the heart disease data set a high dimensional data set is used in the pre processing stage of data mining process. This raw dataset consist of redundant and inconsistent data thereby increasing the search space and storage of the data. To achieve the classification accuracy we need to remove the redundant and the irrelevant data present. The dimensionality reduction technique is used to compress the high dimensional data to lower dimensional data with some constraints. A framework is integrated for the easy prediction of the heart disease. The framework is created by using the principal component analysis (PCA) to extract the features and mathematical model is computed to select the relevant features using the relevant constraint. This proposed work helps in improving the efficiency, accuracy and speed of the process. This can be applied in the applications such as information retrieval, image processing and pattern matching.
机译:在心脏病数据集的分类中,在数据挖掘过程的预处理阶段使用了高维数据集。该原始数据集包含冗余和不一致的数据,从而增加了搜索空间和数据存储。为了达到分类的准确性,我们需要删除多余的和无关的数据。降维技术用于在某些约束下将高维数据压缩为低维数据。集成了一个框架,可轻松预测心脏病。通过使用主成分分析(PCA)提取特征来创建框架,并使用相关约束计算数学模型以选择相关特征。这项拟议的工作有助于提高流程的效率,准确性和速度。这可以应用于诸如信息检索,图像处理和模式匹配之类的应用中。

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