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首页> 外文期刊>International Journal of Business Intelligence and Data Mining >Improved artificial neural network with aid of artificial bee colony for medical data classification
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Improved artificial neural network with aid of artificial bee colony for medical data classification

机译:改进人工神经网络,借助人工蜂殖民地进行医疗数据分类

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摘要

The ultimate aim of the proposed method is to establish a model for classification of medical data. Various methods have been generated to health related data to detect upcoming health fitness usage including detecting person's spending and illness related issues for diseased persons. In order to achieve promising results in medical data classification, we have planned to utilise orthogonal local preserving projection and optimal classifier. Initially, the pre-processing will be applied for extracting useful information and to convert suitable sample from raw medical datasets. Here, orthogonal local preserving projection (OLPP) is used to reduce the feature dimension. Once the feature reduction is formed, the prediction will be done based on the optimal classifier. In the optimal classifier, artificial bee colony algorithm will be used with neural network. The effectiveness of our proposed is measured in terms of accuracy, sensitivity and specificity. Here, Switzerland dataset achieves the maximum accuracy value 95.935%.
机译:所提出的方法的最终目标是建立一个分类医学数据的模型。已经生成了各种方法对健康相关数据,以检测即将到来的健康健康用法,包括检测人员的支出和疾病人员的疾病相关问题。为了实现医疗数据分类的有希望的结果,我们计划利用正交局部保留投影和最佳分类器。最初,将应用预处理来提取有用信息并从原始医疗数据集转换合适的样本。这里,正交局部保留投影(OLPP)用于减小特征尺寸。一旦形成特征减小,就会基于最佳分类器完成预测。在最佳分类器中,人造蜂殖民地算法将与神经网络一起使用。我们提出的有效性在准确性,敏感性和特异性方面测量。在这里,瑞士数据集实现了最大精度值95.935%。

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