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Comparison between Levenberg-Marquardt and Scaled Conjugate Gradient training algorithms for Breast Cancer Diagnosis using MLP

机译:Levenberg-Marquardt和比例共轭梯度训练算法用于MLP诊断乳腺癌的比较

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Computerized diagnostic tools have received significant attention over the past few decades, in order to assist medical practitioners in diagnosis of disease based on a variety of test results. It provides a fast and accurate method for diagnosis, particularly in cases where medical practitioners need to deal with difficult diagnosis problems. In this paper, we present an examination of two popular training algorithms (Levenberg-Marquardt and Scaled Conjugate Gradient) for Multilayer Perceptron (MLP) diagnosis of breast cancer tissues. We test the performance of the training algorithms using features extracted from the Wisconsin Breast Cancer Database (WBCD), a benchmark dataset that has been extensively used in literature for breast cancer diagnosis. Based on our results, we conclude that both algorithms were comparable in terms of accuracy and speed. However, the LM algorithm has shown slightly better advantage in terms of accuracy (as evidenced in the average training accuracy and MSE) and speed (as evidenced in the average training iterations) on the best MLP structure (with 10 hidden units).
机译:计算机化诊断工具在过去的几十年中受到了重大关注,以帮助基于各种测试结果的疾病诊断。它提供了一种快速准确的诊断方法,特别是在医疗从业者需要处理困难诊断问题的情况下。在本文中,我们对乳腺癌组织的多层感知(MLP)诊断进行了两种流行的训练算法(Levenberg-Marquardt和Scaled缀合物梯度)的检查。我们使用从威斯康星乳腺癌癌数据库(WBCD)中提取的特征的特征来测试培训算法的性能,该数据集是广泛用于乳腺癌诊断的文献中的基准数据集。根据我们的结果,我们得出结论,两种算法在准确性和速度方面都是相当的。然而,LM算法在精度方面显示出稍微更好的优势(如平均训练精度和MSE在平均训练准确度和MSE中所证明的)和速度(如平均训练迭代)上的最佳MLP结构(具有10个隐藏单元)。

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