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首页> 外文期刊>Indonesian Journal of Computing and Cybernetics Systems >Implementation of Genetic Algorithms and Momentum Backpropagation in Classification of Subtype Cells Acute Myeloid Leukimia
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Implementation of Genetic Algorithms and Momentum Backpropagation in Classification of Subtype Cells Acute Myeloid Leukimia

机译:遗传算法的实施亚型细胞分类急性髓性白血病分类中的遗传算法和动量估计

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摘要

Acute Myeloid Leukimia (AML) is a type of cancer which attacks white blood cells from myeloid. AML subtypes M1, M2, and M3 are affected by the same type of cells called myeloblasts, so it needs more detailed analysis to classify.Momentum Backpropagation? is used to classified. In its application, optimal selection of architecture, learning rate, and momentum is still done by random trial. This is one of the disadvantage of Momentum Backpropagation. This study uses a genetic algorithm (GA) as an optimization method to get the best architecture, learning rate, and momentum of artificial neural network. Genetic algorithms are one of the optimization techniques that emulate the process of biological evolution. The dataset used in this study is numerical feature data resulting from the segmentation of white blood cell images taken from previous studies which has been done by Nurcahya Pradana Taufik Prakisya. Based on these data, an evaluation of the Momentum Backpropagation process was conducted the selection parameter in a random trial with the genetic algorithm. Furthermore, the comparison of accuracy values was carried out as an alternative to the ANN learning method that was able to provide more accurate values with the data used in this study. The results showed that training and testing with genetic algorithm optimization of ANN parameters resulted in an average memorization accuracy of 83.38% and validation accuracy of 94.3%. Whereas in other ways, training and testing with momentum backpropagation random trial resulted in an average memorization accuracy of 76.09% and validation accuracy of 88.22%.
机译:急性髓白血病(AML)是一种攻击髓样患者的癌症。 AML亚型M1,M2和M3受到称为髓封类型的相同类型的细胞影响,因此需要更详细的分析来分类.Momentum Backpropagation?用于分类。在其应用中,随机试验仍然通过随机试验来完成架构的最佳选择,学习率和势头。这是动量背交量的缺点之一。本研究使用遗传算法(GA)作为优化方法,以获得人工神经网络的最佳架构,学习率和势头。遗传算法是模拟生物进化过程的优化技术之一。本研究中使用的数据集是由来自先前研究的白血细胞图像的分割产生的数字特征数据,这些特征数据是由Nurcahya Pradana Taukisya进行的。基于这些数据,通过遗传算法在随机试验中进行了对动量反向过程的评估。此外,精度值的比较是作为能够通过本研究中使用的数据提供更准确的值的ANN学习方法的替代。结果表明,随着ANN参数的遗传算法优化的训练和测试,导致平均记忆精度为83.38%,验证精度为94.3%。然而,以其他方式,培训和测试随着动量反向化随机试验,平均记忆精度为76.09%,验证准确度为88.22%。

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