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Momentum Backpropagation Optimization for Cancer Detection Based on DNA Microarray Data

机译:基于DNA微阵列数据的癌症检测动量反向优化

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Early detection of cancer can increase the success of treatment in patients with cancer. In the latest research, cancer can be detected through DNA Microarrays. Someone who suffers from cancer will experience changes in the value of certain gene expression. ?In previous studies, the Genetic Algorithm as a feature selection method and the Momentum Backpropagation algorithm as a classification method provide a fairly high classification performance, but the Momentum Backpropagation algorithm still has a low convergence rate because the learning rate used is still static. The low convergence rate makes the training process need more time to converge. Therefore, in this research an optimization of the Momentum Backpropagation algorithm is done by adding an adaptive learning rate scheme. The proposed scheme is proven to reduce the number of epochs needed in the training process from 390 epochs to 76 epochs compared to the Momentum Backpropagation algorithm. The proposed scheme can gain high accuracy of 90.51% for Colon Tumor data, and 100% for Leukemia, Lung Cancer, and Ovarian Cancer data.
机译:早期发现癌症可以增加癌症患者治疗的成功。在最新的研究中,可以通过DNA微阵列检测癌症。患有癌症的人将经历某些基因表达的价值的变化。 ?在先前的研究中,作为特征选择方法的遗传算法和作为分类方法的动量反向算法提供了相当高的分类性能,但是势头反向衰减算法仍然具有低收敛速率,因为所使用的学习率仍然是静态的。低收敛速度使得培训过程需要更多的时间来收敛。因此,在该研究中,通过添加自适应学习速率方案来完成动量反向验证算法的优化。与动量反向算法相比,已审议拟议的计划将培训过程中培训过程中所需的时期数量减少到76时期。所提出的方案可以高精度为结肠肿瘤数据的90.51%,适用于白血病,肺癌和卵巢癌数据100%。

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