Analysis of Customized Optimizers of Convolutional Neural Networks for Lung Cancer Detection

Vanita G. Tonge, Asha Ambhaikar
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Abstract

Convolutional Neural Network (CNN) is a powerful tool used for classifying medical images. Based on extracted features from CT scan Image CNN classify it as malicious or non-malicious. Optimizers are strategies or methodologies which make a change in the weights of parameters in several iterations and try to minimize losses. Tuning hyperparameters of networks is time consuming and cumbersome task. For training a dataset many customized optimizers and metaheuristic algorithms are available. In this research study, the implementation and analysis of various customized optimizers are done on IQ-OTH/NCCD dataset. Out of six optimizers, Adam reaches 99.84% whereas RmsProp, Nadam and Admax occupied 1.
用于肺癌检测的卷积神经网络定制优化器分析
卷积神经网络(CNN)是用于医学图像分类的强大工具。基于CT扫描图像提取的特征,CNN将其分为恶意和非恶意。优化器是在几次迭代中改变参数权重并尽量减少损失的策略或方法。网络超参数调优是一项耗时且繁琐的任务。对于训练数据集,有许多定制的优化器和元启发式算法可用。在本研究中,对IQ-OTH/NCCD数据集进行了各种定制优化器的实现和分析。在6个优化器中,Adam达到99.84%,而RmsProp、Nadam和Admax占1。
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