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Optimization of training backpropagation algorithm using nguyen widrow for angina ludwig diagnosis

机译:利用Nguyen Widrow训练反向验证算法优化心绞痛诊断

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Tooth and mouth disease is a common disease, with a prevalence of more than 40% (children aged less than 7 years) in milk teeth and about 85% (adults aged 17 years and over) on permanent teeth. Angina Ludwig is one of mouth disease type that occurs due to infection of the tooth root and trauma of the mouth. 'In this study back propagation algorithm applied to diagnose AnginaLudwig disease (using Nguyen Widrow method in optimization of training time). From the experimental results, it is known that the average BPNN by using Nguyen Widrow is much faster which is about 0.0624 seconds and 0.1019 seconds (without NguyenWidrow). In contrast, for pattern recognition needs, found that back propagation without Nguyen Widrow is much better that is with 90% accuracy (only 70% with NguyenWidrow).
机译:牙齿和口感疾病是一种常见的疾病,患有牛奶牙齿的40%以上的患病率超过40%(少于7岁),约85%(成人17岁以上)在常牙牙齿上。心绞痛是口腔疾病类型之一,由于感染口腔牙根和口腔创伤而发生。 “在这项研究中,回到诊断anginaludwig疾病的反向传播算法(使用Nguyen Widrow方法优化训练时间)。从实验结果中,已知通过使用Nguyen Widrow的平均BPNN比约0.0624秒,0.1019秒(没有NguyenWidrow)。相比之下,对于模式识别需求,发现没有Nguyen Widrow的反向传播效果要好得多,精度为90%(NguyenWidrow只有70%)。

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