Pengujian Jaringan Saraf Tiruan Dalam Mendiagnosa Gangguan Jiwa Menggunakan Algoritma Backpropogation Levenberg-Marquardt

S. Solikhun, Sundari Putri Lestari
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Abstract

Mental disorders are mental health issues that make it hard to meet one's own or other people's needs. A person's life may be affected by changes in behavior brought on by this condition. To conquer this issue, a backpropagation calculation has been created to help with distinguishing mental problems. This calculation utilizes information got from mental tests to distinguish early indications of mental problems in an individual. With this calculation, psychological wellness experts can settle on additional quick and precise symptomatic choices. The Levenberg-Marquadt method and the backpropogation algorithm were used in this study to diagnose mental disorders. The aim of this study is to make it easier to diagnose mental disorders by analyzing a patient using the 24 attributes of the questions. After the diagnosis is made, the results will show up, and the Levenberg-Marquardt Backpropagation Algorithm will be used to test a person to see if they have bipolar disorder, OCD, or any other disorder. Researchers will have a difficult time determining the patient's mental illness if this diagnosis is not carried out. The aftereffects of this study are as demonstrative inquiries for mental issues that have been given. The Levenberg Marquadt method backpropagation algorithm is the bridge to accuracy, supporting this study's success. MSE is 24-10-1, with training performance equal to 0.000014246 and testing performance equal to 0.0000146. The diagnosis that comes out of it is more accurate the less error there is.
精神障碍是一种精神健康问题,它使人难以满足自己或他人的需求。一个人的生活可能会受到由这种情况引起的行为变化的影响。为了解决这个问题,反向传播计算被创造出来,以帮助区分心理问题。这种计算利用从心理测试中获得的信息来区分个人心理问题的早期迹象。有了这样的计算,心理健康专家就可以选择更快速准确的症状选择。本研究采用Levenberg-Marquadt方法和反向传播算法对精神障碍进行诊断。这项研究的目的是通过使用问题的24个属性来分析患者,从而使诊断精神障碍变得更容易。诊断出来后,结果就会显示出来,Levenberg-Marquardt反向传播算法将被用来测试一个人是否患有双相情感障碍、强迫症或任何其他疾病。如果不进行这种诊断,研究人员将很难确定患者的精神疾病。这项研究的结果是对精神问题进行了示范性的调查。Levenberg Marquadt方法反向传播算法是准确性的桥梁,支持了本研究的成功。MSE为24-10-1,训练性能为0.000014246,测试性能为0.0000146。由此得出的诊断越准确,错误就越少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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