Penerapan Deep Learning dalam Pendeteksian Autism Toddler

Diah Ayu Ambarsari, R. Nurfalah, S. J. Kuryanti
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Abstract

Health is a very important thing. Everyone can overcome health problems. Children's health is the dream of every parent. During the growth period the child will switch several times which can stop their development. Parents must be more sensitive and have extensive knowledge in health. The problem that often occurs is that parents do not know the initial autism symptoms that occur in the baby, so more parents assume if it is okay, this situation accelerates the diagnosis process, whereas autism disorders can be detected early by looking at growing habits child development every time an autism transfer is a developmental development in children, autism must facilitate quickly, because with autism treatment quickly and quickly will help autistic patients grow back to normal. To help understand the children mengamalim autism, the authors conducted research with new methods. In a previous study, Fades Tahbatan conducted research to ascertain whether the child was autistic or not using a tool. But it only produces data sets., It turns out to have attributes that are not yet precise, which increases the level of accuracy. In this research, use the method of deep learning and improve accuracy, the application used is fast miners. The variables are then processed so as to produce a prediction model from the data set obtained. Accuracy values that can be processed are sufficient while accuracy = 98.96% precision = 96.74%, recall = 98.49% with AUC of = 0.90 Keywords: Autism, deep learning, toddlers  
Penerapan深度学习dalam Pendeteksian自闭症儿童
健康是一件非常重要的事情。每个人都能克服健康问题。孩子的健康是每个父母的梦想。在成长期间,孩子会多次转换,这可能会阻止他们的发展。父母必须更敏感,有广泛的健康知识。经常发生的问题是父母不知道最初的自闭症症状发生在婴儿身上,所以更多的父母认为如果没问题,这种情况加速了诊断过程,而自闭症障碍可以通过观察儿童的成长习惯来早期发现每次自闭症转移都是儿童的发育发展,自闭症必须迅速促进,因为自闭症治疗迅速迅速将帮助自闭症患者恢复正常。为了帮助了解自闭症儿童,作者用新的方法进行了研究。在之前的一项研究中,泰巴坦进行了一项研究,以确定这个孩子是否患有自闭症,或者是否会使用工具。但它只产生数据集。结果显示,它的属性还不精确,这提高了准确性。在本研究中,采用深度学习的方法提高准确率,应用的是快速矿工。然后对变量进行处理,以便从获得的数据集产生预测模型。准确率为98.96%,精密度为96.74%,查全率为98.49%,AUC为0.90。关键词:自闭症,深度学习,幼儿
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