利用模糊神经网络改进移动设备对自闭症儿童的预测。

P. V. C. Souza, A. J. Guimarães
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引用次数: 26

摘要

移动系统的建立是为了帮助预测自闭症儿童的特征。这种类型的系统使用人工智能功能和机器学习技术将概率分配给在应用程序中接受测试的人。根据移动应用程序作者提供的信息,它打算使用模糊神经网络来帮助预测该人是否具有自闭症特征。因此,本文提出了一种基于极限学习机的解释技术,以处理寻求更直接响应的用户提供的问题,基于二元分类标签。使用基础进行的测试为所提议的模型和基础实现了高水平的准确性,使其成为有效预测自闭症儿童的可行替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using fuzzy neural networks for improving the prediction of children with autism through mobile devices.
Mobile systems were built to aid in the prediction of children with autism traits. This type of system uses artificial intelligence capabilities and machine learning techniques to assign probabilities to people who undergo the test in the application. According to the information provided by the authors of the mobile application, it is intended to use fuzzy neural networks to aid in prediction whether or not the person has traits of autism. Therefore, this paper proposes the insertion of an interpretive technique based on an extreme learning machine to deal with questions provided by users seeking to obtain more immediate responses, based on binary classification labels. The tests performed with the base achieved high levels of accuracy for the proposed model and base, making it a viable alternative for the efficient prediction of children with autism.
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