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Artificial Neural Network Classification Models for Stress in Reading

机译:阅读中压力的人工神经网络分类模型

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Stress is a major problem facing our world today and it is important to develop an understanding of how an average person responds to stress in a typical activity like reading. The aim for this paper is to determine whether an artificial neural network (ANN) using measures from stress response signals can be developed to recognize stress in reading text with stressful content. This paper proposes and tests a variety of ANNs that can be used to classify stress in reading using a novel set of stress response signals. It also proposes methods for ANNs to deal with hundreds of features derived from the response signals using a genetic algorithm (GA) based approach. Results show that ANNs using features optimized by GAs helped to select features for stress classification, dealt with corrupted signals and provided better classifications. ANNs using GAs were generated to exploit the time-varying nature of the signals and it was found to be the best method to classify stress compared to all the other ANNs.
机译:压力是当今世界面临的一个主要问题,重要的是要了解普通人在诸如读书之类的典型活动中对压力的反应。本文的目的是确定是否可以开发一种使用来自压力响应信号的措施的人工神经网络(ANN)来识别具有压力内容的阅读文本中的压力。本文提出并测试了多种ANN,可用于使用一组新的压力响应信号对阅读中的压力进行分类。它还提出了使用基于遗传算法(GA)的方法来使ANN处理来自响应信号的数百个特征的方法。结果表明,使用由遗传算法优化的特征的人工神经网络有助于选择应力分类的特征,处理损坏的信号并提供更好的分类。生成了使用GA的ANN,以利用信号的时变特性,并且与所有其他ANN相比,它被发现是对压力进行分类的最佳方法。

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