Evaluating the Effects of Size and Precision of Training Data on ANN Training Performance for the Prediction of Chaotic Time Series Patterns

Lei Zhang
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引用次数: 5

Abstract

In this research, artificial neural networks (ANN) with various architectures are trained to generate the chaotic time series patterns of the Lorenz attractor. The ANN training performance is evaluated based on the size and precision of the training data. The nonlinear Auto-Regressive (NAR) model is trained in open loop mode first. The trained model is then used with closed loop feedback to predict the chaotic time series outputs. The research goal is to use the designed NAR ANN model for the simulation and analysis of Electroencephalogram (EEG) signals in order to study brain activities. A simple ANN topology with a single hidden layer of 3 to 16 neurons and 1 to 4 input delays is used. The training performance is measured by averaged mean square error. It is found that the training performance cannot be improved by solely increasing the training data size. However, the training performance can be improved by increasing the precision of the training data. This provides useful knowledge towards reducing the number of EEG data samples and corresponding acquisition time for prediction.
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评估训练数据的大小和精度对预测混沌时间序列模式的人工神经网络训练性能的影响
在本研究中,训练不同结构的人工神经网络(ANN)来生成洛伦兹吸引子的混沌时间序列模式。基于训练数据的大小和精度来评估人工神经网络的训练性能。首先在开环模式下训练非线性自回归(NAR)模型。然后将训练好的模型与闭环反馈一起用于预测混沌时间序列输出。研究目标是利用所设计的神经网络模型对脑电图信号进行模拟和分析,以研究大脑活动。使用一个简单的ANN拓扑结构,包含3到16个神经元和1到4个输入延迟的单个隐藏层。训练效果由平均均方误差来衡量。结果表明,单纯增加训练数据量并不能提高训练性能。然而,可以通过提高训练数据的精度来提高训练性能。这为减少EEG数据样本数量和相应的预测采集时间提供了有用的知识。
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