论文标题
使用频率分布的自适应神经网络合奏
Adaptive Neural Network Ensemble Using Frequency Distribution
论文作者
论文摘要
神经网络(NN)集合可以降低NN的较大预测差异并提高预测准确性。对于数据集不足的高度非线性问题,NN模型的预测准确性变得不稳定,从而降低了集合的准确性。因此,本研究提出了一个基于频率分布的集合,该集合可以识别核心预测值,预计将集中在真实的预测值附近。基于频率分布的集合通过通过频率分布进行统计分析来支持由多个预测值支持的核心预测值,该统计分析基于从给定预测点获得的各种预测值。基于频率分布的集合可以通过排除较低精度的预测值并应对最频繁值的不确定性来提高预测性能。提出了一种基于根据核心预测值的方差计算的核心预测方差依次添加样品的自适应采样策略,以提高基于频率分布的集合的预测性能。各种案例研究的结果表明,基于频率分布的集合的预测准确性高于Kriging和其他现有合奏方法。此外,与先前开发的空间填充和基于预测方差的策略相比,提出的自适应抽样策略有效地改善了基于频率分布的集合的预测性能。
Neural network (NN) ensembles can reduce large prediction variance of NN and improve prediction accuracy. For highly nonlinear problems with insufficient data set, the prediction accuracy of NN models becomes unstable, resulting in a decrease in the accuracy of ensembles. Therefore, this study proposes a frequency distribution-based ensemble that identifies core prediction values, which are expected to be concentrated near the true prediction value. The frequency distribution-based ensemble classifies core prediction values supported by multiple prediction values by conducting statistical analysis with a frequency distribution, which is based on various prediction values obtained from a given prediction point. The frequency distribution-based ensemble can improve predictive performance by excluding prediction values with low accuracy and coping with the uncertainty of the most frequent value. An adaptive sampling strategy that sequentially adds samples based on the core prediction variance calculated as the variance of the core prediction values is proposed to improve the predictive performance of the frequency distribution-based ensemble efficiently. Results of various case studies show that the prediction accuracy of the frequency distribution-based ensemble is higher than that of Kriging and other existing ensemble methods. In addition, the proposed adaptive sampling strategy effectively improves the predictive performance of the frequency distribution-based ensemble compared with the previously developed space-filling and prediction variance-based strategies.