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The predictive accuracy of feed forward neural networks and multiple regression in the case of heteroscedastic data

机译:异源数据情况下饲料前向神经网络的预测精度和多元回归

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During the last few years, several comparative studies for regression analysis and neural networks have been published. Our paper contributes to this stream of research by comparing the performance of feed forward neural network and multiple regression when heteroscedasticity is present in the data. Datasets are simulated that vary systematically on various dimensions like sample size, noise levels and number of independent variables to assess the consequences of deviations from underlying assumptions of homoscedasticity on the comparative performance of regression analysis and neural networks. Comparative analysis is carried out using appropriate experimental design and the results are presented.
机译:在过去的几年中,已经发表了几年的回归分析和神经网络的比较研究。我们的论文通过比较饲料前进神经网络的性能和当在数据中存在异源性时,通过比较饲料前向神经网络的性能和多元回归的纸张来贡献。模拟数据集,其在系统地上有各种尺寸,如样本大小,噪声水平和自变量的数量,以评估偏差与同性恋性的潜在假设的后果对回归分析和神经网络的比较表现。使用适当的实验设计进行比较分析,并呈现结果。

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