Hong X, Chen S, Sharkey P M
Department of Cybernetics, University of Reading, Reading, RG6 6AY, UK.
Int J Neural Syst. 2004 Feb;14(1):27-37. doi: 10.1142/S0129065704001875.
This paper introduces an automatic robust nonlinear identification algorithm using the leave-one-out test score also known as the PRESS (Predicted REsidual Sums of Squares) statistic and regularised orthogonal least squares. The proposed algorithm aims to achieve maximised model robustness via two effective and complementary approaches, parameter regularisation via ridge regression and model optimal generalisation structure selection. The major contributions are to derive the PRESS error in a regularised orthogonal weight model, develop an efficient recursive computation formula for PRESS errors in the regularised orthogonal least squares forward regression framework and hence construct a model with a good generalisation property. Based on the properties of the PRESS statistic the proposed algorithm can achieve a fully automated model construction procedure without resort to any other validation data set for model evaluation.
本文介绍了一种自动稳健非线性识别算法,该算法使用留一法检验分数(也称为预测残差平方和(PRESS)统计量)和正则化正交最小二乘法。所提出的算法旨在通过两种有效且互补的方法实现模型稳健性最大化,即通过岭回归进行参数正则化和模型最优泛化结构选择。主要贡献在于推导正则化正交权重模型中的PRESS误差,在正则化正交最小二乘前向回归框架中开发PRESS误差的高效递归计算公式,从而构建具有良好泛化特性的模型。基于PRESS统计量的性质,所提出的算法可以实现完全自动化的模型构建过程,而无需借助任何其他验证数据集进行模型评估。