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Generalized Nonlinear Irreducible Auto-Correlation and Its Applications in Nonlinear Prediction Models Identification

机译:广义非线性不可约自相关及其在非线性预测模型辨识中的应用

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摘要

There is still an obstacle to prevent neural network from wider and more effective applications, i. e. , the lack of effective theories of models identification. Based on information theory and its generalization, this paper introduces a universal method to achieve nonlinear models identification. Two key quantities, which are called nonlinear irreducible auto-correlation ( NIAC) and generalized nonlinear irreducible auto-correlation ( GNIAC), are defined and discussed. NIAC and GNI-AC correspond with intrinstic irreducible auto-dependency (IAD) and generalized irreducible auto-dependency (GIAD) of time series respectively. By investigating the evolving trend of NIAC and GNIAC, the optimal auto-regressive order of nonlinear auto-regressive models could be determined naturally. Subsequently, an efficient algorithm computing NIAC and GNIAC is discussed. Experiments on simulating data sets and typical nonlinear prediction models indicate remarkable correlation between optimal auto-regressive order and the highest order that NIAC-GNIAC have a remarkable non-zero value, therefore demonstrate the validity of the proposal in this paper.
机译:仍然存在阻止神经网络被更广泛,更有效的应用的障碍。 e。 ,缺乏有效的模型识别理论。本文基于信息论及其推广,介绍了一种实现非线性模型辨识的通用方法。定义和讨论了两个关键量,称为非线性不可约自相关(NIAC)和广义非线性不可约自相关(GNIAC)。 NIAC和GNI-AC分别对应于时间序列的本征不可约自动依赖(IAD)和广义不可约自动依赖(GIAD)。通过研究NIAC和GNIAC的发展趋势,可以自然地确定非线性自回归模型的最佳自回归阶。随后,讨论了一种计算NIAC和GNIAC的有效算法。模拟数据集和典型的非线性预测模型的实验表明,最优自回归阶与最高阶之间具有显着的相关性,即NIAC-GNIAC具有显着的非零值,因此证明了该建议的有效性。

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