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Identification of nonlinear sparse networks using sparse Bayesian learning

机译:基于稀疏贝叶斯学习的非线性稀疏网络识别

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This paper considers a parametric approach to infer sparse networks described by nonlinear ARX models, with linear ARX treated as a special case. The proposed method infers both the Boolean structure and the internal dynamics of the network. It considers classes of nonlinear systems that can be written as weighted (unknown) sums of nonlinear functions chosen from a fixed basis dictionary. Due to the sparse topology, coefficients of most groups are zero. Besides, only a few nonlinear terms in nonzero groups contribute to the internal dynamics. Therefore, the identification problem should estimate both group- and element-sparse parameter vectors. The proposed method combines Sparse Bayesian Learning (SBL) and Group Sparse Bayesian Learning (GSBL) to impose both kinds of sparsity. Simulations indicate that our method outperforms SBL and GSBL when these are applied alone. A linear ring structure network also illustrates that the proposed method has improved performance to the kernel approach.
机译:本文考虑了一种参数化方法来推断由非线性ARX模型描述的稀疏网络,其中线性ARX被视为特例。所提出的方法既可以推断布尔结构,又可以推断网络的内部动力学。它考虑了可以写为从固定基础字典中选择的非线性函数的加权(未知)和的非线性系统类别。由于拓扑稀疏,大多数组的系数为零。此外,非零组中只有少数非线性项有助于内部动力学。因此,识别问题应该同时估计组和元素稀疏参数向量。所提出的方法结合了稀疏贝叶斯学习(SBL)和组稀疏贝叶斯学习(GSBL)来施加两种稀疏性。仿真表明,单独使用这些方法时,我们的方法优于SBL和GSBL。线性环结构网络还说明,所提出的方法具有比核方法更高的性能。

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