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Nonlinear System Identification With Composite Relevance Vector Machines

机译:合成相关向量机的非线性系统辨识

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Nonlinear system identification based on relevance vector machines (RVMs) has been traditionally addressed by stacking the input and/or output regressors and then performing standard RVM regression. This letter introduces a full family of composite kernels in order to integrate the input and output information in the mapping function efficiently and hence generalize the standard approach. An improved trade-off between accuracy and sparsity is obtained in several benchmark problems. Also, the RVM yields confidence intervals for the predictions, and it is less sensitive to free parameter selection
机译:传统上,通过堆叠输入和/或输出回归变量,然后执行标准RVM回归,可以解决基于相关矢量机(RVM)的非线性系统识别问题。这封信介绍了完整的复合内核系列,以便将输入和输出信息有效地集成到映射功能中,从而推广了标准方法。在几个基准测试问题中,可以在准确性和稀疏性之间取得更好的折衷。同样,RVM产生预测的置信区间,并且对自由参数选择不太敏感

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