SYLGMay 15, 2019

Efficient hinging hyperplanes neural network and its application in nonlinear system identification

arXiv:1905.06518v228 citations
Originality Incremental advance
AI Analysis

This work addresses the need for interpretable and efficient neural networks in nonlinear system identification, though it appears incremental as it builds on existing hinging hyperplanes models.

The paper tackles the problem of nonlinear system identification by proposing an efficient hinging hyperplanes neural network that is fast to train and interpretable, with simulation results showing satisfactory accuracy and fast identification speed.

In this paper, the efficient hinging hyperplanes (EHH) neural network is proposed based on the model of hinging hyperplanes (HH). The EHH neural network is a distributed representation, the training of which involves solving several convex optimization problems and is fast. It is proved that for every EHH neural network, there is an equivalent adaptive hinging hyperplanes (AHH) tree, which was also proposed based on the model of HH and find good applications in system identification. The construction of the EHH neural network includes 2 stages. First the initial structure of the EHH neural network is randomly determined and the Lasso regression is used to choose the appropriate network. To alleviate the impact of randomness, secondly, the stacking strategy is employed to formulate a more general network structure. Different from other neural networks, the EHH neural network has interpretability ability, which can be easily obtained through its ANOVA decomposition (or interaction matrix). The interpretability can then be used as a suggestion for input variable selection. The EHH neural network is applied in nonlinear system identification, the simulation results show that the regression vector selected is reasonable and the identification speed is fast, while at the same time, the simulation accuracy is satisfactory.

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