This paper proposes a sparse Bayesian treatment of deep neural networks (DNNs) for system identification. Although DNNs show impressive approximation ability in various fields, several challenges still exist for system identification problems. First, DNNs are known to be too complex that they can easily overfit the training data. Second, the selection of the input regressors for system identification is nontrivial. Third, uncertainty quantification of the model parameters and predictions are necessary. The proposed Bayesian approach offers a principled way to alleviate the above challenges by marginal likelihood/model evidence approximation and structured group sparsity-inducing priors construction. The identification algorithm is derived a...
Low complexity of a system model is essential for its use in real-time applications. However, sparse...
nonlinear discrete-time systems with additive process noise but without measurement noise. In partic...
Prediction and control of behaviour and abnormalities in any complex dynamical systems, and in parti...
This paper proposes a sparse Bayesian treatment of deep neural networks (DNNs) for system identifica...
Applying deep neural networks (DNNs) for system identification (SYSID) has attracted more andmore at...
Modeling and identification for high dimensional (i.e. signals with many components) data sets pos...
Modeling and identification for high dimensional (i.e. signals with many components) data sets pose...
Modern deep neural networks are being widelyexploited to solve challenging learning tasks, inc...
Modern deep neural networks are being widelyexploited to solve challenging learning tasks, inc...
IEEE Bayesian nonlinear system identification for one of the major classes of dynamic model, the non...
Modern deep neural networks are being widelyexploited to solve challenging learning tasks, inc...
Modern deep neural networks are being widelyexploited to solve challenging learning tasks, inc...
Modern deep neural networks are being widelyexploited to solve challenging learning tasks, inc...
IEEE Bayesian nonlinear system identification for one of the major classes of dynamic model, the non...
Low complexity of a system model is essential for its use in real-time applications. However, sparse...
Low complexity of a system model is essential for its use in real-time applications. However, sparse...
nonlinear discrete-time systems with additive process noise but without measurement noise. In partic...
Prediction and control of behaviour and abnormalities in any complex dynamical systems, and in parti...
This paper proposes a sparse Bayesian treatment of deep neural networks (DNNs) for system identifica...
Applying deep neural networks (DNNs) for system identification (SYSID) has attracted more andmore at...
Modeling and identification for high dimensional (i.e. signals with many components) data sets pos...
Modeling and identification for high dimensional (i.e. signals with many components) data sets pose...
Modern deep neural networks are being widelyexploited to solve challenging learning tasks, inc...
Modern deep neural networks are being widelyexploited to solve challenging learning tasks, inc...
IEEE Bayesian nonlinear system identification for one of the major classes of dynamic model, the non...
Modern deep neural networks are being widelyexploited to solve challenging learning tasks, inc...
Modern deep neural networks are being widelyexploited to solve challenging learning tasks, inc...
Modern deep neural networks are being widelyexploited to solve challenging learning tasks, inc...
IEEE Bayesian nonlinear system identification for one of the major classes of dynamic model, the non...
Low complexity of a system model is essential for its use in real-time applications. However, sparse...
Low complexity of a system model is essential for its use in real-time applications. However, sparse...
nonlinear discrete-time systems with additive process noise but without measurement noise. In partic...
Prediction and control of behaviour and abnormalities in any complex dynamical systems, and in parti...