Unsupervised State-Space Modeling Using Reproducing Kernels
Abstract
A novel framework for the design of state-space models (SSMs) is proposed whereby the state-transition function of the model is parametrized using reproducing kernels. The nature of SSMs requires learning a latent function that resides in the state space and for which input-output sample pairs are not available, thus prohibiting the use of gradient-based supervised kernel learning. To this end, we then propose to learn the mixing weights of the kernel estimate by sampling from their posterior density using Monte Carlo methods. We first introduce an offline version of the proposed algorithm, followed by an online version which performs inference on both the parameters and the hidden state through particle filtering. The accuracy of the estimation of the state-transition function is first validated on synthetic data. Next, we show that the proposed algorithm outperforms kernel adaptive filters in the prediction of real-world time series, while also providing probabilistic estimates, a key advantage over standard methods.
Más información
Título según WOS: | ID WOS:000360852200015 Not found in local WOS DB |
Título de la Revista: | IEEE TRANSACTIONS ON SIGNAL PROCESSING |
Volumen: | 63 |
Número: | 19 |
Editorial: | IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC |
Fecha de publicación: | 2015 |
Página de inicio: | 5210 |
Página final: | 5221 |
DOI: |
10.1109/TSP.2015.2448527 |
Notas: | ISI |