LOW-PASS FILTERING AS BAYESIAN INFERENCE

Valenzuela C.; Tobar F.

Abstract

We propose a Bayesian nonparametric method for low-pass filtering that can naturally handle unevenly-sampled and noise-corrupted observations. The proposed model is constructed as a latent-factor model for time series, where the latent factors are Gaussian processes with non-overlapping spectra. With this construction, the low-pass version of the time series can be identified as the low-frequency latent component, and therefore it can be found by means of Bayesian inference. We show that the model admits exact training and can be implemented with minimal numerical approximations. Finally, the proposed model is validated against standard linear filters on synthetic and real-world time series.

Más información

Título según WOS: LOW-PASS FILTERING AS BAYESIAN INFERENCE
Título según SCOPUS: Low-pass Filtering as Bayesian Inference
Título de la Revista: 2020 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING
Editorial: IEEE
Fecha de publicación: 2019
Página de inicio: 3367
Página final: 3371
Idioma: English
Notas: ISI, SCOPUS