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Low-pass filtering as Bayesian inference

By Cristóbal Valenzuela and Felipe Tobar
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... Show more
February 9, 2019
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Low-pass filtering as Bayesian inference
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