Bayesian Inference for ARFIMA Models

Volume: 40, Issue: 4, Pages: 388 - 410
Published: Jan 2, 2019
Abstract
This article develops practical methods for Bayesian inference in the autoregressive fractionally integrated moving average (ARFIMA) model using the exact likelihood function, any proper prior distribution, and time series that may have thousands of observations. These methods utilize sequentially adaptive Bayesian learning, a sequential Monte Carlo algorithm that can exploit massively parallel desktop computing with graphics processing units...
Paper Details
Title
Bayesian Inference for ARFIMA Models
Published Date
Jan 2, 2019
Volume
40
Issue
4
Pages
388 - 410
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