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Forecasting Observables with Particle Filters: Any Filter Will Do!

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journal contribution
posted on 2022-11-09, 06:11 authored by Patrick Leung, Catherine S. Forbes, Gael M Martin, Brendan McCabe
We investigate the impact of filter choice on forecast accuracy in state space models. The filters are used both to estimate the posterior distribution of the parameters, via a particle marginal Metropolis-Hastings (PMMH) algorithm, and to produce draws from the filtered distribution of the final state. Multiple filters are entertained, including two new data-driven methods. Simulation exercises are used to document the performance of each PMMH algorithm, in terms of computation time and the efficiency of the chain. We then produce the forecast distributions for the one-stepahead value of the observed variable, using a fixed number of particles and Markov chain draws. Despite distinct differences in efficiency, the filters yield virtually identical forecasting accuracy, with this result holding under both correct and incorrect specification of the model. This invariance of forecast performance to the specification of the filter also characterizes an empirical analysis of S&P500 daily returns.

History

Classification-JEL

C11, C22, C58

Creation date

2019-10-20

Working Paper Series Number

22/19

Length

34

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2019-22

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