Forecasting exchange rates with a large Bayesian VAR
Carriero, A.
, Kapetanios, G.
, Marcellino, M.
Pages 400-417
AbstractModels based on economic theory have serious problems forecasting
exchange rates better than simple univariate driftless random walk models,
especially at short horizons. Multivariate time series models suffer from
the same problem. In this paper, we propose to forecast exchange rates with
a large Bayesian VAR (BVAR), using a panel of 33 exchange rates vis-a-vis
the US Dollar. Since exchange rates tend to co-move, a large set of them
can contain useful information for forecasting. In addition, we adopt a
driftless random walk prior, so that cross-dynamics matter for forecasting
only if there is strong evidence of them in the data. We produce forecasts
for all 33 exchange rates in the panel, and show that our model produces
systematically better forecasts than a random walk for most of the
countries, and at all forecast horizons, including 1-step-ahead.
Keywords: Exchange rates
, Forecasting
, Bayesian VAR