TY - JOUR
T1 - Switching Coefficients or Automatic Variable Selection
T2 - An Application in Forecasting Commodity Returns
AU - Guidolin, Massimo
AU - Pedio, Manuela
PY - 2022/2/18
Y1 - 2022/2/18
N2 - In this paper, we conduct a thorough investigation of the predictive ability of forward and backward stepwise regressions and hidden Markov models for the futures returns of several commodities. The predictive performance relative a standard AR(1) benchmark is assessed under both statistical and economic loss functions. We find that the evidence that either stepwise regressions or hidden Markov models may outperform the benchmark under standard statistical loss functions is rather weak and limited to low-volatility regimes. However, a mean-variance investor that adopts flexible forecasting models (especially stepwise predictive regressions) when building her portfolio, achieves large benefits in terms of realized Sharpe ratios and mean-variance utility compared to an investor employing AR(1) forecasts.
AB - In this paper, we conduct a thorough investigation of the predictive ability of forward and backward stepwise regressions and hidden Markov models for the futures returns of several commodities. The predictive performance relative a standard AR(1) benchmark is assessed under both statistical and economic loss functions. We find that the evidence that either stepwise regressions or hidden Markov models may outperform the benchmark under standard statistical loss functions is rather weak and limited to low-volatility regimes. However, a mean-variance investor that adopts flexible forecasting models (especially stepwise predictive regressions) when building her portfolio, achieves large benefits in terms of realized Sharpe ratios and mean-variance utility compared to an investor employing AR(1) forecasts.
U2 - 10.3390/forecast4010016
DO - 10.3390/forecast4010016
M3 - Article (Academic Journal)
SN - 2571-9394
VL - 4
SP - 275
EP - 306
JO - Forecasting
JF - Forecasting
IS - 1
ER -