We introduce various methods that combine forecasts using constrained optimization with penalty. A non-negativity constraint is imposed on the weights, and several penalties are considered, taking the form of a divergence from a reference combination scheme. In contrast with most of the existing approaches, our framework performs forecast selection and combination in one step, allowing for potentially sparse combining schemes. Moreover, by exploiting the analogy between forecasts combination and portfolio optimization, we provide the analytical expression of the optimal penalty strength when penalizing with the L2-divergence from the equally-weighted scheme. An extensive simulation study and two empirical applications allow us to investigat...
We consider different methods for combining probability forecasts. In empirical exercises, the data ...
Motivated by the common finding that linear autoregressive models forecast better than models that i...
We consider forecasting using a combination, when no model coincides with a non-constant data genera...
This paper provides the first thorough investigation of the negative weights that can emerge when co...
markdownabstract__Abstract__ is papers offers a theoretical explanation for the stylized fact tha...
This paper offers a theoretical explanation for the stylized fact that forecast combinations with es...
Combining forecasts is an established approach for improving forecast accuracy. So-called optimal we...
This chapter summarises the recent approaches to optimal forecast combination from a frequentist per...
This paper brings together two important but hitherto largely unrelated areas of the forecasting lit...
Combining forecasts have been proven as one of the most successful methods to improve predictive per...
We introduce Non-Linear Hybrid Shrinkage (NLHS) as a holistic model for forecast combination, shrink...
Even though different optimal forecast combination weights are offered for static, dynamic, or time-...
Forecast combination is an established methodology to improve forecast accuracy. The primary questi...
summary:Employing recently derived asymptotic representation of the least trimmed squares estimator,...
Existing results on the properties and performance of forecast combinations have been derived in the...
We consider different methods for combining probability forecasts. In empirical exercises, the data ...
Motivated by the common finding that linear autoregressive models forecast better than models that i...
We consider forecasting using a combination, when no model coincides with a non-constant data genera...
This paper provides the first thorough investigation of the negative weights that can emerge when co...
markdownabstract__Abstract__ is papers offers a theoretical explanation for the stylized fact tha...
This paper offers a theoretical explanation for the stylized fact that forecast combinations with es...
Combining forecasts is an established approach for improving forecast accuracy. So-called optimal we...
This chapter summarises the recent approaches to optimal forecast combination from a frequentist per...
This paper brings together two important but hitherto largely unrelated areas of the forecasting lit...
Combining forecasts have been proven as one of the most successful methods to improve predictive per...
We introduce Non-Linear Hybrid Shrinkage (NLHS) as a holistic model for forecast combination, shrink...
Even though different optimal forecast combination weights are offered for static, dynamic, or time-...
Forecast combination is an established methodology to improve forecast accuracy. The primary questi...
summary:Employing recently derived asymptotic representation of the least trimmed squares estimator,...
Existing results on the properties and performance of forecast combinations have been derived in the...
We consider different methods for combining probability forecasts. In empirical exercises, the data ...
Motivated by the common finding that linear autoregressive models forecast better than models that i...
We consider forecasting using a combination, when no model coincides with a non-constant data genera...