Pages that link to "Item:Q1579477"
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The following pages link to Review of guidelines for the use of combined forecasts (Q1579477):
Displaying 20 items.
- A new methodology for generating and combining statistical forecasting models to enhance competitive event prediction (Q439474) (← links)
- Correcting and combining time series forecasters (Q470161) (← links)
- Computing electricity spot price prediction intervals using quantile regression and forecast averaging (Q740072) (← links)
- Using clustering to improve sales forecasts in retail merchandising (Q970165) (← links)
- A linear Bayesian stochastic approximation to update project duration estimates (Q1027546) (← links)
- Structural combination of seasonal exponential smoothing forecasts applied to load forecasting (Q1719624) (← links)
- Probabilistic forecasting of wave height for offshore wind turbine maintenance (Q1754263) (← links)
- Addressing the life expectancy gap in pension policy (Q2038240) (← links)
- Forecast with forecasts: diversity matters (Q2140152) (← links)
- Passenger demand forecasting in scheduled transportation (Q2189875) (← links)
- A combination selection algorithm on forecasting (Q2256180) (← links)
- Copulas-based time series combined forecasters (Q2282308) (← links)
- Estimating the term structure of commodity market preferences (Q2286907) (← links)
- Combining forecasts in short term load forecasting: empirical analysis and identification of robust forecaster (Q2360122) (← links)
- Optimal forecasting of option prices using particle filters and neural networks (Q3020606) (← links)
- Combined models for day‐ahead electricity price forecasting based on improved gray correlation methodology (Q4932875) (← links)
- Combining Interval Time Series Forecasts. A First Step in a Long Way (Research Agenda) (Q5009664) (← links)
- (Q5101755) (← links)
- A novel approach for combined forecasting model systems based on the correlation coefficient ranking of the individual forecasting models (Q6549399) (← links)
- Does a meta-combining method lead to more accurate forecasts in the decision-making process? (Q6660166) (← links)