Forecasters often need to estimate uncertain quantities, but with limited time and resources. Decomposition is a method for dealing with such problems by breaking down (decomposing) the estimation task down into a set of components that can be more readily estimated, and then combining the component estimates to produce a target estimate. Estimators can effectively apply decomposition to either multiplicative or segmented forecasts, though multiplicative decomposition is especially sensitive to correlated errors in component values. Decomposition is most used for highly uncertain estimates, such as ones having a large numerical value (e.g., millions or more) or quantities in an unfamiliar metric. When possible, multiple estimations should b...
Causal forces are a way of summarizing forecasters\u27 expectations about what will happen to a time...
Empirical comparisons of reasonable approaches provide evidence on the best forecasting procedures t...
The Brier score is widely used for the verification of probability forecasts. It also forms the basi...
We hypothesized that multiplicative decomposition would improve accuracy only in certain conditions....
We study the effect of decomposing a series into multiple components and performing forecasts on eac...
Causal forces are a way of summarizing forecasters ' expectations about what will happen to a t...
Improving the accuracy of forecasting process is necessary to uplift the quality of man-agement deci...
Demand forecasting consists of using data of the past demand to obtain an approximation of the futur...
This study introduces a new forecast aggregation technique. Adding to the well- known difficulties a...
This paper proposes a parsimonious and model-consistent method for combining forecasts generated by ...
Empirical comparisons of reasonable approaches provide evidence on the best forecasting procedures t...
International audienceDemand forecasting consists of using data of the past demand to obtain an appr...
This paper presents a score that can be used for evaluating probabilistic forecasts of multicategory...
468 p.THIS BOOK traces the development of the practical techniques of routine short-term forecasting...
Proper scoring rules provide a useful means to evaluate probabilistic forecasts. Independent from sc...
Causal forces are a way of summarizing forecasters\u27 expectations about what will happen to a time...
Empirical comparisons of reasonable approaches provide evidence on the best forecasting procedures t...
The Brier score is widely used for the verification of probability forecasts. It also forms the basi...
We hypothesized that multiplicative decomposition would improve accuracy only in certain conditions....
We study the effect of decomposing a series into multiple components and performing forecasts on eac...
Causal forces are a way of summarizing forecasters ' expectations about what will happen to a t...
Improving the accuracy of forecasting process is necessary to uplift the quality of man-agement deci...
Demand forecasting consists of using data of the past demand to obtain an approximation of the futur...
This study introduces a new forecast aggregation technique. Adding to the well- known difficulties a...
This paper proposes a parsimonious and model-consistent method for combining forecasts generated by ...
Empirical comparisons of reasonable approaches provide evidence on the best forecasting procedures t...
International audienceDemand forecasting consists of using data of the past demand to obtain an appr...
This paper presents a score that can be used for evaluating probabilistic forecasts of multicategory...
468 p.THIS BOOK traces the development of the practical techniques of routine short-term forecasting...
Proper scoring rules provide a useful means to evaluate probabilistic forecasts. Independent from sc...
Causal forces are a way of summarizing forecasters\u27 expectations about what will happen to a time...
Empirical comparisons of reasonable approaches provide evidence on the best forecasting procedures t...
The Brier score is widely used for the verification of probability forecasts. It also forms the basi...