This dissertation is divided into two parts. The first part introduces the p-Holdout family of validation schemes for minimizing the generalization error rate and improving forecasting accuracy. More specifically, if one wants to compare different forecasting methods, or models, based on their performance, one may choose to use “out-of-sample tests” based on formal hypothesis tests, or “out-of-sample tests” based on data-driven procedures that directly compare the models using an error measure (e.g., MSE, MASE). To distinguish between the two “out-of-sample tests” terminologies seen in the literature, we will use the term “out-of-sample tests” for the former and “out-of-sample validation” for the latter. Both methods rely on some form of da...
How much electricity is going to be consumed for the next 24 hours? What will be the temperature for...
Simulation models are widely employed to make probability forecasts of future conditions on seasonal...
Identifying the appropriate time series model to achieve good forecasting accuracy is a challenging ...
Time series forecasting plays an increasingly important role in modern business decisions. In today'...
Generalizability of time series forecasting models depends on the quality of model selection. Tempor...
In research of time series forecasting, a lot of uncertainty is still related to the question of wh...
Time series forecasting is a crucial task in various fields of business and science. There are two c...
Forecasting as a scientific discipline has progressed a lot in the last 40 years, with Nobel prizes ...
A major problem for many organisational forecasters is to choose the appropriate forecasting method ...
<div><p>Machine Learning (ML) methods have been proposed in the academic literature as alternatives ...
Machine Learning (ML) methods have been proposed in the academic literature as alternatives to stati...
This thesis evaluates four of the most popular methods for combining time series forecasts. One aspe...
In this paper we systematically compare forecasting accuracy of hypothesis testing procedures with t...
Forecasters have been using various criteria to select the most appropriate model from a pool of can...
Traditional methodologies for time series prediction take the series to be predicted and split it in...
How much electricity is going to be consumed for the next 24 hours? What will be the temperature for...
Simulation models are widely employed to make probability forecasts of future conditions on seasonal...
Identifying the appropriate time series model to achieve good forecasting accuracy is a challenging ...
Time series forecasting plays an increasingly important role in modern business decisions. In today'...
Generalizability of time series forecasting models depends on the quality of model selection. Tempor...
In research of time series forecasting, a lot of uncertainty is still related to the question of wh...
Time series forecasting is a crucial task in various fields of business and science. There are two c...
Forecasting as a scientific discipline has progressed a lot in the last 40 years, with Nobel prizes ...
A major problem for many organisational forecasters is to choose the appropriate forecasting method ...
<div><p>Machine Learning (ML) methods have been proposed in the academic literature as alternatives ...
Machine Learning (ML) methods have been proposed in the academic literature as alternatives to stati...
This thesis evaluates four of the most popular methods for combining time series forecasts. One aspe...
In this paper we systematically compare forecasting accuracy of hypothesis testing procedures with t...
Forecasters have been using various criteria to select the most appropriate model from a pool of can...
Traditional methodologies for time series prediction take the series to be predicted and split it in...
How much electricity is going to be consumed for the next 24 hours? What will be the temperature for...
Simulation models are widely employed to make probability forecasts of future conditions on seasonal...
Identifying the appropriate time series model to achieve good forecasting accuracy is a challenging ...