This paper evaluates kk-fold and Monte Carlo cross-validation and aggregation (crogging) for combining neural network autoregressive forecasts. We introduce Monte Carlo crogging which combines bootstrapping and cross-validation (CV) in a single approach through repeated random splitting of the original time series into mutually exclusive datasets for training. As the training/validation split is independent of the number of folds, the algorithm offers more flexibility in the size, and number of training samples compared to kk-fold cross-validation. The study also provides for crogging and bagging: (1) the first systematic evaluation across time series length and combination size, (2) a bias and variance decomposition of the forecast errors ...
The aim of this study is to improve the forecasting accuracy of artificial neural networks (ANNs) an...
This paper evaluates the forecast performance of boosting, a variable selection device, and compares...
Abstract Combining forecasts can be based on different data or different methods or both. In practic...
In classification, regression and time series prediction alike, cross-validation is widely employed ...
Our paper aims to evaluate two novel methods on selecting the best forecasting model or its combinat...
Accurate time series forecasting is a key tool to support decision making and for planning our day t...
Proceeding of: ICANN 2010, 20th International Conference, Thessaloniki, Greece, September 15-18, 201...
The ability to forecast the future based on past data is a key tool to support individual and organi...
In many contexts with limited data and no patience to wait for new and independent data, one needs t...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Forecast combinations have flourished remarkably in the forecasting community and, in recent years, ...
Standard selection criteria for forecasting models focus on information that is calculated for each ...
In recent years, machine learning methods have been applied to various prediction scenarios in time-...
Identifying the appropriate time series model to achieve good forecasting accuracy is a challenging ...
Recently, combination algorithms from machine learning classification have been extended to time ser...
The aim of this study is to improve the forecasting accuracy of artificial neural networks (ANNs) an...
This paper evaluates the forecast performance of boosting, a variable selection device, and compares...
Abstract Combining forecasts can be based on different data or different methods or both. In practic...
In classification, regression and time series prediction alike, cross-validation is widely employed ...
Our paper aims to evaluate two novel methods on selecting the best forecasting model or its combinat...
Accurate time series forecasting is a key tool to support decision making and for planning our day t...
Proceeding of: ICANN 2010, 20th International Conference, Thessaloniki, Greece, September 15-18, 201...
The ability to forecast the future based on past data is a key tool to support individual and organi...
In many contexts with limited data and no patience to wait for new and independent data, one needs t...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Forecast combinations have flourished remarkably in the forecasting community and, in recent years, ...
Standard selection criteria for forecasting models focus on information that is calculated for each ...
In recent years, machine learning methods have been applied to various prediction scenarios in time-...
Identifying the appropriate time series model to achieve good forecasting accuracy is a challenging ...
Recently, combination algorithms from machine learning classification have been extended to time ser...
The aim of this study is to improve the forecasting accuracy of artificial neural networks (ANNs) an...
This paper evaluates the forecast performance of boosting, a variable selection device, and compares...
Abstract Combining forecasts can be based on different data or different methods or both. In practic...