A model's expected generalisation error is inversely proportional to its training set size. This relationship can pose a problem when modelling multivariate time series, because structural breaks, low sampling rates, and high data gathering costs can severely restrict training set sizes, increasing a model's expected generalisation error by spurring regression model overfitting. Artificially expanding the training set size, using data augmentation methods, can, however, counteract the restrictions imposed by small sample sizes: increasing a model's robustness to overfitting and boosting out-of-sample prediction accuracies. While existing time series augmentation methods have predominantly utilised feature space transformations to artificial...
RePEc Working Paper Series: No. 05/2008In this paper we consider the forecasting performance of a ra...
This research provides benchmark accuracies for forecasting of an aggregated price of the Dutch intr...
In this paper machine learning models are estimated to predict electricity prices. As it is well kno...
A model's expected generalisation error is inversely proportional to its training set size. This rel...
Time series are everywhere and exist in a wide range of domains. Electrical activities of manufactur...
The performance of neural networks and statistical models in time series prediction is conditioned b...
Electricity prices in spot markets are volatile and can be affected by various factors, such as gene...
The importance of electricity in people’s daily lives has made it an indispensable commodity in soci...
Large labeled quantities and diversities of training data are often needed for supervised, data-ba...
Time series classification (TSC) is widely used in various real-world applications such as human act...
In this paper we suggest the use of robust GM-SETAR(Self Exciting Threshold AutoRegressive) processe...
Forecasting of electricity prices is important in deregulated electricity markets for all of the sta...
<p>ENGLISH ABSTRACT: Artificial neural networks are powerful tools for time series forecasting...
Many real-world tasks are plagued by limitations on data: in some instances very little data is avai...
Computational Intelligence models are the newest family of models to tackle the research problem of ...
RePEc Working Paper Series: No. 05/2008In this paper we consider the forecasting performance of a ra...
This research provides benchmark accuracies for forecasting of an aggregated price of the Dutch intr...
In this paper machine learning models are estimated to predict electricity prices. As it is well kno...
A model's expected generalisation error is inversely proportional to its training set size. This rel...
Time series are everywhere and exist in a wide range of domains. Electrical activities of manufactur...
The performance of neural networks and statistical models in time series prediction is conditioned b...
Electricity prices in spot markets are volatile and can be affected by various factors, such as gene...
The importance of electricity in people’s daily lives has made it an indispensable commodity in soci...
Large labeled quantities and diversities of training data are often needed for supervised, data-ba...
Time series classification (TSC) is widely used in various real-world applications such as human act...
In this paper we suggest the use of robust GM-SETAR(Self Exciting Threshold AutoRegressive) processe...
Forecasting of electricity prices is important in deregulated electricity markets for all of the sta...
<p>ENGLISH ABSTRACT: Artificial neural networks are powerful tools for time series forecasting...
Many real-world tasks are plagued by limitations on data: in some instances very little data is avai...
Computational Intelligence models are the newest family of models to tackle the research problem of ...
RePEc Working Paper Series: No. 05/2008In this paper we consider the forecasting performance of a ra...
This research provides benchmark accuracies for forecasting of an aggregated price of the Dutch intr...
In this paper machine learning models are estimated to predict electricity prices. As it is well kno...