Time series forecasting has been proved to be relatively easier for stationary time series, compared to non-stationary time series. This research proposes a method to partially omit the non-stationarity of the data using prioritized sampling. Using multiple feature selection methods in combination with a random forest regressor (RFR), we aim to predict the values for a non-stationary time series. In particular, the principal component analysis (PCA), kernel PCA, incremental PCA and independent component analysis methods are used. The features extracted from these methods will be fed into an RFR both individually and combined, using the union and intersection operators. The features given by the IPCA ∪ PCA ∪ KPCA method, using prioritized sa...
The information technology of forecasting non-stationary time series data, which cannot be reduced t...
The problem of predicting a future value of a time series is considered in this paper. If the series...
In this paper, we apply independent component analysis (ICA) for prediction and signal extraction i...
International audienceHandling time series forecasting with many predictors is a popular topic in th...
The relation between component analysis (PCA and ICA) and Multi-resolution Filtering is explained a...
Time series forecasting is important in several applied domains because it facilitates decision-maki...
Almost all climate time series have some degree of nonstationarity due to external driving forces pe...
The paper presents a method for multivariate time series forecasting using Independent Component Ana...
The effect of nonstationarity in time series columns of input data in principal components analysis ...
A new method for model selection in prediction of time series is proposed. Apart from the convention...
The aim of this study is to propose a new hybrid feature selection model to improve the performance ...
International audience—The field of time series forecasting has progressed significantly in recent d...
Time series forecasting is an important area in data mining research. Feature preprocessing techniqu...
We present a nonparametric method to forecast a seasonal univariate time series, and propose four dy...
The development of accurate forecasting systems for real-world time series modeling is a challenging...
The information technology of forecasting non-stationary time series data, which cannot be reduced t...
The problem of predicting a future value of a time series is considered in this paper. If the series...
In this paper, we apply independent component analysis (ICA) for prediction and signal extraction i...
International audienceHandling time series forecasting with many predictors is a popular topic in th...
The relation between component analysis (PCA and ICA) and Multi-resolution Filtering is explained a...
Time series forecasting is important in several applied domains because it facilitates decision-maki...
Almost all climate time series have some degree of nonstationarity due to external driving forces pe...
The paper presents a method for multivariate time series forecasting using Independent Component Ana...
The effect of nonstationarity in time series columns of input data in principal components analysis ...
A new method for model selection in prediction of time series is proposed. Apart from the convention...
The aim of this study is to propose a new hybrid feature selection model to improve the performance ...
International audience—The field of time series forecasting has progressed significantly in recent d...
Time series forecasting is an important area in data mining research. Feature preprocessing techniqu...
We present a nonparametric method to forecast a seasonal univariate time series, and propose four dy...
The development of accurate forecasting systems for real-world time series modeling is a challenging...
The information technology of forecasting non-stationary time series data, which cannot be reduced t...
The problem of predicting a future value of a time series is considered in this paper. If the series...
In this paper, we apply independent component analysis (ICA) for prediction and signal extraction i...