International audienceThe Double Vector Quantization method, a long-term forecasting method based on the SOM algorithm, has been used to predict the 100 missing values of the CATS competition data set. An analysis of the proposed time series is provided to estimate the dimension of the auto-regressive part of this nonlinear auto-regressive forecasting method. Based on this analysis experimental results using the Double Vector Quantization (DVQ) method are presented and discussed. As one of the features of the DVQ method is its ability to predict scalars as well as vectors of values, the number of iterative predictions needed to reach the prediction horizon is further observed. The method stability for the long term allows obtaining reliable...
We propose FNETS, a methodology for network estimation and forecasting of high-dimensional time seri...
This paper presents an ensemble forecasting method that shows strong results on the M4 Competition d...
© 2019 Gupta et al. Financial time series forecasting is a crucial measure for improving and making ...
International audienceThe Double Vector Quantization method, a long-term forecasting method based on...
The double vector quantization forecasting method based on Kohonen self-organizing maps is applied t...
This paper presents the CATS Benchmark and the results of the competition organised during the IJCNN...
International audienceMany time series forecasting problems require the estimation of possibly inacc...
A la suite de la conférence WSOM 03 à KitakiushuInternational audienceThe Kohonen self-organization ...
Nonlinear time-series prediction offers potential performance increases compared to linear models. N...
An approach to time series prediction of the CATS benchmark (for competition on artificial time seri...
Nonlinear time-series prediction offers potential performance increases compared to linear models. N...
Nonlinear time-series prediction offers potential performance increases compared to linear models. N...
Classical nonlinear models for time series prediction exhibit improved capabilities compared to lin...
This paper discusses a solution for the CATS benchmark of time series prediction competition in IJCN...
Abstract — In this paper, time series prediction is considered as a problem of missing values. A met...
We propose FNETS, a methodology for network estimation and forecasting of high-dimensional time seri...
This paper presents an ensemble forecasting method that shows strong results on the M4 Competition d...
© 2019 Gupta et al. Financial time series forecasting is a crucial measure for improving and making ...
International audienceThe Double Vector Quantization method, a long-term forecasting method based on...
The double vector quantization forecasting method based on Kohonen self-organizing maps is applied t...
This paper presents the CATS Benchmark and the results of the competition organised during the IJCNN...
International audienceMany time series forecasting problems require the estimation of possibly inacc...
A la suite de la conférence WSOM 03 à KitakiushuInternational audienceThe Kohonen self-organization ...
Nonlinear time-series prediction offers potential performance increases compared to linear models. N...
An approach to time series prediction of the CATS benchmark (for competition on artificial time seri...
Nonlinear time-series prediction offers potential performance increases compared to linear models. N...
Nonlinear time-series prediction offers potential performance increases compared to linear models. N...
Classical nonlinear models for time series prediction exhibit improved capabilities compared to lin...
This paper discusses a solution for the CATS benchmark of time series prediction competition in IJCN...
Abstract — In this paper, time series prediction is considered as a problem of missing values. A met...
We propose FNETS, a methodology for network estimation and forecasting of high-dimensional time seri...
This paper presents an ensemble forecasting method that shows strong results on the M4 Competition d...
© 2019 Gupta et al. Financial time series forecasting is a crucial measure for improving and making ...