Time series prediction is a complex problem that consists of forecasting the future behavior of a set of data with the only information of the previous data. The main problem is the fact that most of the time series that represent real phenomena include local behaviors that cannot be modelled by global approaches. This work presents a new procedure able to find predictable local behaviors, and thus, attaining a better level of total prediction. This new method is based on a division of the input space into Voronoi regions by means of Evolution Strategies. Our method has been tested using different time series domains. One of them that represents the water demand in a water tank, through a long period of time. The other two domains are well k...
AbstractWe introduce a technique of time series analysis, potential forecasting, which is based on d...
This paper introduces several novel strategies for multi-step-ahead prediction of chaotic time serie...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...
Time series prediction is a complex problem that consists of forecasting the future behavior of a se...
IEEE International Parallel and Distributed Processing Symposium. Long Beach, CA, 26-30 March 2007Ma...
Proceeding of: 8th International Conference in Parallel Problem Solving from Nature - PPSN VIII , Bi...
The prediction of a time series using the dynamical systems approach requires the knowledge of three...
This thesis addresses the problem of designing short-term forecasting models for water demand time ...
We present a forecasting technique for chaotic data. After embedding a time series in a state space ...
In order to study forecasting of chaotic time series, artificial chaotic time series that are derive...
In this present work, we provide an overview of methods for time series modelling and prediction. We...
This thesis contributes to the area of time-series prediction by presenting a novel, noise resistant...
Deriving a relationship that allows to predict future values of a time series is a challenging task ...
The embedding dimension and the number of nearest neighbors are very important parameters in the pre...
A new methodology, which combines nonparametric method based on local functional coefficient autoreg...
AbstractWe introduce a technique of time series analysis, potential forecasting, which is based on d...
This paper introduces several novel strategies for multi-step-ahead prediction of chaotic time serie...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...
Time series prediction is a complex problem that consists of forecasting the future behavior of a se...
IEEE International Parallel and Distributed Processing Symposium. Long Beach, CA, 26-30 March 2007Ma...
Proceeding of: 8th International Conference in Parallel Problem Solving from Nature - PPSN VIII , Bi...
The prediction of a time series using the dynamical systems approach requires the knowledge of three...
This thesis addresses the problem of designing short-term forecasting models for water demand time ...
We present a forecasting technique for chaotic data. After embedding a time series in a state space ...
In order to study forecasting of chaotic time series, artificial chaotic time series that are derive...
In this present work, we provide an overview of methods for time series modelling and prediction. We...
This thesis contributes to the area of time-series prediction by presenting a novel, noise resistant...
Deriving a relationship that allows to predict future values of a time series is a challenging task ...
The embedding dimension and the number of nearest neighbors are very important parameters in the pre...
A new methodology, which combines nonparametric method based on local functional coefficient autoreg...
AbstractWe introduce a technique of time series analysis, potential forecasting, which is based on d...
This paper introduces several novel strategies for multi-step-ahead prediction of chaotic time serie...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...