Data mining has become an essential tool during the last decade to analyze large sets of data. The variety of techniques it includes and the successful results obtained in many application fields, make this family of approaches powerful and widely used. In particular, this work explores the application of these techniques to time series forecasting. Although classical statistical-based methods provides reasonably good results, the result of the application of data mining outperforms those of classical ones. Hence, this work faces two main challenges: (i) to provide a compact mathematical formulation of the mainly used techniques; (ii) to review the latest works of time series forecasting and, as case study, those related to electricity pric...
This editorial summarizes the performance of the special issue entitled Energy Time Series Forecast...
The objective of this research assignment was to forecast electricity prices in the Spanish electric...
In this paper we consider the forecasting performance of a range of semi- and non-parametric method...
Data mining has become an essential tool during the last decade to analyze large sets of data. The v...
Data mining has become an essential tool during the last decade to analyze large sets of data. The v...
With the advent of smart metering technology the amount of energy data will increase significantly a...
A new approach is presented in this work with the aim of predicting time series behaviors. A previou...
The importance of electricity in people’s daily lives has made it an indispensable commodity in soci...
Forecasting electricity demand and consumption accurately is critical to the optimal and costeffecti...
High-frequency (less than monthly) time series data provide valuable information for designing the a...
This paper presents a new approach to forecast the behavior of time series based on similarity of pa...
High-frequency (less than monthly) time series data provide valuable information for designing the a...
High-frequency (less than monthly) time series data provide valuable information for designing the a...
In the new global and local scenario, the advent of intelligent distribution networks or Smart Grid...
This paper describes a time-series prediction method based on the kNN technique. The proposed method...
This editorial summarizes the performance of the special issue entitled Energy Time Series Forecast...
The objective of this research assignment was to forecast electricity prices in the Spanish electric...
In this paper we consider the forecasting performance of a range of semi- and non-parametric method...
Data mining has become an essential tool during the last decade to analyze large sets of data. The v...
Data mining has become an essential tool during the last decade to analyze large sets of data. The v...
With the advent of smart metering technology the amount of energy data will increase significantly a...
A new approach is presented in this work with the aim of predicting time series behaviors. A previou...
The importance of electricity in people’s daily lives has made it an indispensable commodity in soci...
Forecasting electricity demand and consumption accurately is critical to the optimal and costeffecti...
High-frequency (less than monthly) time series data provide valuable information for designing the a...
This paper presents a new approach to forecast the behavior of time series based on similarity of pa...
High-frequency (less than monthly) time series data provide valuable information for designing the a...
High-frequency (less than monthly) time series data provide valuable information for designing the a...
In the new global and local scenario, the advent of intelligent distribution networks or Smart Grid...
This paper describes a time-series prediction method based on the kNN technique. The proposed method...
This editorial summarizes the performance of the special issue entitled Energy Time Series Forecast...
The objective of this research assignment was to forecast electricity prices in the Spanish electric...
In this paper we consider the forecasting performance of a range of semi- and non-parametric method...