In this paper I describe a wavelet filtering approach to separate a time series, the signal, into its main components. With this approach I can separate stochastic from structural components. The statistical predictive analysis will be performed on the filtered signal while the stochastic term could be a-posteriori reintroduced through statistical simulation approaches (such as Markov Chain Monte Carlo). The proposed metodology has been applied to financial time series to predict both returns and risk
We survey a number of applications of the wavelet transform in time series prediction. The Haar à tr...
This paper presents a set of tools, which allow gathering information about the frequency components...
Los métodos wavelet poseen algunas características que los hacen una herramienta con gran potencial ...
In this paper I describe a wavelet filtering approach to separate a time series, the signal, into it...
Abstract — We survey a number of applications of the wavelet transform in time series prediction. We...
We survey a number of applications of the wavelet transform in time series prediction. We show how m...
This chapter presents a set of tools, which allow gathering information about the frequency componen...
In recent years, wavelet transform has become very popular in many application areas such as physics...
International audienceThe paper proposes a wavelet-based forecasting method for time series. We used...
summary:Wavelets (see [2, 3, 4]) are a recent mathematical tool that is applied in signal processing...
An Introduction to Wavelets and Other Filtering Methods in Finance and Economics presents a unified ...
Wavelets orthogonally decompose data into different frequency components, and the temporal and frequ...
A process has been developed, in the framework of my PhD work, for financial time series prediction ...
We survey a number of applications of the wavelet transform in time series prediction. The Haar à tr...
The aim of this article is to present original application wavelets to the prediction of short-term ...
We survey a number of applications of the wavelet transform in time series prediction. The Haar à tr...
This paper presents a set of tools, which allow gathering information about the frequency components...
Los métodos wavelet poseen algunas características que los hacen una herramienta con gran potencial ...
In this paper I describe a wavelet filtering approach to separate a time series, the signal, into it...
Abstract — We survey a number of applications of the wavelet transform in time series prediction. We...
We survey a number of applications of the wavelet transform in time series prediction. We show how m...
This chapter presents a set of tools, which allow gathering information about the frequency componen...
In recent years, wavelet transform has become very popular in many application areas such as physics...
International audienceThe paper proposes a wavelet-based forecasting method for time series. We used...
summary:Wavelets (see [2, 3, 4]) are a recent mathematical tool that is applied in signal processing...
An Introduction to Wavelets and Other Filtering Methods in Finance and Economics presents a unified ...
Wavelets orthogonally decompose data into different frequency components, and the temporal and frequ...
A process has been developed, in the framework of my PhD work, for financial time series prediction ...
We survey a number of applications of the wavelet transform in time series prediction. The Haar à tr...
The aim of this article is to present original application wavelets to the prediction of short-term ...
We survey a number of applications of the wavelet transform in time series prediction. The Haar à tr...
This paper presents a set of tools, which allow gathering information about the frequency components...
Los métodos wavelet poseen algunas características que los hacen una herramienta con gran potencial ...