Creative Commons: Reconocimiento 3.0 España (CC BY 3.0 ES)Econometric models have usually estimated both returns and conditional volatility in financial assets. This paper is intended in the comparison of this traditional approach with the more recent Backpropagation neural network. When applied to the Spanish Ibex-35 stock market index, we find that the neural network achieved significantly better performance in predicting conditional volatility, but similar results when predicting financial returns.García García, F.; Guijarro Martínez, F.; Moya Clemente, I.; Oliver Muncharaz, J. (2012). Estimating returns and condicional volatility: a comparison between the ARMA-GARCH-M Models and the Backpropagation Neural Network. International Jou...
Stock market forecasting plays a key role in investment practice and theory, especially given the pr...
Facing the challenges of anticipating financial market uncertainties and movements, and the necessit...
This thesis is focused on multiple-step-ahead forecasting of Nasdaq Composite index returns and dail...
Portfolio managers, option traders and market makers are all interested in volatility forecasting in...
It is shown that time series about financial market variables are highly nonlinearly dependent on ti...
In the area of financial stock market forecasting, many studies have focused on application of Artif...
This study uses the fourteen stock indices as the sample and then utilizes eight parametric volatili...
Abstract: Financial time series exhibit different stylized facts, namely, asymmetry and nonlinearity...
In this paper, we study the performance of the Artificial Neural Networks (ANNs) and GARCH modelsto ...
The objective of this research was to compare the effectiveness of the GARCH method with machine lea...
The validity of the Efficient Market Hypothesis has been under severe scrutiny since several decades...
AbstractVolatility forecasting in the financial markets, along with the development of financial mod...
The ability to obtain accurate volatility forecasts is an important issue for the financial analyst....
Stock market prediction has been a hot topic lately due to advances in computer technology and econo...
This study seeks to evaluate the effectiveness that variables like firm size and book-to-market rati...
Stock market forecasting plays a key role in investment practice and theory, especially given the pr...
Facing the challenges of anticipating financial market uncertainties and movements, and the necessit...
This thesis is focused on multiple-step-ahead forecasting of Nasdaq Composite index returns and dail...
Portfolio managers, option traders and market makers are all interested in volatility forecasting in...
It is shown that time series about financial market variables are highly nonlinearly dependent on ti...
In the area of financial stock market forecasting, many studies have focused on application of Artif...
This study uses the fourteen stock indices as the sample and then utilizes eight parametric volatili...
Abstract: Financial time series exhibit different stylized facts, namely, asymmetry and nonlinearity...
In this paper, we study the performance of the Artificial Neural Networks (ANNs) and GARCH modelsto ...
The objective of this research was to compare the effectiveness of the GARCH method with machine lea...
The validity of the Efficient Market Hypothesis has been under severe scrutiny since several decades...
AbstractVolatility forecasting in the financial markets, along with the development of financial mod...
The ability to obtain accurate volatility forecasts is an important issue for the financial analyst....
Stock market prediction has been a hot topic lately due to advances in computer technology and econo...
This study seeks to evaluate the effectiveness that variables like firm size and book-to-market rati...
Stock market forecasting plays a key role in investment practice and theory, especially given the pr...
Facing the challenges of anticipating financial market uncertainties and movements, and the necessit...
This thesis is focused on multiple-step-ahead forecasting of Nasdaq Composite index returns and dail...