Author's OriginalAbility to forecast market variables is critical to analysts, economists and investors. Among other uses, neural networks are gaining in popularity in forecasting market variables. They are used in various disciplines and issues to map complex relationships. We present a primer for using neural networks for forecasting market variables in general, and in particular, forecasting volatility of the S&P 500 Index futures prices. We compare volatility forecasts from neural networks with implied volatility from S&P 500 Index futures options using the Barone-Adesi and Whaley (BAW) model for pricing American options on futures. Forecasts from neural networks outperform implied volatility forecasts. Volatility forecasts from neur...
In this paper, we compare three methods of estimating the volatility of daily SBP 100 Index for opti...
This article explores the application of advanced data analysis techniques in the financial sector u...
This study shows that neural networks have been advocated as an alternative to traditional statistic...
Currently the most popular method of estimating volatility is the implied volatility. It is calculat...
Currently the most popular method of estimating volatility is the implied volatility. It is calculat...
Volatility forecast is an important task in financial markets. It has held the most attention among ...
Volatility forecast is an important task in financial markets. It has held the most attention among ...
Forecasting events has always been of great interest for human beings. The basic examples of this pr...
Forecasting events has always been of great interest for human beings. The basic examples of this pr...
The purpose of this paper is to review artificial neural network applications used in the field of s...
Market risk refers to the potential loss that can be incurred as a result of movements inmarket fact...
In recent years, neural networks have become increasingly popular in making stock market predictions...
In recent years, many attempts have been made to predict the behavior of bonds, currencies, stocks, ...
This article explores the application of advanced data analysis techniques in the financial sector u...
Stock market prediction is one of the most important interesting areas of research in business. Stoc...
In this paper, we compare three methods of estimating the volatility of daily SBP 100 Index for opti...
This article explores the application of advanced data analysis techniques in the financial sector u...
This study shows that neural networks have been advocated as an alternative to traditional statistic...
Currently the most popular method of estimating volatility is the implied volatility. It is calculat...
Currently the most popular method of estimating volatility is the implied volatility. It is calculat...
Volatility forecast is an important task in financial markets. It has held the most attention among ...
Volatility forecast is an important task in financial markets. It has held the most attention among ...
Forecasting events has always been of great interest for human beings. The basic examples of this pr...
Forecasting events has always been of great interest for human beings. The basic examples of this pr...
The purpose of this paper is to review artificial neural network applications used in the field of s...
Market risk refers to the potential loss that can be incurred as a result of movements inmarket fact...
In recent years, neural networks have become increasingly popular in making stock market predictions...
In recent years, many attempts have been made to predict the behavior of bonds, currencies, stocks, ...
This article explores the application of advanced data analysis techniques in the financial sector u...
Stock market prediction is one of the most important interesting areas of research in business. Stoc...
In this paper, we compare three methods of estimating the volatility of daily SBP 100 Index for opti...
This article explores the application of advanced data analysis techniques in the financial sector u...
This study shows that neural networks have been advocated as an alternative to traditional statistic...