This paper analyzes recursive and rolling neural network models to forecast one-step-ahead sign variations in gold price. Different combinations of techniques and sample sizes are studied for feed forward and ward neural networks. The results shows the rolling ward networks exceed the recursive ward networks and feed forward networks in forecasting gold price sign variation. The results support the use of neural networks with a dynamic framework to forecast the gold price sign variations, recalculating the weights of the network on a period-by-period basis, through a rolling process. Our results are validated using the block bootstrap methodology with an average sign prediction of 60.68% with a standard deviation of 2.82% for the rolling wa...
Developing a precise and accurate model of gold price is critical to assets management because of it...
Financial market forecasting is used to assess the future value of financial instruments in various ...
International audienceFinancial institutions, investors, mining companies and related firms need an ...
In recent years, there are many studies rely on forecasting with artificial neural networks. In this...
As the value of gold cannot be blindly rejected, forecasting the future prices of gold has long bee...
The movement of gold prices in the previous period was crucial for investors. However, fluctuations ...
In this paper, an improved EMD meta-learning rate-based model for gold price forecasting is proposed...
Gold has always been valued throughout human history, playing a significant impact on the economy. ...
Essential to building a good financial forecasting model is having a realistic trading model to eval...
In recent years, there are many studies rely on forecasting with artificial neural networks. In this...
Gold is a precious metal once widely used as a standard for monetary exchange but was replaced by pa...
Based on data from the previous year's gold price, the "GOLD PRICE PREDICTION" project forecasts the...
Gold is precious metal once widely used as standard for monetary exchange but was replaced by paper...
Gold is a versatile material in high demand by both corporates and investors. Hence, the ability to ...
The main objective of this study is to predict monthly price of gold. The monthly sample data of gol...
Developing a precise and accurate model of gold price is critical to assets management because of it...
Financial market forecasting is used to assess the future value of financial instruments in various ...
International audienceFinancial institutions, investors, mining companies and related firms need an ...
In recent years, there are many studies rely on forecasting with artificial neural networks. In this...
As the value of gold cannot be blindly rejected, forecasting the future prices of gold has long bee...
The movement of gold prices in the previous period was crucial for investors. However, fluctuations ...
In this paper, an improved EMD meta-learning rate-based model for gold price forecasting is proposed...
Gold has always been valued throughout human history, playing a significant impact on the economy. ...
Essential to building a good financial forecasting model is having a realistic trading model to eval...
In recent years, there are many studies rely on forecasting with artificial neural networks. In this...
Gold is a precious metal once widely used as a standard for monetary exchange but was replaced by pa...
Based on data from the previous year's gold price, the "GOLD PRICE PREDICTION" project forecasts the...
Gold is precious metal once widely used as standard for monetary exchange but was replaced by paper...
Gold is a versatile material in high demand by both corporates and investors. Hence, the ability to ...
The main objective of this study is to predict monthly price of gold. The monthly sample data of gol...
Developing a precise and accurate model of gold price is critical to assets management because of it...
Financial market forecasting is used to assess the future value of financial instruments in various ...
International audienceFinancial institutions, investors, mining companies and related firms need an ...