Forecasting future values of Colombian companies traded on the New York Stock Exchange is a daily challenge for investors, due to these stocks’ high volatility. There are several forecasting models for forecasting time series data, such as the autoregressive integrated moving average (ARIMA) model, which has been considered the most-used regression model in time series prediction for the last four decades, although the ARIMA model cannot estimate non-linear regression behavior caused by high volatility in the time series. In addition, the support vector regression (SVR) model is a pioneering machine learning approach for solving nonlinear regression estimation procedures. For this reason, this paper proposes using a hybrid model benefiting ...
The purpose of predictive stock price systems is to provide abnormal returns for financial market op...
Prediction of financial time series is described as one of the most challenging tasks of time series...
Forecasting financial time series is one of the most challenging problems in economics and business....
Stock investment provides high-profit opportunities but also has a high risk of loss. Investors use ...
Many models have been proposed for forecasting stock prices. One is the Autoregressive Integrated Mo...
In recent years, as global financial markets have become increasingly connected, the degree of corre...
Time series forecasting remains a challenging task owing to its nonlinear, complex and chaotic behav...
The objective of this research was to compare the effectiveness of the GARCH method with machine lea...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
The objective of this research was to compare the effectiveness of the GARCH method with machine lea...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
The modern era as it is now the world of stock investment is in great demand by investors, both long...
The modern era as it is now the world of stock investment is in great demand by investors, both long...
Prediction of the trend of the stock market is very crucial. If someone has robust forecasting tools...
The modern era as it is now the world of stock investment is in great demand by investors, both long...
The purpose of predictive stock price systems is to provide abnormal returns for financial market op...
Prediction of financial time series is described as one of the most challenging tasks of time series...
Forecasting financial time series is one of the most challenging problems in economics and business....
Stock investment provides high-profit opportunities but also has a high risk of loss. Investors use ...
Many models have been proposed for forecasting stock prices. One is the Autoregressive Integrated Mo...
In recent years, as global financial markets have become increasingly connected, the degree of corre...
Time series forecasting remains a challenging task owing to its nonlinear, complex and chaotic behav...
The objective of this research was to compare the effectiveness of the GARCH method with machine lea...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
The objective of this research was to compare the effectiveness of the GARCH method with machine lea...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
The modern era as it is now the world of stock investment is in great demand by investors, both long...
The modern era as it is now the world of stock investment is in great demand by investors, both long...
Prediction of the trend of the stock market is very crucial. If someone has robust forecasting tools...
The modern era as it is now the world of stock investment is in great demand by investors, both long...
The purpose of predictive stock price systems is to provide abnormal returns for financial market op...
Prediction of financial time series is described as one of the most challenging tasks of time series...
Forecasting financial time series is one of the most challenging problems in economics and business....