Research Information
HEAD OF RESEARCH TEAM
RESEARCH FOCUS
- ICT Based - User Interface and UX Design
RESEARCH FUNDING
Due to the prospects for financial gain, forex is always attractive to many people. However, because forex market analysis is not simple, a computer is needed to assist in creating predictions using features that are understandable to people. This study employs the Multilinear Regression technique to identify these kinds of features. The features and prediction target have a very strong correlation with the lowest RMSE is 0.00408 and the highest R2 is 0.99477, the prediction quality is quite outstanding. The outcome will help academics in the forex field use machine learning algorithms to make better predictions