Title :
Prediction of gold and silver stock price using ensemble models
Author :
Mahato, Pradeep Kumar ; Attar, Vahida
Author_Institution :
Comput. Eng. Dept., Coll. of Eng. Pune, Pune, India
Abstract :
Gold price prediction is a complex problem due to its non-linearity and dynamic time series behavior, constrained with many factors like economic, financial etc. Due to its high degree of monetary rewards and understanding the hidden pattern behind stock prediction researchers have proposed many statistical and machine learning algorithms for stock prediction. In this paper we examine different ensemble models for determining the future momentum of the gold and silver stock price, whether it will increase or decrease for the following relative to current days stock price. Using stacking approach we got significant accuracy of 85 % for predicting gold stock and 79 % for silver stock using a hybrid bagging ensemble.
Keywords :
economic forecasting; learning (artificial intelligence); pricing; statistical analysis; stock markets; complex problem; dynamic time series behavior; economic factor; financial factor; gold stock price prediction; hidden patterns; hybrid bagging ensemble models; machine learning algorithm; monetary reward degree; nonlinearity behavior; silver stock price prediction; stacking approach; statistical algorithm; Accuracy; Bagging; Gold; Predictive models; Silver; Stacking; Training; Gold price prediction; ensemble models; soft computing;
Conference_Titel :
Advances in Engineering and Technology Research (ICAETR), 2014 International Conference on
Conference_Location :
Unnao
DOI :
10.1109/ICAETR.2014.7012821