会议专题

Online Prediction for Forex with an Optimized Experts Selection Model

  Online prediction is a process to repeatedly predict the next element from a sequence of given previous elements.It has a broad range of applications on various areas,such as medical and finance.The biggest challenge of online prediction is sequence data does not have explicit features,which means it is difficult to remain good predictions.One of popular solution is to make prediction with expert advice,and the challenge is to pick the right experts with minimum cumulative loss.In this article,we use forex prediction as a case study,and propose a model that can select a good set of forex experts by learning a set of previous observed sequences.To achieve better performance,our model not only considers the average mistakes made by experts but also takes the average profit earn by experts into account.We demonstrate the merits of our model on a real major currency pairs data set.

Jia Zhu Jing Yang Jing Xiao Changqin Huang Gansen Zhao Yong Tang

School of Computer Science,South China Normal University,Guangzhou,China Institute of Computer Technology,Chinese Academy of Sciences,Beijing,China

国际会议

International Asia-Pacific Web Conference(第18届国际亚太互联网大会)

苏州

英文

371-382

2016-09-23(万方平台首次上网日期,不代表论文的发表时间)