会议专题

Purchase and Redemption Prediction Based on Multi-task Gaussian Process and Dimensionality Reduction

  Predicting future cash flows based on historical data is an essential and hard problem of financial business.Most of the previous works have attempted to convert cash flows into time series to make prediction.However,real-valued datasets are mostly multidimensional sources with complex curves,large amplitude and high frequency.The handful of research efforts that consider those truths have met with limited success.This paper proposes an algorithm based on Multi-task Gaussian Process model to predict cash flows in funds.Purchase refers to cash inflow,while redemption refers to cash outflow.MTGP can learn the correlation within multiple time series and make regression on each time series simultaneously.Furthermore,motif discovery is used for dimensionality reduction in data before MTGP to improve the accuracy.Experimental results on real-world data demonstrate the advantages of our proposed algorithm.

Time series Gaussian process Motif discovery Prediction

Chao Wang Xiangrui Cai Zhenguo Zhang Yanlong Wen

College of Computer and Control Engineering,Nankai University,38 Tongyan Road,Tianjin 300350,Peoples Republic of 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

434-438

2016-09-23(万方平台首次上网日期,不代表论文的发表时间)