To predicate the future with high accuracy is a holy grail in financial market. However, the volatility of chaotic financial market challenges new technologies from computer science to economic science all the time. Recently, Recurrent Neural Network (RNN) plays a new role in financial market prediction. However, results from RNN are restricted by sample size of training datasets, and show predication accuracy can hardly be guaranteed in a long term. On the other hand, Representative Pattern Discovery (RPD) is an effective way in long-term prediction while it is ineffective in short-term prediction. In this paper, we define a representative pattern for time series, and propose a fusion financial prediction strategy based on RNN and RPD. We take the advantages of both RNN and RPD, in the way that the proposed strategy is stateful to keep the short-term trend and it rectifies the predication by a time-dependent incremental factor in a long-term way. Compared with RNN and pattern discovery respectively, our experimental results demonstrate that our proposed strategy performs much better than that of others. It can increase the prediction accuracy by 6% on the basis of RNN at most, but at a cost of higher Mean Squared Error.
[1]
Pierre Gançarski,et al.
A global averaging method for dynamic time warping, with applications to clustering
,
2011,
Pattern Recognit..
[2]
Eamonn J. Keogh,et al.
iSAX: indexing and mining terabyte sized time series
,
2008,
KDD.
[3]
Philip S. Yu,et al.
Clustering by pattern similarity in large data sets
,
2002,
SIGMOD '02.
[4]
Geoffrey E. Hinton,et al.
Deep Learning
,
2015,
Nature.
[5]
Albert-Laszló Barabási,et al.
Bursts : the hidden patterns behind everything we do, from your e-mail to bloody crusades
,
2011
.
[6]
Sean Hughes,et al.
Clustering by Fast Search and Find of Density Peaks
,
2016
.
[7]
Ya-Ju Fan,et al.
Finding Motifs in Wind Generation Time Series Data
,
2012,
2012 11th International Conference on Machine Learning and Applications.
[8]
Algirdas Maknickas,et al.
Financial market prediction system with Evolino neural network and Delphi method
,
2013
.
[9]
Luca Di Persio,et al.
Artificial Neural Networks architectures for stock price prediction: comparisons and applications
,
2016
.