DocumentCode :
3717413
Title :
Volatility matrix inference in high-frequency finance with regularization and efficient computations
Author :
Jian Zou;Yunbo An;Hong Yan
Author_Institution :
Department of Mathematical Sciences, Worcester Polytechnic Institute
fYear :
2015
Firstpage :
2437
Lastpage :
2444
Abstract :
Volatility analysis plays a major role in finance and economics. It is the key input for many financial topics including risk management, option and derivative pricing. One pressing computational hurdle in high frequency financial statistics is the tremendous amount of data and the optimization procedures that require computing power beyond the currently available desktop systems. In this article, we focus on the statistical inference problem on large volatility matrix using high-frequency financial data, and propose a regularization approach to achieve lower prediction errors. We also applied a hybrid parallelization solution to carry out efficient computations for high dimensional statistical methods via intra-day high-frequency data. A variety of hardware and software based HPC techniques, including parallel R, Intel Math Kernel Library, and automatic offloading to Intel Xeon Phi coprocessor are applied to speed up the statistical computations. Our numerical studies are based on high-frequency price data on stocks traded in New York Stock Exchange in 2013. The analysis results show that the constructed estimator using regularization approach generally achieves higher prediction power while enjoying faster convergence rate. We demonstrate significant performance improvement on statistical inference for high-frequency financial data by combining both software and hardware parallelism.
Keywords :
"Estimation","Yttrium","Kernel","Sparse matrices","Big data","Data models","Optimization"
Publisher :
ieee
Conference_Titel :
Big Data (Big Data), 2015 IEEE International Conference on
Type :
conf
DOI :
10.1109/BigData.2015.7364038
Filename :
7364038
Link To Document :
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