DocumentCode :
1791735
Title :
High-frequency financial statistics with parallel R and Intel Xeon Phi coprocessor
Author :
Jian Zou ; Hui Zhang
Author_Institution :
Dept. of Math. Sci., Worcester Polytech. Inst., Worcester, MA, USA
fYear :
2014
fDate :
27-30 Oct. 2014
Firstpage :
61
Lastpage :
69
Abstract :
Financial statistics covers a wide array of applications in the financial world, such as (high frequency) trading, risk management, pricing and valuation of securities and derivatives, and various business and economic analytics. Portfolio allocation is one of the most important problems in financial risk management. One most challenging part in portfolio allocation 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 portfolio allocation problem using high-frequency financial data, and propose a hybrid parallelization solution to carry out efficient asset allocations in a large portfolio via intra-day high-frequency data. We exploit a variety of HPC techniques, including parallel R, Intel Math Kernel Library, and automatic offloading to Intel Xeon Phi coprocessor in particular to speed up the simulation and optimization procedures in our statistical investigations. Our numerical studies are based on high-frequency price data on stocks traded in New York Stock Exchange in 2011. The analysis results show that portfolios constructed using high-frequency approach generally perform well by pooling together the strengths of regularization and estimation from a risk management perspective. We also investigate the computation aspects of large-scale multiple hypothesis testing for time series data. Using a combination of software and hardware parallelism, we demonstrate a high level of performance on high-frequency financial statistics.
Keywords :
asset management; coprocessors; financial data processing; investment; optimisation; parallel processing; pricing; risk management; stock markets; time series; HPC techniques; Intel Math Kernel Library; Intel Xeon Phi coprocessor; New York Stock Exchange; asset allocations; automatic offloading; business analytics; economic analytics; financial risk management; financial world; hardware parallelism; high frequency trading; high-frequency financial data; high-frequency financial statistics; high-frequency price data; hybrid parallelization solution; intra-day high-frequency data; large-scale multiple hypothesis testing; optimization procedures; parallel R; portfolio allocation problem; pricing; securities valuation; software parallelism; stocks trading; time series data; Libraries; Optimization; Parallel processing; Portfolios; Resource management; Risk management; Vectors; Intel Xeon Phi Coprocessor; high-frequency financial analysis; massive parallelism; parallel R;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Big Data (Big Data), 2014 IEEE International Conference on
Conference_Location :
Washington, DC
Type :
conf
DOI :
10.1109/BigData.2014.7004414
Filename :
7004414
Link To Document :
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