arXiv Open Access 2023

Real-time Trading System based on Selections of Potentially Profitable, Uncorrelated, and Balanced Stocks by NP-hard Combinatorial Optimization

Kosuke Tatsumura Ryo Hidaka Jun Nakayama Tomoya Kashimata Masaya Yamasaki
Lihat Sumber

Abstrak

Financial portfolio construction problems are often formulated as quadratic and discrete (combinatorial) optimization that belong to the nondeterministic polynomial time (NP)-hard class in computational complexity theory. Ising machines are hardware devices that work in quantum-mechanical/quantum-inspired principles for quickly solving NP-hard optimization problems, which potentially enable making trading decisions based on NP-hard optimization in the time constraints for high-speed trading strategies. Here we report a real-time stock trading system that determines long(buying)/short(selling) positions through NP-hard portfolio optimization for improving the Sharpe ratio using an embedded Ising machine based on a quantum-inspired algorithm called simulated bifurcation. The Ising machine selects a balanced (delta-neutral) group of stocks from an $N$-stock universe according to an objective function involving maximizing instantaneous expected returns defined as deviations from volume-weighted average prices and minimizing the summation of statistical correlation factors (for diversification). It has been demonstrated in the Tokyo Stock Exchange that the trading strategy based on NP-hard portfolio optimization for $N$=128 is executable with the FPGA (field-programmable gate array)-based trading system with a response latency of 164 $μ$s.

Topik & Kata Kunci

Penulis (5)

K

Kosuke Tatsumura

R

Ryo Hidaka

J

Jun Nakayama

T

Tomoya Kashimata

M

Masaya Yamasaki

Format Sitasi

Tatsumura, K., Hidaka, R., Nakayama, J., Kashimata, T., Yamasaki, M. (2023). Real-time Trading System based on Selections of Potentially Profitable, Uncorrelated, and Balanced Stocks by NP-hard Combinatorial Optimization. https://arxiv.org/abs/2307.06339

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2023
Bahasa
en
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arXiv
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