A Market Making Quotation Strategy Based on Dual Deep Learning Agents for Option Pricing and Bid-Ask Spread Estimation

P. Hsu, Chin-chiang Chou, Szu-Hao Huang, An-Pin Chen
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引用次数: 7

Abstract

Traditional professional traders and institutional investors utilized complex statistical models to price various derivative contracts and make trading decisions in the option and future markets. In recent years, with the rapid growth of algorithmic trading and program trading, the advanced information and communication technology has become an indispensable element for high-frequency traders, especially for the market makers. In addition, artificial intelligence and deep learning also plays an important role in novel financial technology (FinTech) research field. In this paper, we proposed a market making quotation strategy based on deep learning structure and practical finance domain knowledge. The proposed dual agents will simultaneously model the option prices and bid-ask spreads. The experiments demonstrate that our system can precisely estimate the value of options than famous financial engineering models. It also can be extended to develop proper market making quotation strategies to trade the options of Taiwan Stock Exchange Capitalization Weighted Stock Index(TAIEX).
基于二元深度学习代理的期权定价和买卖价差估计做市策略
传统的专业交易者和机构投资者利用复杂的统计模型对期权和期货市场的各种衍生品合约进行定价和交易决策。近年来,随着算法交易和程序化交易的快速发展,先进的信息通信技术已经成为高频交易者,尤其是做市商不可或缺的要素。此外,人工智能和深度学习在新型金融科技(FinTech)研究领域也发挥着重要作用。本文提出了一种基于深度学习结构和实用金融领域知识的做市报价策略。提议的双重代理人将同时模拟期权价格和买卖价差。实验表明,该系统比著名的金融工程模型更能准确地估计期权的价值。本研究也可推广到制定适当的做市报价策略来交易台湾证券交易所加权股票指数(TAIEX)的选择权。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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