Guidelines for building a realistic algorithmic trading market simulator for backtesting while incorporating market impact

IF 0.3 Q4 BUSINESS, FINANCE Algorithmic Finance Pub Date : 2023-10-05 DOI:10.3233/af-220356
Babak Mahdavi-Damghani, Stephen Roberts
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Abstract

In this paper, a shorter and more publication focused version of our recent article “A Bottom-Up Approach to the financial Markets” (Mahdavi-Damghani, & Roberts, S. 2019.) is presented. More specifically we propose a new approach to studying the financial markets using the Bottom-Up approach instead of the traditional Top-Down. We achieve this shift in perspective, by re-introducing the High Frequency Trading Ecosystem (HFTE) model Mahdavi-Damghani, B. 2017. More specifically we specify an approach in which agents in Neural Network format designed to address the complexity demands of most common financial strategies interact through an Order-Book. We introduce in that context concepts such as the Path of Interaction in order to study our Ecosystem of strategies through time. We show how a Particle Filter methodology can then be used in order to track the market ecosystem through time. Finally, we take this opportunity to explore how to build a realistic market simulator which objective would be to test real market impact without incurring any research costs.
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指导方针建立一个现实的算法交易市场模拟器回测,同时纳入市场影响
本文是我们最近一篇文章《金融市场的自下而上方法》(Mahdavi-Damghani, &罗伯茨,S. 2019)。更具体地说,我们提出了一种新的方法来研究金融市场,使用自下而上的方法,而不是传统的自上而下的方法。我们通过重新引入高频交易生态系统(HFTE)模型Mahdavi-Damghani, B. 2017,实现了这一观点的转变。更具体地说,我们指定了一种方法,其中神经网络格式的代理旨在解决大多数常见金融策略的复杂性需求,通过订单簿进行交互。在此背景下,我们引入了互动路径等概念,以便研究我们的战略生态系统。我们展示了如何使用粒子过滤器方法来跟踪市场生态系统。最后,我们借此机会探讨如何建立一个现实的市场模拟器,其目的是在不产生任何研究成本的情况下测试真实的市场影响。
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来源期刊
Algorithmic Finance
Algorithmic Finance BUSINESS, FINANCE-
CiteScore
0.40
自引率
0.00%
发文量
6
期刊介绍: Algorithmic Finance is both a nascent field of study and a new high-quality academic research journal that seeks to bridge computer science and finance. It covers such applications as: High frequency and algorithmic trading Statistical arbitrage strategies Momentum and other algorithmic portfolio management Machine learning and computational financial intelligence Agent-based finance Complexity and market efficiency Algorithmic analysis of derivatives valuation Behavioral finance and investor heuristics and algorithms Applications of quantum computation to finance News analytics and automated textual analysis.
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