High-Frequency Trading Liquidity Analysis | Application of Machine Learning Classification

Sid Bhatia, Sidharth Peri, Sam Friedman, Michelle Malen
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Abstract

This research presents a comprehensive framework for analyzing liquidity in financial markets, particularly in the context of high-frequency trading. By leveraging advanced machine learning classification techniques, including Logistic Regression, Support Vector Machine, and Random Forest, the study aims to predict minute-level price movements using an extensive set of liquidity metrics derived from the Trade and Quote (TAQ) data. The findings reveal that employing a broad spectrum of liquidity measures yields higher predictive accuracy compared to models utilizing a reduced subset of features. Key liquidity metrics, such as Liquidity Ratio, Flow Ratio, and Turnover, consistently emerged as significant predictors across all models, with the Random Forest algorithm demonstrating superior accuracy. This study not only underscores the critical role of liquidity in market stability and transaction costs but also highlights the complexities involved in short-interval market predictions. The research suggests that a comprehensive set of liquidity measures is essential for accurate prediction, and proposes future work to validate these findings across different stock datasets to assess their generalizability.
高频交易流动性分析|机器学习分类的应用
本研究提出了一个分析金融市场流动性的综合框架,尤其是在高频交易的背景下。该研究利用先进的机器学习分类技术(包括逻辑回归、支持向量机和随机森林),旨在使用从交易和报价(TAQ)数据中提取的大量流动性指标来预测分钟级价格走势。研究结果表明,与使用较少特征子集的模型相比,使用广泛的流动性指标能获得更高的预测准确性。在所有模型中,流动性比率、流动比率和周转率等关键流动性指标始终是重要的预测指标,而随机森林算法则表现出更高的准确性。这项研究不仅证明了流动性在市场稳定性和交易成本中的关键作用,还突出了短期市场预测的复杂性。研究表明,一套全面的流动性衡量标准对于准确预测至关重要,并建议未来的工作在不同的股票数据集上验证这些发现,以评估其通用性。
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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