Sid Bhatia, Sidharth Peri, Sam Friedman, Michelle Malen
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High-Frequency Trading Liquidity Analysis | Application of Machine Learning Classification
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.