Investigating Limit Order Book Characteristics for Short Term Price Prediction: a Machine Learning Approach

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Authors Faisal I Qureshi
Journal/Conference Name arXiv preprint
Paper Category
Paper Abstract With the proliferation of algorithmic high-frequency trading in financial markets, the Limit Order Book has generated increased research interest. Research is still at an early stage and there is much we do not understand about the dynamics of Limit Order Books. In this paper, we employ a machine learning approach to investigate Limit Order Book features and their potential to predict short term price movements. This is an initial broad-based investigation that results in some novel observations about LOB dynamics and identifies several promising directions for further research. Furthermore, we obtain prediction results that are significantly superior to a baseline predictor.
Date of publication 2018
Code Programming Language Python
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