The Short-Term Predictability of Returns in Order Book Markets: a Deep Learning Perspective
In this paper, we conduct a systematic large-scale analysis of order book-driven predictability in high-frequency returns by leveraging deep learning techniques. First, we introduce a new and robust representation of the order book, the volume representation. Next, we carry out an extensive empirica...
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Zusammenfassung: | In this paper, we conduct a systematic large-scale analysis of order
book-driven predictability in high-frequency returns by leveraging deep
learning techniques. First, we introduce a new and robust representation of the
order book, the volume representation. Next, we carry out an extensive
empirical experiment to address various questions regarding predictability. We
investigate if and how far ahead there is predictability, the importance of a
robust data representation, the advantages of multi-horizon modeling, and the
presence of universal trading patterns. We use model confidence sets, which
provide a formalized statistical inference framework particularly well suited
to answer these questions. Our findings show that at high frequencies
predictability in mid-price returns is not just present, but ubiquitous. The
performance of the deep learning models is strongly dependent on the choice of
order book representation, and in this respect, the volume representation
appears to have multiple practical advantages. |
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DOI: | 10.48550/arxiv.2211.13777 |