Deep Learning for Digital Asset Limit Order Books

3 Oct 2020  ·  Rakshit Jha, Mattijs De Paepe, Samuel Holt, James West, Shaun Ng ·

This paper shows that temporal CNNs accurately predict bitcoin spot price movements from limit order book data. On a 2 second prediction time horizon we achieve 71\% walk-forward accuracy on the popular cryptocurrency exchange coinbase. Our model can be trained in less than a day on commodity GPUs which could be installed into colocation centers allowing for model sync with existing faster orderbook prediction models. We provide source code and data at https://github.com/Globe-Research/deep-orderbook.

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