RCURRENCY: Live Digital Asset Trading Using a Recurrent Neural Network-based Forecasting System
Yapeng Jasper Hu, Ralph van Gurp, Ashay Somai, Hugo Kooijman, Jan, S. Rellermeyer (Distributed Systems Group, Delft University of Technology)

TL;DR
RCURRENCY is an RNN-based trading system that predicts digital asset prices with high accuracy, enabling effective live trading and portfolio management in volatile markets, outperforming traditional methods.
Contribution
This paper introduces RCURRENCY, a novel RNN-based trading engine that predicts digital asset prices and manages portfolios in real-time, demonstrating improved accuracy and profitability.
Findings
Prediction error less than 0.5% at next interval
Successful portfolio stabilization in live simulation
Potential to increase digital asset portfolio value over time
Abstract
Consistent alpha generation, i.e., maintaining an edge over the market, underpins the ability of asset traders to reliably generate profits. Technical indicators and trading strategies are commonly used tools to determine when to buy/hold/sell assets, yet these are limited by the fact that they operate on known values. Over the past decades, multiple studies have investigated the potential of artificial intelligence in stock trading in conventional markets, with some success. In this paper, we present RCURRENCY, an RNN-based trading engine to predict data in the highly volatile digital asset market which is able to successfully manage an asset portfolio in a live environment. By combining asset value prediction and conventional trading tools, RCURRENCY determines whether to buy, hold or sell digital currencies at a given point in time. Experimental results show that, given the data of…
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Taxonomy
TopicsStock Market Forecasting Methods · Complex Systems and Time Series Analysis · Financial Markets and Investment Strategies
