Graph Learning for Foreign Exchange Rate Prediction and Statistical Arbitrage
Yoonsik Hong, Diego Klabjan

TL;DR
This paper introduces a novel graph learning approach for foreign exchange rate prediction and statistical arbitrage, leveraging multi-currency relationships and time lag considerations, resulting in significant performance improvements.
Contribution
It develops a two-step graph learning framework for FX prediction and arbitrage, addressing prior gaps by modeling complex relationships and time delays explicitly.
Findings
Significant reduction in mean squared error for FX prediction.
61.89% higher information ratio in FX arbitrage strategy.
45.51% higher Sortino ratio compared to benchmark.
Abstract
We propose a two-step graph learning approach for foreign exchange statistical arbitrages (FXSAs), addressing two key gaps in prior studies: the absence of graph-learning methods for foreign exchange rate prediction (FXRP) that leverage multi-currency and currency-interest rate relationships, and the disregard of the time lag between price observation and trade execution. In the first step, to capture complex multi-currency and currency-interest rate relationships, we formulate FXRP as an edge-level regression problem on a discrete-time spatiotemporal graph. This graph consists of currencies as nodes and exchanges as edges, with interest rates and foreign exchange rates serving as node and edge features, respectively. We then introduce a graph-learning method that leverages the spatiotemporal graph to address the FXRP problem. In the second step, we present a stochastic optimization…
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Taxonomy
TopicsStock Market Forecasting Methods · Market Dynamics and Volatility · Machine Learning in Materials Science
