Litcius/Paper detail

Generating Realistic Stock Market Order Streams

Junyi Li, Xintong Wang, Yaoyang Lin, Arunesh Sinha, Michael P. Wellman

2020Proceedings of the AAAI Conference on Artificial Intelligence68 citationsDOIOpen Access PDF

Abstract

We propose an approach to generate realistic and high-fidelity stock market data based on generative adversarial networks (GANs). Our Stock-GAN model employs a conditional Wasserstein GAN to capture history dependence of orders. The generator design includes specially crafted aspects including components that approximate the market's auction mechanism, augmenting the order history with order-book constructions to improve the generation task. We perform an ablation study to verify the usefulness of aspects of our network structure. We provide a mathematical characterization of distribution learned by the generator. We also propose statistics to measure the quality of generated orders. We test our approach with synthetic and actual market data, compare to many baseline generative models, and find the generated data to be close to real data.

Topics & Concepts

Computer scienceGenerative grammarStock marketFidelityGenerator (circuit theory)Generative modelHigh fidelityOrder bookGenerative adversarial networkData miningArtificial intelligenceEconometricsMachine learningOrder (exchange)Deep learningMathematicsEconomicsPower (physics)PhysicsPaleontologyQuantum mechanicsFinanceHorseEngineeringTelecommunicationsBiologyElectrical engineeringGenerative Adversarial Networks and Image SynthesisStock Market Forecasting MethodsMusic and Audio Processing