A Data-Driven Market Simulator for Small Data Environments

Hans Bühler, Blanka Horvath, Terry Lyons, Imanol Perez Arribas, Ben Wood
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引用次数: 51

Abstract

Neural network based data-driven market simulation unveils a new and flexible way of modelling financial time series without imposing assumptions on the underlying stochastic dynamics. Though in this sense generative market simulation is model-free, the concrete modelling choices are nevertheless decisive for the features of the simulated paths. We give a brief overview of currently used generative modelling approaches and performance evaluation metrics for financial time series, and address some of the challenges to achieve good results in the latter. We also contrast some classical approaches of market simulation with simulation based on generative modelling and highlight some advantages and pitfalls of the new approach. While most generative models tend to rely on large amounts of training data, we present here a generative model that works reliably in environments where the amount of available training data is notoriously small. Furthermore, we show how a rough paths perspective combined with a parsimonious Variational Autoencoder framework provides a powerful way for encoding and evaluating financial time series in such environments where available training data is scarce. Finally, we also propose a suitable performance evaluation metric for financial time series and discuss some connections of our Market Generator to deep hedging.
面向小数据环境的数据驱动市场模拟器
基于神经网络的数据驱动市场模拟揭示了一种新的灵活的金融时间序列建模方法,而无需对潜在的随机动力学施加假设。虽然从这个意义上说,生成式市场模拟是没有模型的,但具体的建模选择对于模拟路径的特征是决定性的。我们简要概述了当前使用的金融时间序列生成建模方法和绩效评估指标,并解决了在后者中取得良好结果的一些挑战。我们还将一些经典的市场模拟方法与基于生成建模的模拟方法进行了对比,并强调了新方法的一些优点和缺陷。虽然大多数生成模型倾向于依赖于大量的训练数据,但我们在这里提出了一个生成模型,它可以在可用训练数据量非常少的环境中可靠地工作。此外,我们展示了粗糙路径视角与简约变分自编码器框架的结合如何为在可用训练数据稀缺的环境中编码和评估金融时间序列提供了一种强大的方法。最后,我们还提出了一个适合金融时间序列的绩效评价指标,并讨论了我们的市场生成器与深度套期保值的一些联系。
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