This paper studies the problem of forecasting general stochastic processes using an extension of the Neural Jump ODE (NJ-ODE) framework. While NJ-ODE was the first framework to establish convergence guarantees for the prediction of irregularly observed time series, these results were limited to data stemming from It\^o-diffusions with complete observations, in particular Markov processes where all coordinates are observed simultaneously. In this work, we generalise these results to generic, possibly non-Markovian or discontinuous, stochastic processes with incomplete observations, by utilising the reconstruction properties of the signature transform. These theoretical results are supported by empirical studies, where it is shown that the path-dependent NJ-ODE outperforms the original NJ-ODE framework in the case of non-Markovian data. Moreover, we show that PD-NJ-ODE can be applied successfully to limit order book (LOB) data.
翻译:本文研究利用神经跳跃 ODE(NJ-ODE)框架的延伸预测一般随机过程的问题。虽然NJ-ODE是第一个为预测非正常观测时间序列建立趋同保证的框架,但这些结果仅限于通过完整观测的Itçço扩散数据,特别是同时观测所有坐标的Markov进程。在这项工作中,我们将这些结果归纳为通用的、可能非马尔科维亚或不连续的随机过程,通过利用签名转换的重建特性进行不完全的观测。这些理论结果得到经验性研究的支持,其中显示,在非马尔科维安数据的情况下,基于路径的NJ-ODE比原NJ-ODE框架要强。此外,我们表明,PD-NJ-ODE可以成功地用于限制订单簿数据(LOB)。