高斯过程的最优停止

Kshama Dwarakanath, Danial Dervovic, P. Tavallali, Svitlana Vyetrenko, T. Balch
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引用次数: 1

摘要

我们提出了一组新的基于高斯过程的时间序列快速近似最优停止算法,并具体应用于金融市场。我们表明,金融时间序列通常表现出的结构特性(例如,均值回归的趋势)允许使用高斯和深度高斯过程模型,这些模型进一步使我们能够分析评估最佳停止值函数和策略。我们还通过最优停止分析传播价格模型来量化价值函数中的不确定性。我们将我们提出的方法与基于抽样的方法以及目前被认为是文献中最先进的基于深度学习的基准进行比较和对比。我们表明,我们的算法家族在三个历史时间序列数据集上的表现优于基准,这些数据集包括日内和日内股票资产价格以及每日美国国债收益率曲线利率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Stopping with Gaussian Processes
We propose a novel group of Gaussian Process based algorithms for fast approximate optimal stopping of time series with specific applications to financial markets. We show that structural properties commonly exhibited by financial time series (e.g., the tendency to mean-revert) allow the use of Gaussian and Deep Gaussian Process models that further enable us to analytically evaluate optimal stopping value functions and policies. We additionally quantify uncertainty in the value function by propagating the price model through the optimal stopping analysis. We compare and contrast our proposed methods against a sampling-based method, as well as a deep learning based benchmark that is currently considered the state-of-the-art in the literature. We show that our family of algorithms outperforms benchmarks on three historical time series datasets that include intra-day and end-of-day equity asset prices as well as the daily US treasury yield curve rates.
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