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Calibrating the Mean-Reversion Parameter in the Hull-White Model Using Neural Networks

机译:使用神经网络校准Hull-White模型中的均值回复参数

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Interest rate models are widely used for simulations of interest rate movements and pricing of interest rate derivatives. We focus on the Hull-White model, for which we develop a technique for calibrating the speed of mean reversion. We examine the theoretical time-dependent version of mean reversion function and propose a neural network approach to perform the calibration based solely on historical interest rate data. The experiments indicate the suitability of depth-wise convolution and provide evidence for the advantages of neural network approach over existing methodologies. The proposed models produce mean reversion comparable to rolling-window linear regression's results, allowing for greater flexibility while being less sensitive to market turbulence.
机译:利率模型被广泛用于模拟利率变动和利率衍生工具的定价。我们专注于Hull-White模型,为此我们开发了一种用于校准均值回复速度的技术。我们研究了均值回归函数的理论上与时间相关的版本,并提出了一种仅基于历史利率数据进行校准的神经网络方法。实验表明深度卷积的适用性,并提供了证据证明神经网络方法优于现有方法。所提出的模型产生的均值回归可与滚动窗口线性回归的结果相比,从而具有更大的灵活性,同时对市场动荡不那么敏感。

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