Deep Learning for seasonality modelling in Inflation-Indexed Swap pricing

P. Giribone, D. Martelli
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Abstract

An Inflation-Indexed Swap (IIS) is a derivative in which, at every payment date, the counterparties swap an inflation rate with a fixed rate. For the calculation of the Inflation Leg cash flows it is necessary to build a mathematical model suitable for the Consumer Price Index (CPI) projection. For this purpose, quants typically start by using market quotes for the Zero-Coupon swaps in order to derive the future trend of the inflation index, together with a seasonality model for capturing the typical periodical effects. In this study, we propose a forecasting model for inflation seasonality based on a Long Short Term Memory (LSTM) network: a deep learning methodology particularly useful for forecasting purposes. The CPI predictions are conducted using a FinTech paradigm, but in respect of the traditional quantitative finance theory developed in this research field. The paper is structured according to the following sections: the first two parts illustrate the pricing methodologies for the most popular IIS: the Zero Coupon Inflation-Indexed Swap (ZCIIS) and the Year-on-Year Inflation-Indexed Swap (YYIIS); section 3 deals with the traditional standard method for the forecast of CPI values (trend + seasonality), while section 4 describes the LSTM architecture, and section 5 focuses on CPI projections, also called inflation bootstrap. Then section 6 describes a robust check, implementing a traditional SARIMA model in order to improve the interpretation of the LSTM outputs; finally, section 7 concludes with a real market case, where the two methodologies are used for computing the fair-value for a YYIIS and the model risk is quantified.
通胀指数掉期定价中季节性建模的深度学习
通胀指数掉期(IIS)是一种衍生品,在每个支付日期,交易对手以固定利率互换通货膨胀率。为了计算通货膨胀的现金流量,有必要建立一个适合消费者价格指数(CPI)预测的数学模型。为此,量化分析师通常首先使用零息掉期的市场报价,以得出通胀指数的未来趋势,并使用季节性模型来捕捉典型的周期性效应。在本研究中,我们提出了一种基于长短期记忆(LSTM)网络的通货膨胀季节性预测模型:一种对预测特别有用的深度学习方法。CPI预测是使用金融科技范式进行的,但在这个研究领域发展的传统定量金融理论方面。本文的结构如下:前两部分阐述了最流行的IIS的定价方法:零息通货膨胀指数掉期(ZCIIS)和年度通货膨胀指数掉期(YYIIS);第3节讨论预测CPI值的传统标准方法(趋势+季节性),而第4节描述LSTM架构,第5节侧重于CPI预测,也称为通货膨胀自举。然后,第6节描述了一个鲁棒检查,实现了传统的SARIMA模型,以改进对LSTM输出的解释;最后,第7节以一个真实的市场案例结束,其中使用这两种方法计算YYIIS的公允价值,并对模型风险进行量化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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