Interpolation of missing swaption volatility data using variational autoencoders

被引:0
作者
Richert I. [1 ]
Buch R. [1 ]
机构
[1] Department of Financial Mathematics, Fraunhofer ITWM, Kaiserslautern
关键词
Gibbs sampling; Missing data imputation; Swaption; Variational autoencoder;
D O I
10.1007/s41237-023-00213-2
中图分类号
学科分类号
摘要
Albeit of crucial interest for financial researchers, market-implied volatility data of European swaptions often exhibit large portions of missing quotes due to illiquidity of the underlying swaption instruments. In this case, standard stochastic interpolation tools like the common SABR model cannot be calibrated to observed volatility smiles, due to data being only available for the at-the-money quote of the respective underlying swaption. Here, we propose to infer the geometry of the full unknown implied volatility cube by learning stochastic latent representations of implied volatility cubes via variational autoencoders, enabling inference about the missing volatility data conditional on the observed data by an approximate Gibbs sampling approach. Up to our knowledge, our studies constitute the first-ever completely nonparametric approach to modeling swaption volatility using unsupervised learning methods while simultaneously tackling the issue of missing data. Since training data for the employed variational autoencoder model is usually sparsely available, we propose a novel method to generate synthetic swaption volatility data for training and afterwards test the robustness of our approach on real market quotes. In particular, we show that SABR interpolated volatilities calibrated to reconstructed volatility cubes with artificially imputed missing values differ by not much more than two basis points compared to SABR fits calibrated to the complete cube. Moreover, we demonstrate how the imputation can be used to successfully set up delta-neutral portfolios for hedging purposes. © 2023, The Author(s).
引用
收藏
页码:291 / 317
页数:26
相关论文
共 50 条
  • [31] Expediting structure-property analyses using variational autoencoders with regression
    Templeton, William Frieden
    Miner, Justin P.
    Ngo, Austin
    Fitzwater, Lauren
    Reddy, Tharun
    Abranovic, Brandon
    Prichard, Paul
    Lewandowski, John J.
    Narra, Sneha Prabha
    COMPUTATIONAL MATERIALS SCIENCE, 2024, 242
  • [32] An Efficient Anomaly Detection System for Crowded Scenes Using Variational Autoencoders
    Xu, Ming
    Yu, Xiaosheng
    Chen, Dongyue
    Wu, Chengdong
    Jiang, Yang
    APPLIED SCIENCES-BASEL, 2019, 9 (16):
  • [33] Training Variational Autoencoders with Discrete Latent Variables Using Importance Sampling
    Bartler, Alexander
    Wiewel, Felix
    Mauch, Lukas
    Yang, Bin
    2019 27TH EUROPEAN SIGNAL PROCESSING CONFERENCE (EUSIPCO), 2019,
  • [34] Non-linear missing data imputation for healthcare data via index-aware autoencoders
    Sadaf Kabir
    Leily Farrokhvar
    Health Care Management Science, 2022, 25 : 484 - 497
  • [35] Non-linear missing data imputation for healthcare data via index-aware autoencoders
    Kabir, Sadaf
    Farrokhvar, Leily
    HEALTH CARE MANAGEMENT SCIENCE, 2022, 25 (03) : 484 - 497
  • [36] Missing-Data Imputation With Position-Encoding Denoising Autoencoders for Industrial Processes
    Ou, Chen
    Zhu, Hongqiu
    Shardt, Yuri A. W.
    Ye, Lingjian
    Yuan, Xiaofeng
    Wang, Yalin
    Yang, Chunhua
    Gui, Weihua
    IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2024, 73
  • [37] Generative Data by β-Variational Autoencoders Help Build Stronger Classifiers: ECG Use Case
    Nademi, Yousef
    Kalmady, Sunil V.
    Sun, Weijie
    Salimi, Amir
    Hindle, Abram
    Kaul, Padma
    Greiner, Russell
    2023 19TH INTERNATIONAL SYMPOSIUM ON MEDICAL INFORMATION PROCESSING AND ANALYSIS, SIPAIM, 2023,
  • [38] Variational Autoencoding with Conditional Iterative Sampling for Missing Data Imputation
    Kuang, Shenfen
    Song, Jie
    Wang, Shangjiu
    Zhu, Huafeng
    MATHEMATICS, 2024, 12 (20)
  • [39] Health Indicator for Low-Speed Axial Bearings Using Variational Autoencoders
    Hemmer, Martin
    Klausen, Andreas
    Huynh Van Khang
    Robbersmyr, Kjell G.
    Waag, Tor, I
    IEEE ACCESS, 2020, 8 : 35842 - 35852
  • [40] Brain Tumor Classification Using a Combination of Variational Autoencoders and Generative Adversarial Networks
    Ahmad, Bilal
    Sun, Jun
    You, Qi
    Palade, Vasile
    Mao, Zhongjie
    BIOMEDICINES, 2022, 10 (02)