Parsimonious Quantile Regression of Financial Asset Tail Dynamics via Sequential Learning
We propose a parsimonious quantile regression framework to learn the dynamic tail behaviors of financial asset returns. Our model captures well both the time-varying characteristic and the asymmetrical heavy-tail property of financial time series. It combines the merits of a popular sequential neural network model, i.e., LSTM, with a novel parametric quantile function that we construct to represent the conditional distribution of asset returns. Our model also captures individually the serial dependences of higher moments, rather than just the volatility. Across a wide range of asset classes, the out-of-sample forecasts of conditional quantiles or VaR of our model outperform the GARCH family. Further, the proposed approach does not suffer from the issue of quantile crossing, nor does it expose to the ill-posedness comparing to the parametric probability density function approach
Year of publication: |
[2021]
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Authors: | Yan, Xing ; Zhang, Weizhong ; Liu, Wei ; MA, Lin ; Wu, Qi |
Publisher: |
[S.l.] : SSRN |
Subject: | Theorie | Theory | Regressionsanalyse | Regression analysis | Lernprozess | Learning process | Statistische Verteilung | Statistical distribution | Portfolio-Management | Portfolio selection | Kapitaleinkommen | Capital income |
Saved in:
Extent: | 1 Online-Ressource |
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Type of publication: | Book / Working Paper |
Language: | English |
Notes: | In: Advances in Neural Information Processing Systems 31 (NeurIPS 2018) Nach Informationen von SSRN wurde die ursprüngliche Fassung des Dokuments October 2018 erstellt |
Source: | ECONIS - Online Catalogue of the ZBW |
Persistent link: https://www.econbiz.de/10013244650
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