arXiv Open Access 2022

Estimating value at risk: LSTM vs. GARCH

Weronika Ormaniec Marcin Pitera Sajad Safarveisi Thorsten Schmidt
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Abstrak

Estimating value-at-risk on time series data with possibly heteroscedastic dynamics is a highly challenging task. Typically, we face a small data problem in combination with a high degree of non-linearity, causing difficulties for both classical and machine-learning estimation algorithms. In this paper, we propose a novel value-at-risk estimator using a long short-term memory (LSTM) neural network and compare its performance to benchmark GARCH estimators. Our results indicate that even for a relatively short time series, the LSTM could be used to refine or monitor risk estimation processes and correctly identify the underlying risk dynamics in a non-parametric fashion. We evaluate the estimator on both simulated and market data with a focus on heteroscedasticity, finding that LSTM exhibits a similar performance to GARCH estimators on simulated data, whereas on real market data it is more sensitive towards increasing or decreasing volatility and outperforms all existing estimators of value-at-risk in terms of exception rate and mean quantile score.

Penulis (4)

W

Weronika Ormaniec

M

Marcin Pitera

S

Sajad Safarveisi

T

Thorsten Schmidt

Format Sitasi

Ormaniec, W., Pitera, M., Safarveisi, S., Schmidt, T. (2022). Estimating value at risk: LSTM vs. GARCH. https://arxiv.org/abs/2207.10539

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Tahun Terbit
2022
Bahasa
en
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arXiv
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Open Access ✓