| Literature DB >> 35434526 |
Georgios Fatouros1,2, Georgios Makridis1, Dimitrios Kotios1, John Soldatos2, Michael Filippakis1, Dimosthenis Kyriazis1.
Abstract
Determining and minimizing risk exposure pose one of the biggest challenges in the financial industry as an environment with multiple factors that affect (non-)identified risks and the corresponding decisions. Various estimation metrics are utilized towards robust and efficient risk management frameworks, with the most prevalent among them being the Value at Risk (VaR). VaR is a valuable risk-assessment approach, which offers traders, investors, and financial institutions information regarding risk estimations and potential investment insights. VaR has been adopted by the financial industry for decades, but the generated predictions lack efficiency in times of economic turmoil such as the 2008 global financial crisis and the COVID-19 pandemic, which in turn affects the respective decisions. To address this challenge, a variety of well-established variations of VaR models are exploited by the financial community, including data-driven and data analytics models. In this context, this paper introduces a probabilistic deep learning approach, leveraging time-series forecasting techniques with high potential of monitoring the risk of a given portfolio in a quite efficient way. The proposed approach has been evaluated and compared to the most prominent methods of VaR calculation, yielding promising results for VaR 99% for forex-based portfolios. Supplementary Information: The online version contains supplementary material available at 10.1007/s42521-022-00050-0.Entities:
Keywords: Finance; Forex; Probabilistic deep neural networks; Risk assessment; Time-series; VaR; VaR prediction
Year: 2022 PMID: 35434526 PMCID: PMC9006212 DOI: 10.1007/s42521-022-00050-0
Source DB: PubMed Journal: Digit Finance ISSN: 2524-6186
Fig. 1Conceptual architecture of DeepVaR framework
Fig. 2Training dataset for rolling window VaR estimation
Mean running time to estimate VaR quantiles
| Model | 1 Asset (s) | 4 Assets (s) | Rel. Difference (%) |
|---|---|---|---|
| DeepAR | 12.457834 | 12.533903 | 0.61 |
| HS | 0.000201 | 0.000398 | 98.01 |
| RM | 0.003418 | 0.013461 | 293.83 |
| GARCH | 0.009435 | 0.038732 | 310.51 |
| BiGAN | 20.467264 | 20.947305 | 2.35 |
| MC | 0.000567 | 0.002108 | 271.78 |
Performance of VaR models in AUDUSD series
| Model | |||||||
|---|---|---|---|---|---|---|---|
| DeepVaR | 9.28 | ||||||
| HS | 9.28 | 15 | 0.01616 | 0.01617 | 0.00022 | 0.02923 | |
| RM | 9.28 | 21 | 0.02263 | 0.02263 | 0.00021 | 0.03457 | |
| GARCH | 9.28 | 17 | 0.01832 | 0.01832 | 0.03059 | ||
| BiGAN | 9.28 | 20 | 0.02155 | 0.02155 | 0.00023 | 0.03403 | |
| MC | 9.28 | 18 | 0.01940 | 0.01940 | 0.00022 | 0.03149 |
Values in bold indicate the model(s) with the best performance per evaluation metric (column)
Coverage and independence tests of VaR models in AUDUSD series
| Model | DQ | |||
|---|---|---|---|---|
| DeepVaR | 2.386 [0.122] | 0.054 [0.816] | 2.441 [0.295] | 2.158 [0.905] |
| HS | 3.014 [0.083] | |||
| RM | 2.931 [0.087] | |||
| GARCH | 1.013 [0.314] | |||
| BiGAN | ||||
| MC |
The p values are in brackets
Performance of VaR models in GBPUSD series
| Model | |||||||
|---|---|---|---|---|---|---|---|
| DeepVaR | 9.28 | 0.02454 | |||||
| HS | 9.28 | 8 | 0.00862 | 0.00862 | 0.00020 | ||
| RM | 9.28 | 22 | 0.02371 | 0.02371 | 0.00021 | 0.03530 | |
| GARCH | 9.28 | 14 | 0.01509 | 0.01509 | 0.02710 | ||
| BiGAN | 9.28 | 16 | 0.01724 | 0.01724 | 0.00022 | 0.02969 | |
| MC | 9.28 | 13 | 0.01401 | 0.01401 | 0.00021 | 0.02663 |
Values in bold indicate the model(s) with the best performance per evaluation metric (column)
Coverage and independence tests of VaR models in GBPUSD series
| Model | DQ | |||
|---|---|---|---|---|
| DeepVaR | 0.613 [0.434] | 4.871 [0.088] | ||
| HS | 0.184 [0.668] | 3.713 [0.054] | 3.897 [0.142] | |
| RM | 0.366 [0.545] | |||
| GARCH | 2.108 [0.147] | 1.623 [0.203] | 3.731 [0.155] | |
| BiGAN | ||||
| MC | 1.347 [0.246] |
The p values are in brackets
Performance of VaR models in USDJPY series
| Model | |||||||
|---|---|---|---|---|---|---|---|
| DeepVaR | 9.28 | 0.00015 | |||||
| HS | 9.28 | 11 | 0.01185 | 0.01185 | 0.00016 | 0.02387 | |
| RM | 9.28 | 24 | 0.02586 | 0.02586 | 0.00015 | 0.03456 | |
| GARCH | 9.28 | 13 | 0.01401 | 0.01401 | 0.02351 | ||
| BiGAN | 9.28 | 12 | 0.01293 | 0.01293 | 0.00016 | 0.02354 | |
| MC | 9.28 | 12 | 0.01293 | 0.01293 | 0.00016 | 0.02411 |
Values in bold indicate the model(s) with the best performance per evaluation metric (column)
Coverage and independence tests of VaR models in USDJPY series
| Model | DQ | |||
|---|---|---|---|---|
| DeepVaR | 0.184 [0.668] | 0.139 [0.709] | 0.324 [0.851] | 2.857 [0.827] |
| HS | 0.308 [0.579] | 2.477 [0.116] | 2.785 [0.248] | |
| RM | 0.207 [0.649] | |||
| GARCH | 1.347 [0.246] | 0.37 [0.543] | 1.717 [0.424] | 8.448 [0.207] |
| BiGAN | 0.743 [0.389] | |||
| MC | 0.743 [0.389] | 2.159 [0.142] | 2.902 [0.234] |
The p values are in brackets
Performance of VaR models in EURUSD series
| Model | |||||||
|---|---|---|---|---|---|---|---|
| DeepVaR | 9.28 | 0.00014 | 0.01501 | ||||
| HS | 9.28 | 4 | 0.00431 | 0.00431 | 0.00014 | 0.01539 | |
| RM | 9.28 | 14 | 0.01509 | 0.01509 | 0.02354 | ||
| GARCH | 9.28 | 5 | 0.00539 | 0.00539 | |||
| BiGAN | 9.28 | 8 | 0.00862 | 0.00862 | 0.00014 | 0.01814 | |
| MC | 9.28 | 7 | 0.00754 | 0.00754 | 0.00014 | 0.01738 |
Values in bold indicate the model(s) with the best performance per evaluation metric (column)
Coverage and independence tests of VaR models in EURUSD series
| Model | DQ | |||
|---|---|---|---|---|
| DeepVaR | 0.009 [0.926] | 5.786 [0.448] | ||
| HS | 3.846 [0.05] | 0.035 [0.852] | 3.881 [0.144] | |
| RM | 2.108 [0.147] | 0.429 [0.512] | 2.537 [0.281] | 9.598 [0.143] |
| GARCH | 2.386 [0.122] | 0.054 [0.816] | 2.441 [0.295] | |
| BiGAN | 0.184 [0.668] | 0.139 [0.709] | 0.324 [0.851] | |
| MC | 0.613 [0.434] | 0.107 [0.744] | 0.72 [0.698] |
The p values are in brackets
Fig. 3AUDUSD: performance per model. In each figure, the VaR estimation of each model (black line) is depicted against the true PnL (green and yellow dots, for positive and negative returns, respectively). The red dots represent the VaR violations
Fig. 4GBPUSD: VaR performance per model. In each figure, the VaR estimation of each model (black line) is depicted against the true PnL (green and yellow dots, for positive and negative returns, respectively). The red dots represent the VaR violations
Fig. 5USDJPY: VaR performance per model. In each figure, the VaR estimation of each model (black line) is depicted against the true PnL (green and yellow dots, for positive and negative returns, respectively). The red dots represent the VaR violations
Fig. 6EURUSD: VaR performance per model. In each figure, the VaR estimation of each model (black line) is depicted against the true PnL (green and yellow dots, for positive and negative returns respectively). The red dots represent the VaR violations
Average performance of VaR models over the FX portfolios
| Model | |||||||
|---|---|---|---|---|---|---|---|
| DeepVaR | 9.28 | 0.00011 | |||||
| HS | 9.28 | 7.29 | 0.00784 | 0.00784 | 0.00011 | 0.01618 | |
| RM | 9.28 | 12.14 | 0.01308 | 0.01308 | 0.02002 | ||
| GARCH | 9.28 | 8.61 | 0.00928 | 0.00928 | 0.01660 | ||
| BiGAN | 9.28 | 11.51 | 0.01240 | 0.01240 | 0.00011 | 0.01966 | |
| MC | 9.28 | 10.31 | 0.01111 | 0.01111 | 0.00011 | 0.01854 |
Values in bold indicate the model(s) with the best performance per evaluation metric (column)
Percentage of portfolios passed the coverage and independence tests of VaR per model in significant level 95%
| Model | DQ | |||
|---|---|---|---|---|
| DeepVaR | 72.8 | |||
| HS | 72.0 | 59.5 | 36.7 | |
| RM | 65.2 | 95.3 | 68.3 | 55.9 |
| GARCH | 76.5 | 92.9 | 77.5 | 63.0 |
| BiGAN | 64.3 | 71.5 | 53.5 | 26.1 |
| MC | 70.4 | 68 | 54.8 | 26.7 |
Values in bold indicate the model(s) with the best performance per evaluation metric (column)
Fig. 7Box-plots of the performance per model over 1000 random portfolios. Each sub-figure refers to a different loss function. a and b Show that DeepVaR is the only model having violation rate and quadratic loss lower than 1- (i.e., 0.01) confidence probability over most of the random portfolios. In terms of Smooth Loss (c), the superiority of DeepVaR over the rest of the models is evident. Tick loss (d) is the only metric where DeepVaR under-performs compared to the rest of the models. e Presents the results of VaR estimation firm loss, with DeepVaR to be the winning model