Locally Scaled and Stochastic Volatility Metropolis– Hastings Algorithms
Abstract
:1. Introduction
- We present two novel MCMC algorithms being the Locally Scaled Metropolis–Hastings and Stochastic Volatility Metropolis–Hastings methods.
- We present the first application of Bayesian inference of the Merton [26] jump diffusion model across the share, currency and cryptocurrency financial markets.
- Numerical experiments using various targets are provided, demonstrating significant improvements of the proposed method over the random walk Metropolis–Hastings algorithm.
2. Methods
2.1. Random Walk Metropolis–Hastings Algorithm
Algorithm 1: The Metropolis–Hastings Algorithm |
2.2. Metropolis Adjusted Langevin Algorithm
2.3. Hamiltonian Monte Carlo and the No-U-Turn Sampler
2.4. Locally Scaled and Stochastic Volatility Metropolis–Hastings Algorithms
- For LSMH: and
- For SVHM: and
3. Experiments
3.1. Performance Metrics
3.2. Scale Matrix and Step Size Tuning
3.3. Simulation Study
3.4. Real World Application
3.4.1. Merton Jump Diffusion Model
3.4.2. Bayesian Logistic Regression
3.4.3. Datasets
- Heart dataset—This dataset has 13 features and 270 data points. The purpose of the dataset is to predict the presence of heart disease based on medical tests performed on a patient [49].
- Australian credit dataset—This dataset has 14 features and 690 data points. This dataset aims to assess applications for credit cards [49].
- German credit dataset—This dataset has 25 features and 1000 data points. This dataset aimed to classify a customer as either good or bad credit [49].
4. Results and Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Dataset | Features | N | Model | D |
---|---|---|---|---|
MTN | 1 | 1 000 | BJDP | 5 |
S&P 500 Index | 1 | 1 007 | BJDP | 5 |
Bitcoin | 1 | 1 461 | BJDP | 5 |
USDZAR | 1 | 1 425 | BJDP | 5 |
Heart | 13 | 270 | BLR | 14 |
Australian credit | 14 | 690 | BLR | 15 |
Fraud | 14 | 1 560 | BLR | 15 |
German credit | 24 | 1 000 | BLR | 25 |
Dataset | Mean | Standard Deviation | Skew | Kurtosis |
---|---|---|---|---|
MTN | 0.03013 | 20.147 | ||
S&P 500 Index | 0.00043 | 0.01317 | 21.839 | |
Bitcoin | 0.00187 | 0.04447 | 13.586 | |
USDZAR | 0.00019 | 0.00854 | 0.117 | 1.673 |
MTN dataset | |||||
(in sec) | NLL (Train) | NLL (Test) | |||
NUTS | 314 | 65 | 4.77 | −2153 | −174 |
MALA | 45 | 11 | 4.14 | −2153 | −174 |
MH | 0 | 5 | 0.00 | −1981 | −173 |
LSMH | 36 | 45 | 0.82 | −2056 | −180 |
SVMH | 37 | 5 | 7.56 | −2144 | −174 |
S&P 500 dataset | |||||
NUTS | 326 | 209 | 1.56 | −2942 | −278 |
MALA | 30 | 11 | 2.64 | −2910 | −286 |
MH | 0 | 5 | 0.73 | −2544 | −283 |
LSMH | 37 | 51 | 0.00 | −2782 | −300 |
SVMH | 35 | 6 | 6.27 | −2911 | −286 |
Bitcoin dataset | |||||
NUTS | 247 | 426 | 0.58 | −2387 | −286 |
MALA | 47 | 11 | 4.11 | −2315 | −291 |
MH | 0 | 5 | 0.00 | −2282 | −286 |
LSMH | 39 | 50 | 0.78 | −2286 | −289 |
SVMH | 34 | 6 | 5.94 | −2325 | −291 |
USDZAR dataset | |||||
NUTS | 1302 | 118 | 52.76 | −4457 | −489 |
MALA | 54 | 11 | 4.61 | −4272 | −475 |
MH | 0 | 5 | 0.00 | −3 978 | −446 |
LSMH | 37 | 52 | 0.72 | −4272 | −475 |
SVMH | 36 | 6 | 6.48 | −4272 | −474 |
Heart dataset | |||||
(in sec) | NLL (train) | NLL (test) | |||
NUTS | 5656 | 25 | 223.34 | 132 | 56 |
MALA | 848 | 18 | 47.14 | 132 | 56 |
MH | 0.29 | 9 | 0.04 | 298 | 67 |
LSMH | 97 | 41 | 2.38 | 352 | 82 |
SVMH | 114 | 9 | 12.01 | 132 | 56 |
Australian credit dataset | |||||
NUTS | 5272 | 33 | 159.40 | 248 | 70 |
MALA | 787 | 15 | 51.43 | 248 | 70 |
MH | 0 | 7 | 0.00 | 750 | 112 |
LSMH | 109 | 37 | 2.89 | 407 | 88 |
SVMH | 115 | 9 | 12.35 | 247 | 70 |
Fraud dataset | |||||
NUTS | 4449 | 921 | 4.84 | 919 | 144 |
MALA | 110 | 16 | 6.69 | 921 | 143 |
MH | 0 | 8 | 0.00 | 993 | 150 |
LSMH | 98 | 38 | 2.54 | 983 | 146 |
SVMH | 96 | 10 | 9.88 | 919 | 143 |
German credit dataset | |||||
NUTS | 7493 | 31 | 239.57 | 510 | 134 |
MALA | 654 | 16 | 38.65 | 510 | 134 |
MH | 0.0 | 8 | 0.00 | 1 662 | 267 |
LSMH | 110 | 62 | 1.76 | 745 | 174 |
SVMH | 107 | 10 | 10.58 | 510 | 134 |
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Mongwe, W.T.; Mbuvha, R.; Marwala, T. Locally Scaled and Stochastic Volatility Metropolis– Hastings Algorithms. Algorithms 2021, 14, 351. https://doi.org/10.3390/a14120351
Mongwe WT, Mbuvha R, Marwala T. Locally Scaled and Stochastic Volatility Metropolis– Hastings Algorithms. Algorithms. 2021; 14(12):351. https://doi.org/10.3390/a14120351
Chicago/Turabian StyleMongwe, Wilson Tsakane, Rendani Mbuvha, and Tshilidzi Marwala. 2021. "Locally Scaled and Stochastic Volatility Metropolis– Hastings Algorithms" Algorithms 14, no. 12: 351. https://doi.org/10.3390/a14120351
APA StyleMongwe, W. T., Mbuvha, R., & Marwala, T. (2021). Locally Scaled and Stochastic Volatility Metropolis– Hastings Algorithms. Algorithms, 14(12), 351. https://doi.org/10.3390/a14120351