程序代写 17/01/2023, 19:13

17/01/2023, 19:13
Statistical properties of financial returns and conditional volatility models
https://moodle.lse.ac.uk/pluginfile.php/2189837/mod_resource/content/2/HW1.html
09 November, 2022

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Statistical properties of nancial returns and conditional volatility models
Download prices for Tesla stock and convert into returns
Check for Fat Tails
1. QQ Plot

17/01/2023, 19:13
Statistical properties of financial returns and conditional volatility models
https://moodle.lse.ac.uk/pluginfile.php/2189837/mod_resource/content/2/HW1.html
## [1] 1934 88
2. Histogram

17/01/2023, 19:13
Statistical properties of financial returns and conditional volatility models
3. JB Test
## Test
## data: log_returns_demean
## X-squared = 2856.3, df = 2, p-value < 2.2e-16 https://moodle.lse.ac.uk/pluginfile.php/2189837/mod_resource/content/2/HW1.html ## [1] "Critical Value = 5.99146454710798" 17/01/2023, 19:13 HW1 https://moodle.lse.ac.uk/pluginfile.php/2189837/mod_resource/content/2/HW1.html ## [1] "H0: JB = 0 is rejected." Statistical properties of financial returns and conditional volatility models Check for Volatility Clusters 1. ACF plot on returns squared 2. LB Test 17/01/2023, 19:13 HW1 ## Box-Ljung test ## data: log_returns_demean^2 ## X-squared = 55.244, df = 1, p-value = 1.065e-13 ## [1] "Critical Value is: 3.84145882069412" ## Box-Ljung test ## data: log_returns_demean^2 ## X-squared = 276.29, df = 10, p-value < 2.2e-16 ## [1] "Critical Value is: 18.3070380532751" ## Box-Ljung test ## data: log_returns_demean^2 ## X-squared = 550.12, df = 30, p-value < 2.2e-16 ## [1] "Critical Value is: 43.7729718257422" Statistical properties of financial returns and conditional volatility models https://moodle.lse.ac.uk/pluginfile.php/2189837/mod_resource/content/2/HW1.html The null H0: LB=0 is rejected at 1, 10 and 30 lags. 17/01/2023, 19:13 Statistical properties of financial returns and conditional volatility models https://moodle.lse.ac.uk/pluginfile.php/2189837/mod_resource/content/2/HW1.html 17/01/2023, 19:13 GARCH(1,1) Statistical properties of financial returns and conditional volatility models https://moodle.lse.ac.uk/pluginfile.php/2189837/mod_resource/content/2/HW1.html 17/01/2023, 19:13 GJR-GARCH(1,1) Statistical properties of financial returns and conditional volatility models https://moodle.lse.ac.uk/pluginfile.php/2189837/mod_resource/content/2/HW1.html 17/01/2023, 19:13 HW1 Compare the 3 models graphically Statistical properties of financial returns and conditional volatility models https://moodle.lse.ac.uk/pluginfile.php/2189837/mod_resource/content/2/HW1.html 17/01/2023, 19:13 HW1 Statistical properties of financial returns and conditional volatility models https://moodle.lse.ac.uk/pluginfile.php/2189837/mod_resource/content/2/HW1.html Graphical inspection indicates that EWMA produces more extreme volatility forecasts. Statistical test to compare GARCH and GARCH-GJR ## [1] "Log-likelihood Ratio Test Statistic = 1.22187909254899" ## [1] "Critical Value = 3.84145882069412" ## [1] "We cannot reject H0: LR = 0" 17/01/2023, 19:13 HW1 GARCH-GJR is not statistically significantly better than the GARCH model. We could also reach this conclusion by looking at the -statistic of the Gamma coefficient. https://moodle.lse.ac.uk/pluginfile.php/2189837/mod_resource/content/2/HW1.html Volatility forecast following observed negative return Statistical properties of financial returns and conditional volatility models Coeficient t-Value omega 0.0000 6.9738 alpha1 0.0424 10.1861 beta1 0.9525 257.1235 gamma1 -0.0086 -1.1474 17/01/2023, 19:13 HW1 Comparing the volatility forecasts of the 3 models around the date of extreme negative return 22-06-2016. Statistical properties of financial returns and conditional volatility models TSLA.Adjusted sigmaEWMA sigmaGARCH_1_1 sigmaGJR_GARCH_1_1 2016- 0.0175 0.0216 0.0255 0.0253 06- 2016- -0.0023 0.0214 0.0254 0.0252 06-21 2016- -0.1123 0.0208 0.0250 0.0249 06- 2016- -0.0033 0.0341 0.0333 0.0321 06- 2016- -0.0186 0.0331 0.0327 0.0315 06- 2016- 0.0256 0.0324 0.0323 0.0311 06- 2016- 0.0143 0.0320 0.0321 0.0310 06- 2016- 0.0389 0.0312 0.0316 0.0306 06- https://moodle.lse.ac.uk/pluginfile.php/2189837/mod_resource/content/2/HW1.html 17/01/2023, 19:13 HW1 GARCH(1,1) estimated coefficients: Statistical properties of financial returns and conditional volatility models TSLA.Adjusted sigmaEWMA sigmaGARCH_1_1 sigmaGJR_GARCH_1_1 2016- 0.0080 0.0317 0.0320 0.0311 06- Coeficient t-Value omega 0.0000 5.8160 alpha1 0.0401 17.1432 beta1 0.9500 223.3908 GJR-GARCH(1,1) estimated coefficients: Coeficient t-Value omega 0.0000 6.9738 alpha1 0.0424 10.1861 beta1 0.9525 257.1235 gamma1 -0.0086 -1.1474 https://moodle.lse.ac.uk/pluginfile.php/2189837/mod_resource/content/2/HW1.html On the 22-06-2016 we observed a very high negative return of -11.23% which was not followed by an increase in volatility. The EWMA model generates a higher volatility forecast compared to the GARCH and GJR models, since more weight is given to ¡°news¡±, alpha=0.6. There is no significant difference between GARCH and GJR, as expected, since the estimated leverage parameter is not statistically significant. 程序代写 CS代考 加微信: powcoder QQ: 1823890830 Email: powcoder@163.com