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Forecasting Realized Variance Using Jumps
Andrey FradkinEcon 2014/4/2007
Introduction
• Theoretical Background• Summary Graphs and Statistics for data• The HAR-RV-CJ Model and regressions using it. • Addition of IV to the regression• Analysis of possible benefits to using IV• Forecasting IV-RV using jumps, do jumps
effect risk premiums?• Future Work 4/4/2007 Andrey Fradkin: Forecasting Realized
Variance 2
Formulas Part 1
4/4/2007 Andrey Fradkin: Forecasting Realized Variance 3
Realized Variation:
Realized Bi-Power Variation:
Formulas Part 2
• Tri-Power Quarticity
• Quad-Power Quarticity
4/4/2007 Andrey Fradkin: Forecasting Realized Variance 4
Formulas Part 3
• Z-statistics (max version)
4/4/2007 Andrey Fradkin: Forecasting Realized Variance 5
Realized Variance and Jumps
4/4/2007 Andrey Fradkin: Forecasting Realized Variance 6
Original HAR-RV-J Model (Taken from Andersen, Bollerslev, Diebold 2006)
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The HAR-RV-CJ Model
4/4/2007 Andrey Fradkin: Forecasting Realized Variance 8
My Regressions – 1 day forward
4/4/2007 Andrey Fradkin: Forecasting Realized Variance 9
Newey-West R^2=.4922rv Coef. Std. Err. t P>t [95% Conf. Interval]
c1 .3216361 .0778881 4.13 0.000 .168826 .4744461c5 .3233613 .1008474 3.21 0.001 .1255069.5212156c22 .2478666 .0625769 3.96 0.000 .1250959.3706373_cons .0000285 .0000103 2.76 0.006 8.21e-06.0000488
Jumps Don’t Matter
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Newey-West R^2=.4985rv Coef. Std. Err. t P>t [95% Conf. Interval]
c1 .3262136 .0755843 4.32 0.000 .177923 .4745042c5 .3091024 .0975148 3.17 0.002 .1177858 .5004191c22 .2419664 .0601737 4.02 0.000 .1239103 .3600226j1 1.584021 .9718173 1.63 0.103 -.3226096 3.490652j5 -.84711691.134404 -0.75 0.455 -3.07273 1.378496j22 3.587264 3.786084 0.95 0.344 -3.840741 11.01527_cons .0000261 .0000101 2.59 0.010 6.35e-06 .0000459
1 day forward using logs
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Newey-West R^2=0.7737 logrv Coef. Std. Err. t P>t [95% Conf.Interval]
logc1 .2407742 .041531 5.80 0.000 .1592938 .3222545logc5 .4396577 .0592865 7.42 0.000 .3233424 .5559731logc22 .2749495 .0418261 6.57 0.000 .19289 .357009_cons -.4548797.1309848 -3.47 0.001 -.7118613 -.1978982
Jump terms are insignificant if added to this regression
Regression 5 days forward
4/4/2007 Andrey Fradkin: Forecasting Realized Variance 12
Newey-WestF5.rv5 Coef. Std. Err. t P>t [95% Conf.Interval]
c1 .1902404 .0405141 4.70 0.000 .1107546 .2697263c5 .3198168 .1070031 2.99 0.003 .1098841 .5297494c22 .2966428 .0782428 3.79 0.000 .1431358 .4501498j1 -.0887148 .4668765 -0.19 0.849 -1.004694 .8272648j5 3.129752 1.447759 2.16 0.031 .2893476 5.970156j22 2.996998 5.738814 0.52 0.602 -8.26216 14.25616_cons .0000419 .0000154 2.71 0.007 .0000116 .0000721
Practically no change in R^2 w/o jumps
My Regressions – 22 day
4/4/2007 Andrey Fradkin: Forecasting Realized Variance 13
Newey-West R^2=.5172 F22.rv22 Coef. Std. Err. t P>t [95% Conf.Interval]
c1 .1216783 .0230143 5.29 0.000 .0765252 .1668314c5 .2577073 .1083063 2.38 0.017 .0452148 .4701998c22 .2752547 .0909278 3.03 0.003 .096858 .4536513j1 .2384794 .2904984 0.82 0.412 -.3314668 .8084255j5 1.570385 2.267699 0.69 0.489 -2.878747 6.019518j22 5.20189 9.937398 0.52 0.601 -14.29488 24.69866_cons .0000799 .000026 3.08 0.002 .000029 .0001308
Practically no change in R^2 w/o jumps
Work on Options Data
• Code for filtering through the many options• Takes the implied volatility of the option that
is closest to the average of the starting and closing price, provided volume is high enough.
• Calculate variables: IVt,t+h=h-1 (IVt+1 + IVt+2 … + IVt+h)
• Difft= IVt-RVt
4/4/2007 Andrey Fradkin: Forecasting Realized Variance 14
Means
• Observations: 1219 Mean RV=.0002635 • Mean IV=.0003173 Mean Diff=.0000523
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Diff
Autocorrelation of Diff
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IV is a better predictor than RV of future RV
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R-squared = 0.5023Root MSE = .00026
Robustrv Coef. Std. Err. t P>t [95% Conf.Interval]
iv1 1.050039 .0962552 10.91 0.000 .8611945 1.238884j1 .6298041 .9092165 0.69 0.489 -1.154003 2.413611_cons -.0000698.0000254 -2.74 0.006 -.0001197 -.0000199
R-squared = 0.4271Root MSE = .00028
Robustrv Coef. Std. Err. t P>t [95% Conf. Interval]
c1 .6478913 .1001823 6.47 0.000 .4513421 .8444406j1 1.897893 .8402938 2.26 0.024 .2493062 3.546479_cons .0000913 .0000223 4.10 0.000 .0000476 .0001351
Is Diff Significant in forecasting RV?
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R-squared = 0.5465Root MSE = .00025
Robustrv Coef. Std. Err. t P>t [95% Conf.Interval]
rv1 1.039644 .0941392 11.04 0.000 .8549505 1.224337L1.Diff .7441405 .1072339 6.94 0.000 .5337562 .9545247_cons -.0000496.0000239 -2.07 0.038 -.0000966 -2.64e-06
Using Diff in HAR-RV-CJ Model
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Newey-West R-squared = .5611 rv Coef. Std. Err. t P>t [95% Conf. Interval]
c1 .8782383 .1949678 4.50 0.000 .4957259 1.260751c5 .1978388 .0789141 2.51 0.012 .0430151 .3526624c22 -.0109185 .1064608 -0.10 0.918 -.2197868 .1979499j1 2.379697 .984771 2.42 0.016 .4476485 4.311745j5 -4.892927 1.876258 -2.61 0.009 -8.574008 -1.211847j22 3.648466 3.529547 1.03 0.301 -3.276246 10.57318L1.diff .6761671 .2257157 3.00 0.003 .2333295 1.119005_cons -.000053 .0000262 -2.02 0.044 -.0001044 -1.55e-06
Newey-West R-squared = 0.6447 F5.rv5 Coef. Std. Err. t P>t [95% Conf. Interval]
c1 .6181182 .1238336 4.99 0.000 .3751648 .8610715c5 .2326215 .107413 2.17 0.031 .0218843 .4433588c22 .1019241 .0628666 1.62 0.105 -.021416 .2252642j1 .5261682 .5163181 1.02 0.308 -.4868141 1.53915j5 -.0505589 1.846144 -0.03 0.978 -3.672573 3.571455j22 3.228812 5.368064 0.60 0.548 -7.302979 13.7606L1.Diff .5242109 .143786 3.65 0.000 .2421122 .8063096_cons -.0000199 .0000132 -1.51 0.131 -.0000457 5.96e-06
Using Diff in HAR-RV-CJ Model cont.
4/4/2007 Andrey Fradkin: Forecasting Realized Variance 20
Newey-West R-Squared: 0.5676 F22.rv22 Coef. Std. Err. t P>t [95% Conf. Interval]
c1 .4739452 .0803304 5.90 0.000 .31634 .6315504c5 .1862154 .1068758 1.74 0.082 -.0234709 .3959018c22 .115742 .0742476 1.56 0.119 -.0299291 .2614131j1 .7448536 .3328171 2.24 0.025 .0918788 1.397828j5 -1.032086 2.406812 -0.43 0.668 -5.754162 3.689989j22 5.355446 10.28448 0.52 0.603 -14.82233 25.53322L1.diff .4314511 .0938983 4.59 0.000 .247226 .6156761_cons .0000285 .000021 1.36 0.175 -.0000127 .0000696
Predicting Diff Using Jumps
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Newey-West R-squared = 0.1235diff Coef. Std. Err. t P>t [95% Conf. Interval]
c1 -.1973631 .0706515 -2.79 0.005 -.3359759 -.0587504c5 -.1441686 .063503 -2.27 0.023 -.2687566 -.0195806c22 .1650903 .0995486 1.66 0.097 -.0302165 .3603971j1 -1.591713 .8951938 -1.78 0.076 -3.348014 .1645889j5 7.162149 1.46073 4.90 0.000 4.296309 10.02799j22 -3.263902 2.958828 -1.10 0.270 -9.068895 2.541092_cons .0000949 .0000215 4.42 0.000 .0000528 .0001371
Newey-West R-squared = 0.0548F5.diff Coef. Std. Err. t P>t [95% Conf. Interval]
c1 .025571 .0435225 0.59 0.557 -.0598172 .1109593c5 -.3173051 .1317263 -2.41 0.016 -.5757431 -.0588671c22 .2137709 .1007057 2.12 0.034 .0161933 .4113484j1 -.6373502 .8629953 -0.74 0.460 -2.330488 1.055787j5 -1.319912 1.440435 -0.92 0.360 -4.145946 1.506122j22 -2.634389 3.527186 -0.75 0.455 -9.554485 4.285707_cons .0000781 .0000198 3.940.000 .0000392 .0001169
Predicting Diff Using Jumps
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Newey-West R-squared = 0.0072F22.diff Coef. Std. Err. tP>t [95% Conf. Interval]
c1 .0278554 .029698 0.94 0.348 -.0304108 .0861216c5 -.0189465 .0709693 -0.27 0.790 -.1581855 .1202924c22 .0304386 .0706686 0.43 0.667 -.1082103 .1690875j1 .7447953 .23193 3.21 0.001 .289758 1.199833j5 -2.931345 2.05406 -1.43 0.154 -6.961327 1.098638j22 .6472574 5.335948 0.12 0.903 -9.821655 11.11617_cons .0000405 .0000126 3.21 0.001 .0000158 .0000653
Adding or removing jumps does not effect R-Squared
Jumps matter if regressing Diff on IV and Jumps
4/4/2007 Andrey Fradkin: Forecasting Realized Variance 23
Newey-West R-Squared: .1018diff Coef. Std. Err. t P>t [95% Conf. Interval]
iv1 -.5454239 .2838641 -1.92 0.055 -1.102344 .0114957iv5 -.0509571 .1503595 -0.34 0.735 -.3459508 .2440366iv22 .5652849 .1773301 3.19 0.001 .217377 .9131929j1 -1.557493 .9155883 -1.70 0.089 -3.353807 .2388207j5 10.23682 2.056567 4.98 0.000 6.201993 14.27165j22 -9.462402 3.553551 -2.66 0.008 -16.4342 -2.490609_cons .0000605 .0000219 2.76 0.006 .0000175 .0001036
Newey-West R-Squared: .16diff Coef. Std. Err. t P>t [95% Conf. Interval]
L1.diff .2575236 .0986853 2.61 0.009 .0639104 .4511368iv1 -.5944392 .2546254 -2.33 0.020 -1.093995 -.094883iv5 .1370913 .200045 0.69 0.493 -.2553824 .529565iv22 .4336471 .1536846 2.82 0.005 .1321293 .7351649j1 -1.37075 .946662 -1.45 0.148 -3.228031 .4865313j5 8.862341 1.982412 4.47 0.000 4.972993 12.75169j22 -9.133631 2.995484 -3.05 0.002 -15.01055 -3.256713_cons .0000459 .000015 3.06 0.002 .0000165 .0000752
Future Work• Do same regressions on data for other stocks.• Add volatility of SPY to regression terms.• See if there are possible applications of GARCH
models for these regressions.• Experiment with other alphas.
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