RICCARDO BRAMANTE AND GIAMPAOLO GABBI 231
Table 12.2 Regression equation of higher correlation EUR–USD changes
explained by volatility differences
Variable Coefficient Std. error t-statistic Prob.
C 0.256095 0.058295 4.393106 0.0001
DEURV3 3.887041 0.978974 3.970526 0.0002
DUSDV1 3.251217 0.572326 5.680705 0.0000
DUSDV3 −2.514702 0.769123 −3.269570 0.0019
DUSDV8 −2.420236 1.361542 −1.777570 0.0814
R-squared 0.500639 Mean dependent var 0.321851
AdjustedR-squared 0.461473 S.D. dependent var 0.199156
S.E. of regression 0.146150 Akaike info criterion −0.923327
Sum squared residuals 1.089344 Schwarz criterion −0.742492
Log likelihood 30.85316 F-statistic 12.78261
Durbin–Watson stat. 2.262736 Prob(F-statistic) 0.000000
Notes: The dependent variable; differences of exponential correlations between the equity euro mar-
ket and the equity US market. Explanatory variables are DEURV3: equity euro market exponential
volatility differences with 3 days lag; DUSDV1: equity US market exponential volatility differences with
1 day lag; DUSDV3: equity US market exponential volatility differences with 3 days lag; and DUSDV8:
equity US market exponential volatility differences with 8 days lag. C: constant in regression. Number
of observations=bigger 56 daily changes.
0.6
0.4
0.2
0.0
5 10152025303540455055
0.2
0.4
RESID
Number of observations 56 daily changes
Spread between actual and estimated
dependent variable
No. of observations
Figure 12.5Plot of residuals of correlation EUR–USD higher changes
explained by volatility differences
the Euro market 7 days before, and the variation of the volatility measured
in the Japanese market 7 days before (Table 12.4).
Very similar outcomes are found for the US and Japanese market corre-
lations. When we estimate the correlation breakdowns, we obtain a lower