Chapter 2: FAQs 121
Figure 2-6:The probability density function for the lognormal ran-
dom walk evolving through time.
The backward equation Also known as thebackward Kol-
mogorov equationthis is
∂p
∂t
+^12 B(y,t)^2
∂^2 p
∂y^2
+A(y,t)
∂p
∂y
= 0.
This must be solved backwards intwith specified final
data.
For example, if we wish to calculate the expected value
of some functionF(S)attimeTwe must solve this
equation for the functionp(S,t)with
p(S,T)=F(S).
Option prices If we have the lognormal random walk for
S, as above, and we transform the dependent variable
using a discount factor according to
p(S,t)=er(T−t)V(S,t),
then the backward equation forpbecomes an equation
forVwhich is identical to the Black–Scholes partial
differential equation. Identical but for one subtlety, the