With the comments from the answer, I rewrote the code below (math.1p(x)->math.log(x)), which now should work and give a good approximation of the volatility.
I am trying to create a short code to calculate the implied volatility of a European Call option. I wrote the code below:
from scipy.stats import norm
import math
norm.cdf(1.96)
#c_p - Call(+1) or Put(-1) option
#P - Price of option
#S - Strike price
#E - Exercise price
#T - Time to expiration
#r - Risk-free rate
#C = SN(d_1) - Ee^{-rT}N(D_2)
def implied_volatility(Price,Stock,Exercise,Time,Rf):
P = float(Price)
S = float(Stock)
E = float(Exercise)
T = float(Time)
r = float(Rf)
sigma = 0.01
print (P, S, E, T, r)
while sigma < 1:
d_1 = float(float((math.log(S/E)+(r+(sigma**2)/2)*T))/float((sigma*(math.sqrt(T)))))
d_2 = float(float((math.log(S/E)+(r-(sigma**2)/2)*T))/float((sigma*(math.sqrt(T)))))
P_implied = float(S*norm.cdf(d_1) - E*math.exp(-r*T)*norm.cdf(d_2))
if P-(P_implied) < 0.001:
return sigma
sigma +=0.001
return "could not find the right volatility"
print implied_volatility(15,100,100,1,0.05)
This yields: 0.595 volatility which should be somewhere 0.3203. That is a huge difference...
I know this is not a fast method by any means, I just want to demonstrate how the principle works, but I am not able to calculate a good approximation. For some reason when I call the function it gives me really bad approximation of the actual implied volatility which I calculated using a Matlab Program and the following webpage: Implied Volatility. Could anyone please help me to figure out where I made the mistake?
There are two problems I see, none of which are directly python related:
You are using log1p(x), which is the natural logarithm of 1+x, while you actually want log(x), which is the natural logarithm of x (cf. Wikipedia).
An option price of 100 is way to high considering the other parameters. Try to calculate the implied volatility for a price of 10 - which should be about 0.18 both by your program and the calculator you linked.
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