Difference between revisions of "Programming/Kdb/Labs/Option pricing"
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=Task 1: Implementing the standard normal cumulative distribution function= | =Task 1: Implementing the standard normal cumulative distribution function= | ||
<math>N(x)</math> can be approximated by | |||
<center><math> | |||
\left\{ | |||
\begin{array}{ll} | |||
1 - \phi(x) \left[ c_1 k + c_2 k^2 + c_3 k^3 + c_4 k^4 + c_5 k^5 \right], & \hbox{if $x \geq 0$,} \\ | |||
1 - N(-x), & \hbox{if $x < 0$,} | |||
\end{array} | |||
\right. | |||
</math></center> | |||
where | |||
<center><math> | |||
\phi(x) = \exp(-x^2 / 2)/\sqrt{2\pi}, | |||
</math><center> | |||
<math>k = 1 / (1 + 0.2316419x), c_1 = 0.319381530, c_2 = -0.356563782, c_3 = 1.781477937, c_4 = -1.821255978, c_5 = 1.330274429</math>. |
Revision as of 23:08, 17 June 2021
Background: the Black-Scholes formulae
Recall the celebrated Black-Scholes equation
Here
- is a time in years; we generally use as now;
- is the value of the option;
- is the price of the underlying asset at time ;
- is the volatility — the standard deviation of the asset's returns;
- is the annualized risk-free interest rate, continuously compounded;
- is the annualized (continuous) dividend yield.
The solution of this equation depends on the payoff of the option — the terminal condition. In particular, if at the time of expiration, , the payoff is given by , in other words, the option is a European call option, then the value of the option at time is given by the Black-Scholes formula for the European call:
where is the time to maturity, is the forward price, and
and
Here we have used to denote the standard normal cumulative distribution function,
Similarly, if the payoff is given by , in other words, the option is a European put option, then the value of the option at time is given by the Black-Scholes formula for the European put:
We will implement the formulae for the European call and European put in q. However, our first task is to implement .
Task 1: Implementing the standard normal cumulative distribution function
can be approximated by
where
.