Financial Math FM/Stochastic Interest
Stochastic interest
In this book, we have mainly discussed Template:Colored em (i.e. non-random) interest, and we will briefly introduce Template:Colored em (i.e. random) interest, by regarding the interest rate as a random variable. We use the following notations:
- : interest rate random variable for the period to
- : mean of
- : variance of
Accumulation of single investment
Accumulation of single payment over several time periods
Assume that are Template:Colored em for . Let be the accumulation of a single Template:Colored em sum of money invested for years, i.e. Then, by independence, For simplicity, further assume that 's are i.i.d. (identically and independently distributed), with mean and variance . Then,
Accumulation of investments with log-normal distribution
Some information about log-normal distribution
If has a normal distribution with mean and variance , then has a Template:Colored em distribution with Template:Colored em (Template:Colored em mean/variance generally) and . The following are some properties of random variables following log-normal distribution with parameters and :
- probability density function (pdf):
- mean:
- variance:
Motivation of using log-normal distribution
Let's apply log-normal distribution to stochastic interest. If follows a log-normal distribution with parameters and , then will be Template:Colored em distributed with mean and variance .
Then, considering the natural logarithm of accumulation of a single investment of one unit for a period of time units, we have Assuming 's are independent, will also be independent. If we further assume that 's are also log-normally distributed with parameters and , then 's are normally distributed with mean and variance x, and the Template:Colored em of independent normal random variables is normally distributed Template:Colored em (which is a well-known result about normal distribution). That is, Thus, if we apply log-normal distribution to stochastic interest, we can obtain this nice result ( follows a simple normal distribution).