# Importance Sampling - Monte Carlo Integration

I am trying to implement Monte Carlo integration with importance sampling. I've created a trivial example - I wish to integrate h(x), which is has a student t-distribution (mu =1, sigma =1, df=100), but us scaled-up 4 times - I want to integrate over the interval [-2,2] - f(x), the pdf of my h(x), is then t(1,1,100) - my proposal distribution is g(x), and normal (0,1)

I can't get this work... I am confused with how to implement Importance Sampling and using a probability-density-function for h(x) and a proposal distribution g(x). I'm sure my implementation is wrong. I was hoping someone could please help me?

``````xtemp<-rnorm(100000)
x<-xtemp[which(xtemp>=-2 & xtemp<=2)]
hx<-dt(x,100)*4
fx<-dt(x,100)
gx<-dnorm(x)

IntMC<-sum(hx*fx/gx)/length(hx)
IntAn <-(pt(2,100)-pt(-2,100))*4
``````
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What is IS? pdf? Get rid of acronims, please. – Stepan Yakovenko Dec 24 '12 at 20:08
I'm going to go out on a limb and guess that IS means Importance Sampling, and pdf is Probability Density Function. – Matthew Lundberg Dec 24 '12 at 20:25
edits done, pdf = probability density function, IS = importance sampling – user1375871 Dec 24 '12 at 21:15
I'd recommend taking a little time to read Numerical Recipes in C. There are pdf versions available for download. You don't have to use the c-code, as the algorithms themselves are presented in excellent detail. – Carl Witthoft Dec 25 '12 at 1:26

Since you are sampling from a truncated normal distribution, you should not use the probability density function of the normal distribution (`dnorm` in your example) but of the truncated normal distribution (e.g., `dtnorm` from the package `msm`) for the computation of the weights.

Try the following, it gives you the expected result:

``````library(msm)  # provides the pdf of the truncated normal distribution

xtemp <- rnorm(100000)
x <- xtemp[which(xtemp>=-2 & xtemp<=2)]

hx <- dt(x,100)*4
gx <- dtnorm(x, lower=-2, upper=2)

IntMC <- mean(hx/gx)
IntAn <- (pt(2,100)-pt(-2,100))*4
``````
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