Here are some sample starting values for variables in the code below.

```
sd <- 2
sdtheory <- 1.5
meanoftheory <- 0.6
obtained <- 0.8
tails <- 2
```

I'm trying to vectorize the following code. It is a component of a Bayes factor calculator that was originally written by Dienes and adapted to R by Danny Kaye & Thom Baguley. This part is for calculating the likelihood for the theory. I've got the thing massively sped up by vectorizing but I can't match output of the bit below.

```
area <- 0
theta <- meanoftheory - 5 * sdtheory
incr <- sdtheory / 200
for (A in -1000:1000){
theta <- theta + incr
dist_theta <- dnorm(theta, meanoftheory, sdtheory)
if(identical(tails, 1)){
if (theta <= 0){
dist_theta <- 0
} else {
dist_theta <- dist_theta * 2
}
}
height <- dist_theta * dnorm(obtained, theta, sd)
area <- area + height * incr
}
area
```

And below is the vectorized version.

```
incr <- sdtheory / 200
newLower <- meanoftheory - 5 * sdtheory + incr
theta <- seq(newLower, by = incr, length.out = 2001)
dist_theta <- dnorm(theta, meanoftheory, sdtheory)
if (tails == 1){
dist_theta <- dist_theta[theta > 0] * 2
theta <- theta[theta > 0]
}
height <- dist_theta * dnorm(obtained, theta, sd)
area <- sum(height * incr)
area
```

This code exactly copies the results of the original if `tails <- 2`

. Everything I've got here so far should just copy and paste and give the exact same results. However, once `tails <- 1`

the second function no longer matches exactly. But as near as I can tell I'm doing the equivalent in the new `if`

statement to what is happening in the original. Any help would be appreciated.

(I did try to create a more minimal example, stripping it down to just he loop and if statements and a tiny amount of slices and I just couldn't get the code to fail.)