First I will post my code then explain it a little bit so everyone knows what is going on.

```
# load library
library(VIM)
# set directory
setwd("U:/Actclosures")
# load data
data <- read.csv("sampleactdata.csv")
dput(data)
structure(list(Excess.ITD.Rtn = c(0.193783842, -3.466160078,
-0.725527465, -0.017464807, -0.351250593, -1.376582471, -5.752015282,
-10.22758807, -6.161544923), Excess.1M.Rtn = c(-0.057840348,
0.696473869, 1.014932332, 0.042895182, 5.838509713, 2.412407252,
1.024517178, -2.477404343, 0.843307517), Excess.3M.Rtn = c(0.051962379,
-3.050010474, -4.678913293, -3.146225763, -3.485220033, -0.75707979,
-4.689786623, -3.64718752, -3.498906304), Acct.1Y.IR = c(0.070783865,
NA, -1.354817388, -1.124230557, -0.742381631, -0.613479901, -1.370036192,
-4.276301951, -2.273464828), Acct.3Y.IR = c(0.241367436, NA,
-0.587907979, -0.723751159, -0.291139007, NA, NA, NA, NA), Acct.5Y.IR = c(0.397998744,
NA, -0.536350953, -0.424324247, NA, NA, NA, NA, NA), Closures = c(0L,
0L, 0L, 0L, 0L, 0L, 0L, 0L, 0L)), .Names = c("Excess.ITD.Rtn",
"Excess.1M.Rtn", "Excess.3M.Rtn", "Acct.1Y.IR", "Acct.3Y.IR",
"Acct.5Y.IR", "Closures"), class = "data.frame", row.names = c(NA,
-9L))
# arrange into useful matrix of data
x <- matrix(nrow = length(data[[1]]), ncol = 6)
yval <- data[[7]]
for (i in 1:6) {
x[,i] <- data[,i]
}
# create variables
mu <- matrix(nrow = 1, ncol = 6)
sigma <- matrix(nrow = 1, ncol = 6)
pval <- matrix(nrow = length(data[[1]]), ncol = 6)
# number of examples
m <- matrix(nrow = 1, ncol = 6)
for (i in 1:6) {
# number of actual examples
m[,i] <- abs(length(data[[i]] - countNA(data[[11]])))
# mean of each column
mu[,i] <- mean(data[[i]], na.rm = TRUE)
}
for (i in 1:6) {
sigma[,i] <- sd(data[[i]], na.rm = TRUE)
}
# sum all the various sigma values into one sigma
sigma.t <- sum(sigma)
for (i in 1:length(data[[6]])) {
# calculate probability
pval[i,] <- (1 /(sqrt(2*pi*(sigma.t^2)))) * exp(- ((x[i,]-mu[,])^2) /
(2 * sigma.t^2))
}
### Selecting Epsilon Threshold
## create variables for selecting epsilon
bestEpsilon <- 0
bestF1 <- 0
F1 <- 0
cv.predictions <- matrix(nrow = length(pval),1)
fp <- 0
fn <- 0
tp <- 0
stepsize <- (max(pval) - min(pval)) / 1000
for (epsilon in seq(min(pval),max(pval),by=stepsize)) {
cvPredictions <- (pval<epsilon)
#fp <- sum((cvPredictions == 1) & (yval == 0))
#tp <- sum((cvPredictions == 1) & (yval == 1))
#fn <- sum((cvPredictions == 0) & (yval == 1))
if ((cvPredictions == 1) & (yval == 1)) {
tp <- tp + 1
}else if ((cvPredictions == 1) & (yval == 0)) {
fp <-fp + 1
}else if ((cvPredictions == 1) & (yval == 0)) {
fn <-fn + 1
}
prec <- (tp) / (tp + fp)
rec <- (tp)/ (tp + fn)
F1 <- (2* prec * rec) / (prec + rec)
if (F1 > bestF1) {
bestF1 = F1;
bestEpsilon = epsilon;
}
}
```

I get the error:

```
Error in if (del == 0 && to == 0) return(to) :
missing value where TRUE/FALSE needed
```

I am trying to find the best value for epsilon and to do so, I am trying to compare two vectors. I think I have created a binary vector (`cvPredictions`

), which I am comparing to another binary vector. If both are 1 I wanted to increase true positives by 1. I tried to do this without loops first so my code would run faster but that did not work. When I tried with loops, I could not get that to work either. Hope someone can help me! Thanks everyone.

`&`

instead of`&&`

.`&&`

is used for single values and`&`

is used for vectors. I could not test your code because pval is not declared; do you mind including it? – Edward Jul 30 '12 at 21:43