I need someone who's really good at analyzing code!! I've got this "hard-to-explain-what-I-want-to-do-and-difficult-to-make-a-reproducible-example"-pieces of code. But it might be possible to analyze and compare the two blocks of code and tell where's a mistake. For the loop There's an Error:

```
Error in max(i) : (converted from warning) no non-missing arguments to max; returning -Inf
```

I wanted to figure out why the for-loop doesn't work, so I wrote the code for one single run (the first block).. AND IT WORKS! The two pieces of code are exactly the same, except one is in a loop and the other one isn't. What am I doing wrong?

```
# here I'm just creating some important Objects
permnos <- as.vector(unique(data$PERMNO)) # all Firms in data
days <- as.vector(unique(data$DATE)) # all trading days
W <- as.data.frame(lag(zoo(days), -c(0, 250:1))) # time window auxiliary object
mylist <- vector('list', length(permnos))
```

first block without loop:

```
# FOR ONE COMPANY (PERMNO) EVERYTHING WORKS PERFECTLY
# for{g}
data_g <- data[data$PERMNO %in% "10104",] # choosing one random company (always one company is chosen for each loop)
events_g <- events[events$PERMNO %in% "10104",] # choosing one random company
# for{u}
date_u <- "03.10.2005" # choosing one random date (always one date is chosen for each loop)
z = W[W[,1] == date_u, ] # time window of all 251 trading days before event day
r <- data_g[which(is.na(match(z, data_g[["DATE"]]) == F)), "RET"] # 251 returns of time window days
y <- as.matrix(as.numeric(r) - as.numeric(ff[which(is.na(match(z, ff[["DATE"]]) == F)), "RF"])) # Excess Return (y is matrix with one column of length 251)
x = as.matrix(ff[which(is.na(match(z, ff[["DATE"]]) == F)), c("Mkt.RF", "SMB", "HML")]) # factors (x is matrix with 3 columns of length 251)
p = solve((t(x)%*%x), (t(x)%*%y)) # OLS Regression using matrices
events_g[events_g$DATE %in% date_u, "AR"] = as.numeric(data_g[data_g$DATE %in% date_u, "RET"]) - p[1:3] %*% as.numeric(ff[ff$DATE %in% date_u,1:3]) #
```

second block with loop:

```
# FOR ALL COMPANIES (IN THE LOOP) IT DOESN'T WORK
for(i in 1:length(permnos)) {
permno_i <- permnos[i]
data_k <- data[which(data$PERMNO==permno_i), ] # all trading days of one firm
events_k <- events[which(events$PERMNO==permno_i), ] # all event day of one firm
for(j in 1:nrow(events_k)) {
date_j = events_k[j, "DATE"]
Z = W[W[,1] == date_j, ]
R = data_k[which(is.na(match(Z, data_k[["DATE"]]) == F)), "RET"]
Y = as.matrix(as.numeric(R) - as.numeric(ff[which(is.na(match(Z, ff[["DATE"]]) == F)), "RF"]))
X = as.matrix(ff[which(is.na(match(Z, ff[["DATE"]]) == F)), c("Mkt.RF", "SMB", "HML")]) # war ff[,"DATE"]
b = solve((t(X)%*%X), (t(X)%*%Y)) # OLS
events_k[events_k$DATE %in% date_j, "AR"] = as.numeric(data_g[data_g$DATE %in% date_j, "RET"])
- b[1:3] %*% as.numeric(ff[ff$DATE %in% date_j,1:3]) #
}
mylist[[i]] = events_k[,"AR"]
}
myvector <- unlist(ES_list)
```

I don't understand why there's Error in max(i), and I don't understand why there's even an Error in the loop, even though the code works for one single run. Can anyone help me with this?

`class(data$PERMNO)`

is`factor`

. If that's the case, you need to do`permnos <- levels(data$PERMNO)`

and the loop should work. – flodel Apr 9 '14 at 19:13