Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm trying to build a classifier based upon a random forest in r.

The code to reproduce this:

    library(quantmod)
    library(randomForest)

    getSymbols('^GSPC', from="2002-01-01") 
    GSPC <- GSPC[,1:5] # remove adjusted close
    GSPC$wkret <- lag(GSPC$GSPC.Close,-5)/GSPC$GSPC.Close # build weekly future return
    GSPC$wkret <- GSPC$wkret * 100 -100 # build index

    cutoff <- floor(dim(GSPC)[1]/4) # select the row at 25%
    cutoffbreak <- sort(abs(as.data.frame(GSPC$wkret)[,1]),decreasing=T)[cutoff] # get the top 25% return in absolute terms
    y <- cut(GSPC$wkret, breaks=c('-100',-cutoffbreak,cutoffbreak ,'100'),labels=c('down','','up')) # build factors 
    randomForest(GSPC[1:100],y[1:100]) # select first 100 to exclude NA's, dimension problems.

This works:

y[1:100]
[1]                                                                                      down      down down
 [22]                up   up        down      down                          up   up   up   up 
=== zip ===

> is.factor(y)
[1] TRUE

> x[1:100]
              open    high     low   close     volume
2002-01-02 1148.08 1154.67 1136.23 1154.67 1171000000
2002-01-03 1154.67 1165.27 1154.01 1165.27 1398900000
2002-01-04 1165.27 1176.55 1163.42 1172.51 1513000000
2002-01-07 1172.51 1176.97 1163.55 1164.89 1308300000
=== zip ===

> class(x)
[1] "xts" "zoo"

This works (but makes no sense of course):

lm(y[1:100] ~ .,data=x[1:100])

but building a randomforest gives:

> rf <- randomForest(y[1:100] ~ .,data=x[1:100])
Error in randomForest.default(m, y, ...) : subscript out of bounds

> traceback()
4: randomForest.default(m, y, ...)
3: randomForest(m, y, ...)
2: randomForest.formula(y[1:100] ~ ., data = x[1:100])
1: randomForest(y[1:100] ~ ., data = x[1:100])

googling around says this is a dimensions problem, but can't figure out why/how.

r version:

R.version _
platform i686-pc-linux-gnu
arch i686
os linux-gnu
system i686, linux-gnu
status
major 2
minor 15.1
year 2012
month 06
day 22
svn rev 59600
language R
version.string R version 2.15.1 (2012-06-22) nickname Roasted Marshmallows

library versions:

    randomForest version: "2.15.1"
    quantmod version: "2.15.1"
share|improve this question
    
That's a pretty weird way of using randomForest's formula interface. Try just passing x and y parameters directly. –  joran Oct 15 '12 at 16:56
    
x[1:100] is not a matrix, but a vector. This cannot work. –  January Oct 15 '12 at 16:57
    
@January Yeah; not sure if RF will coerce to matrix or not if they switch to y = y[1:100],x = x[1:100] or not. –  joran Oct 15 '12 at 17:03
    
Although others may be able to tell what you're working with, it is anything but reproducible for me. Please put dput to use (see tinyurl.com/reproducible-000). Why are you subsetting the 1st 100 rows of what appears to be a 4 row object? –  GSee Oct 15 '12 at 17:34
    
Ugh. Is that your attempt at reproducibility? > GSPC$[lagged column on close] Error: unexpected '[' in "GSPC$[" –  GSee Oct 15 '12 at 17:43

2 Answers 2

Calling randomForest with a formula and data parameter is pretty usual, however x[1:100] is not a matrix, but a vector. I think you mean x[1:100,].

Furthermore, the parameter to data should be a data frame, not a matrix. I assume that x is a matrix (rather than a data frame), because x[1:100] would otherwise return the following error message:

Error in `[.data.frame`(x, 100) : undefined columns selected

Alternatively, as suggested by comments, you can also run

randomForest( x[ 1:100, ], y[ 1:100 ] )
share|improve this answer
    
Yes, but I'm not sure you're technically correct about x[1:100] being a vector. The OP implied that x is an xts object, which are a bit different. Create an xts object and play around with is.vector and is.matrix. I think you may be surprised. –  joran Oct 15 '12 at 17:05
    
damn! I have overlooked that. –  January Oct 15 '12 at 17:06
    
Indeed, I just verified for myself that I can pass an xts object directly to the randomForest x argument without first coercing it to a matrix. –  joran Oct 15 '12 at 17:08
    
An xts object is a matrix (with an index attribute) –  GSee Oct 15 '12 at 17:19
    
@January, thanks, but i should have mentioned this removal of , was done as part of the troubleshooting, after verifying it gave the same (optical) result. Your code gives the same error as before. –  user1747766 Oct 15 '12 at 17:29

There was something wrong when i created y. The code runs fine when i add this:

    y <- as.factor(as.numeric(y))

I have no idea what was wrong with my y value, but i recognize that this was only reproducable when i provided the full code.

    > randomForest(na.omit(GSPC),y[1:2713])
    Error in randomForest.default(na.omit(GSPC), y[1:2713]) : 
      subscript out of bounds
    > y <- as.factor(as.numeric(y))
    > randomForest(na.omit(GSPC),y[1:2713])

    Call:
     randomForest(x = na.omit(GSPC), y = y[1:2713]) 
                   Type of random forest: classification
                         Number of trees: 500
    No. of variables tried at each split: 2

            OOB estimate of  error rate: 0.07%
    Confusion matrix:
        1    2   3 class.error
    1 348    1   0 0.002865330
    2   0 2034   0 0.000000000
    3   0    1 329 0.003030303
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.