Convert Factors to Numeric in bulk, matrix method does not work

Hello I am trying to import a html table as data.frame and the columns come in as factors. I need to convert them to numeric, which I can do but when I use the single method it would take long and converting them to matrix trims the numbers. Can someone explain how to convert all the numbers in columns 2:6 into numerics that hold up the right numeric length?

``````nms = c("State/Territory", "FY 2008"  ,"FY 2009",   "FY 2010", "FY 2011",   "FY 2012")
x <- data.frame(readHTMLTable('http://www.fns.usda.gov/pd/15SNAPpartPP.htm'), stringsAsFactors = F)
x <- x[5:57,]
names(x) <- nms
snap.partpp <- x
``````

this is what i have tried to do to solve this problem but it does the conversion but changes the values of the numbers

``````x <- data.frame(readHTMLTable('http://www.fns.usda.gov/pd/15SNAPpartPP.htm'), stringsAsFactors = F)
y <- x[5:57, 1]
x <- data.matrix(x[5:57,2:6])
xy <- data.frame(y, x)
names(xy) <- nms
snap.avghh <- xy
``````
-
`stringsAsFactors` should be an argument to `readHTMLTable` not `data.frame`. – joran Dec 5 '13 at 23:37
...and you'll probably need to manually remove all the commas before converting to numeric. – joran Dec 5 '13 at 23:40

``````sapply(x[,2:6],function(x){as.numeric(gsub(",","",x))})
``````

Produces this:

``````      FY 2008  FY 2009  FY 2010  FY 2011  FY 2012
[1,]    56977    64385    76445    86044    91298
[2,]   627660   813987  1018171  1067617  1123974
[3,]   377883   411153   466598   486451   502125
[4,]  2220127  2670341  3238548  3672980  3964221
[5,]   252933   319121   404679   453103   491630
[6,]   225383   258165   336064   378677   403466
[7,]    74429    90933   112513   134927   148257
[8,]    89442   103311   118493   134845   141147
[9,]  1454928  1952362  2603185  3074671  3353064
[10,]  1021155  1286078  1591078  1780039  1912839
[11,]    27874    31511    36926    40631    43727 [truncated...]
``````
-