# Linear regression on multiple rows in matrix in R

Just sitting with my bachelors thesis, and using R, to run linear regressions on some financial data.

My problem: I have a large matrix of data, that I have split up into rows, because I want to run linear regression on each row. The problem is the data is of class "list" - and I need it to be numeric so I can make calculations.

My dataset is noted `"dataA_split"`. I get the following:

``````class(dataA_split) = "List"

fit <- lm(cbind(dataA_split[1:2])~x3)
Error in model.frame.default(formula = cbind(dataA_split[1:2]) ~ x3, drop.unused.levels = TRUE) :
invalid type (list) for variable 'cbind(dataA_split[1:2])'
``````

Can anyone give some helping tips?

Thank you.!

-

``````arr <- simplify2array(dataA_split[1:2])
thanks, that changes the 2 rows into columns. But I still get this when I run the lm-function: fit <- lm(arr~x3) Error in `[[<-.data.frame`(`*tmp*`, i, value = c(35L, 53L, 49L, 48L, 50L, : replacement has 72 rows, data has 36 In addition: Warning: In model.response(mf, "numeric") : NAs introduced by coercion the "arr" looks like this: 1 2 [1,] "3.300.000" "4.675.000" [2,] "4.775.000" "4.087.500" [3,] "4.587.500" "4.150.000" [4,] "4.550.000" "4.650.000" and so on with total of 36 rows. the variable x3 looks like this: – danfab May 18 '13 at 11:55
Ok looks so you separate thousands using dots - if that is the case try this `arr <- sapply(dataA_split[1:2], function(v) as.numeric(gsub('\\.','',v)))`. This however assumes that you don't have fractions separated by dots in your data. – dratewka May 18 '13 at 12:47