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I try a regression with R. I have the following code with no problem in importing the CSV file

    dat <- read.csv('http://pastebin.com/raw.php?i=EWsLjKNN',sep=";")
dat # OK Works fine
Regdata <- lm(Y~.,na.action=na.omit, data=dat)

However when I try a regression it's not working. I get an error message:

Erreur dans lm.fit(x, y, offset = offset, singular.ok = singular.ok, ...) : 
  aucun cas ne contient autre chose que des valeurs manquantes (NA)

All my CSV file are numbers and if a "cell" is empty I have the "NA" value. Some column are not empty and some other row are sometimes empty witht the NA value...

So, I don't understand why I get an error message even with :


PS:Data of the CSV are available at: http://pastebin.com/EWsLjKNN

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You might want to take a look at Faraway's (free!) book: cran.r-project.org/doc/contrib/Faraway-PRA.pdf –  Ricardo Saporta Dec 19 '12 at 20:20
thanks a lot the suggested book is exactely what i needed ;) –  Swiss12000 Dec 22 '12 at 5:06

1 Answer 1

You get this error message because all your data frame rows contain al least one missing value. It can be checked for example with this code:

 apply(data,1,function(x) sum(is.na(x)))
 [1] 128 126  82  78  73  65  58  34  31  30  28  30  20  21  12  20  17  16  12  42  50 128

So when you run regression wit lm() and na.action=na.omit all lines of data frame are removed and there are no data to fit regression.

But this is not the main problem. If your provided data contains all information you have, then you are trying to apply regression with 165 independent variables (X variables) while having only 22 observations. Number of independent variables have to be less than number of observations.

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My thoughts exactly. –  Brandon Bertelsen Dec 19 '12 at 18:43
Hello thanks for the answer if I understand I need two condition. First is to have more lines than columns. Second is to get no missing value. If there is one single missing value the model is not good. Is it what you mean ? –  Swiss12000 Dec 19 '12 at 18:50
@Swiss1200 You can have some missing values and their number will dependent on number of observation you have. But you have to check that number of complete observations (lines with no missing values) is greater than number of independent variables (columns) –  Didzis Elferts Dec 19 '12 at 19:08

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