# How to get rid of error with multiple regression in R? [closed]

I am computing the regression coefficients using multiple regression for specific equation :

``````   w=c(1,5,4,5,4,8,7,9,2,4,5,7)
g=c(1,5,2,5,4,8,7,9,3,5,6,6)
k=c(1,5,2,5,4,8,7,9,2,4,5,7)
m=c(1,5,2,5,4,9,8,10,3,5,6,8)
#w=a+bg+b1k+b2m : simple equation
model1=lm(w~g+k+m)### worked fine
#w=a+b(log(1-g/m))+b1k+b2m  :my real equation
model2=lm(w~(log(1-k/m))+k+m)
``````

Error:

``````   Error in lm.fit(x, y, offset = offset, singular.ok = singular.ok, ...) :
NA/NaN/Inf in 'x'
``````
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## closed as off-topic by Thomas, csgillespie, Metrics, plannapus, ChristianNov 22 '13 at 13:13

This question appears to be off-topic. The users who voted to close gave this specific reason:

• "Questions asking for code must demonstrate a minimal understanding of the problem being solved. Include attempted solutions, why they didn't work, and the expected results. See also: Stack Overflow question checklist" – Thomas, csgillespie, plannapus, Christian
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what's log of 0? –  Ricardo Saporta Oct 23 '13 at 14:53
This question appears to be off-topic because it is about statistics –  Metrics Oct 23 '13 at 15:19
@Metrics, this question is as much about statistics as `division by zero` questions are –  Ricardo Saporta Oct 23 '13 at 15:29

One thing I've seen done is to redefine log to be zero when x <= 0. This may or may not give you meaningful results, though.

``````R>log <- function(x) ifelse(x <= 0, 0, base::log(x))
R>  model2=lm(w~(log(1-k/m))+k+m)
R>summary(model2)

Call:
lm(formula = w ~ (log(1 - k/m)) + k + m)

Residuals:
Min          1Q      Median          3Q         Max
-0.87052532 -0.08901156 -0.05797844  0.04966100  1.32552690

Coefficients:
Estimate Std. Error  t value Pr(>|t|)
(Intercept)   1.0665775  0.5783614  1.84414  0.10239
log(1 - k/m) -1.1304104  1.0425403 -1.08428  0.30983
k             2.8191418  1.5634105  1.80320  0.10902
m            -2.0151940  1.6743261 -1.20359  0.26315

Residual standard error: 0.5756576 on 8 degrees of freedom
Multiple R-squared:  0.9564806, Adjusted R-squared:  0.9401609
F-statistic: 58.60876 on 3 and 8 DF,  p-value: 8.672263e-06
``````
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``````> log(1-k/m)
[1]      -Inf      -Inf      -Inf      -Inf      -Inf -2.197225 -2.079442 -2.302585 -1.098612 -1.609438 -1.791759 -2.079442
``````
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so some values are zeros that's why I am getting errors. Any ideas on how I force the model to ignore them and do the regression with others? –  hyat Oct 23 '13 at 15:04
You have so many options but all of them are preprocessing before you run the model. How do you want to treat `log(0)` values? Remove them: then subset your data. Make them infinitesimally small: then recode the `Inf`'s to -1e7 or something. Etc., etc. –  Thomas Oct 23 '13 at 15:45

to get rid of the zero values,

### Find all the values at zero:

``````inds <- (1-k) != 0
``````

### then either create new variables, or modify your current ones

``````w <- w[inds]
m <- m[inds]
k <- k[inds]

model2 <- lm(w~(log(1-k/m))+k+m)
``````
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another possibility is to create a derived variable `lkm <- log(1-k/m)` and use it in the regression; I think R will then automatically detect the `NA` cases and remove them –  Ben Bolker Oct 23 '13 at 16:45