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 have a data frame x1, which was generated with the following piece of code,

x <- c(1:10)
y <- x^3
z <- y-20
s <- z/3
t <- s*6
q <- s*y
x1 <- cbind(x,y,z,s,t,q)
x1 <- data.frame(x1)

I would like to extract the y-axis intercept and the slope of the linear regression fit for the data,

    x    y   z          s    t             q
1   1    1 -19  -6.333333  -38     -6.333333
2   2    8 -12  -4.000000  -24    -32.000000
3   3   27   7   2.333333   14     63.000000
4   4   64  44  14.666667   88    938.666667
5   5  125 105  35.000000  210   4375.000000
6   6  216 196  65.333333  392  14112.000000
7   7  343 323 107.666667  646  36929.666667
8   8  512 492 164.000000  984  83968.000000
9   9  729 709 236.333333 1418 172287.000000
10 10 1000 980 326.666667 1960 326666.666667 

I use the following codes to melt and plot three columns of data,

xm <- melt(x1, id=names(x1)[1], measure=names(x1)[c(2, 4, 5)], variable = "cols")
plt <- ggplot(xm) +
    geom_point(aes(x=x,y= value, color=cols), size=3) +
    labs(x = "x", y = "y") 

enter image description here

Now what I require is to get a linear least squares fit for all the data separately and store the resulting intercept and slope in a new data frame.

I use plt + geom_abline() but I don't get the desired result. Could someone let me know how to resolve this.

share|improve this question
1  
That plot doesn't look very linear to me. Do you want to fit a polynomial? –  Roland Jan 24 at 14:58
    
@Roland This is just an example, I need to do a linear fit though –  Amm Jan 24 at 15:00
add comment

1 Answer

up vote 2 down vote accepted

I suppose you're looking for geom_smooth. If you call this function with the argument method = "lm", it will calculate a linear fit for all groups:

ggplot(xm, aes(x = x, y = value, color = cols)) +
  geom_point(size = 3) +
  labs(x = "x", y = "y") + 
  geom_smooth(method = "lm", se = FALSE)

enter image description here

You can also specify a quadratic fit with the poly function and the formula argument:

ggplot(xm, aes(x = x, y = value, color=cols)) +
  geom_point(size = 3) +
  labs(x = "x", y = "y") + 
  geom_smooth(method = "lm", se = FALSE, formula = y ~ poly(x, 2))

enter image description here


To extract the corresponding regression coefficients, you can use this approach:

# create a list of coefficients
fits <- by(xm[-2], xm$cols, function(i) coef(lm(value ~ x, i)))

# create a data frame
data.frame(cols = names(fits), do.call(rbind, fits))

#   cols X.Intercept.         x
# y    y   -277.20000 105.40000
# s    s    -99.06667  35.13333
# t    t   -594.40000 210.80000

If you want a quadratic fit, just replace value ~ x with value ~ poly(x, 2).

share|improve this answer
    
Thanks for your answer, indeed it was the linear fit I was looking to do. But how do I get the corresponding y-axis intercept and slope for each respective fit passed to another variable or a data frame. Again thanks for the suggestions on how to perform a polynomial fit, I am learning a lot of new things. –  Amm Jan 24 at 15:04
1  
@Amm I added a section on extracting regression coefficients. –  Sven Hohenstein Jan 24 at 15:16
    
This is what I needed, many thanks for your valuable suggestions! –  Amm Jan 24 at 15:20
2  
I believe they want by(xm[-2], xm$cols, function(i) coef(lm(value~x, data=i))), which would be easier done by coef(lm(cbind(y, s, t) ~ x, data=x1)). –  Roland Jan 24 at 15:36
    
@Roland Thanks for pointing this out. Your approach is much slicker. –  Sven Hohenstein Jan 24 at 16:08
add comment

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.