# Getting the y-axis intercept and slope from a linear regression of multiple data and passing the intercept and slope values to a data frame

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")
``````

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.

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

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)
``````

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))
``````

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)`.

-
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 '14 at 15:04
@Amm I added a section on extracting regression coefficients. – Sven Hohenstein Jan 24 '14 at 15:16
This is what I needed, many thanks for your valuable suggestions! – Amm Jan 24 '14 at 15:20
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 '14 at 15:36
@Roland Thanks for pointing this out. Your approach is much slicker. – Sven Hohenstein Jan 24 '14 at 16:08