3

I borrowed this example dataset from here:

# Load library
library(ggplot2)

# Load data
data(mtcars)

# Plot data
p <- ggplot(mtcars,aes(x = disp, y = mpg)) + geom_point() + facet_grid(gear ~ am)
p <- p + geom_smooth(method="lm")
print(p)

In above code the regression methods and formulae are the same in all facets. If we want to specify formula for facet (or panel) 6, we have the following code, from here:

# Smoothing function with different behaviour depending on the panel
custom.smooth <- function(formula, data,...){
  smooth.call <- match.call()

  if(as.numeric(unique(data$PANEL)) == 6) {
    # Linear regression
    smooth.call[[1]] <- quote(lm)
    # Specify formula
    smooth.call$formula <- as.formula("y ~ log(x)")
  }else{
    # Linear regression
    smooth.call[[1]] <- quote(lm)
  }

  # Perform fit
  eval.parent(smooth.call)
}

# Plot data with custom fitting function
p <- ggplot(mtcars,aes(x = disp, y = mpg)) + geom_point() + facet_grid(gear ~ am)
p <- p + geom_smooth(method = "custom.smooth", se = FALSE)
print(p)

Now if I want to add regression equations to these facets:

# Load library
library(ggpmisc)
p + stat_poly_eq(formula = y ~ x,aes(label = paste(..eq.label.., ..rr.label.., sep = "~~~")), 
    parse=TRUE,label.x.npc = "right")

Then what should I do, to specify the equation and R2 displayed on panel 6, that can match the model I specified before? See the plot below, now panel 6 has its own fitting model, but the equation label doesn't. Maybe we can define a similar function as we did to ggplot2 parameters?

enter image description here

  • 4
    Why not fit equations outside of ggplot, and plot the results as geom_line, and equation text as geom_text? There's no reason to do everything within ggplot. – thc Jan 31 '18 at 18:48
1

It seems like the function you are calling custom.smooth contains a row that defines the formula as "y ~ log(x)". Therefore, you need to also specify this in your stat_poly_eq function, hence the polynomial shape (but in reality logarithmic) of a linear looking equation.

I.e. add:

p + stat_poly_eq(formula = y ~ log(x),
                     aes(label = paste(..eq.label.., ..rr.label.., sep = "~~~")), 
                     parse=TRUE,label.x.npc = "right")
  • Would that produce the correct result (i.e. linear equation) for the other facets, though? – Lyngbakr Jan 22 '18 at 13:05
  • To replace the log(x) with x in the custom.smooth function and the stat_poly_eq function from the ggpmisc package. – nadizan Jan 22 '18 at 14:55
1

You could update panel 6's formula individually (of course you could also update all panels with a function like that, but there's no need for that here)

rename_panel_expression <- function(grb, panel, expr) {
  g <- grb$grobs[[panel + 1]]$children
  grb$grobs[[panel + 1]]$children[[grep("GRID.text", names(g))]]$label <- expr
  grb
}

l <- lm(mpg ~ log(disp), mtcars[mtcars$am == 1 & mtcars$gear == 5, ])

tt <- rename_panel_expression(ggplotGrob(p), 6, 
  bquote(italic(y)~`=`~.(round(l$coefficients[1], 3)) - .(round(abs(l$coefficients[2]), 3))*~italic(x)~~~italic(R)^2~`=`~.(round(summary(l)$r.squared, 3))))

grid::grid.newpage()
grid::grid.draw(tt)

enter image description here

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