# Gradient descent function with output plot and regression line

I've been running the following code which returns the correct coefficients. However, no matter where I put a `plot` call, I can't get any plot output.

I'm not sure if a reproducible example is needed here, as I think this can be solved by looking at my `gradientDescent` function below? It's my first attempt at running this algorithm in R:

``````gradientDescent <- function(x, y, learn_rate, conv_threshold, n, max_iter) {
m <- runif(1, 0, 1)
c <- runif(1, 0, 1)
yhat <- m * x + c
cost_error <- (1 / (n + 2)) * sum((y - yhat) ^ 2)
converged = F
iterations = 0
while(converged == F) {
m_new <- m - learn_rate * ((1 / n) * (sum((yhat - y) * x)))
c_new <- c - learn_rate * ((1 / n) * (sum(yhat - y)))
m <- m_new
c <- c_new
yhat <- m * x + c
cost_error_new <- (1 / (n + 2)) * sum((y - yhat) ^ 2)
if(cost_error - cost_error_new <= conv_threshold) {
converged = T
}
iterations = iterations + 1
if(iterations > max_iter) {
converged = T
return(paste("Optimal intercept:", c, "Optimal slope:", m))
}
}
}
``````
• A reproducible example is needed. The code you provided does not even show where or what you are trying to plot, so diagnosing is impossible. – A. Webb Feb 7 '17 at 22:03
• I posted on the fly so didn't have time to put up the whole thing. I got it sorted in the end anyway. Thanks for taking the time to reply. – Seanosapien Feb 7 '17 at 23:40

It's unclear what you have been doing that was ineffective. The base graphics functions `plot` and `abline` should be able to produce output even when used inside functions. Lattice and ggplot2 graphics are based on `grid`-grpahics and would therefore need a `print()` wrapped around the function calls to create output (as described in the R-FAQ). So try this:

``````gradientDescent <- function(x, y, learn_rate, conv_threshold, n, max_iter)
{ ## plot.new() perhaps not needed
plot(x,y)
m <- runif(1, 0, 1)
c <- runif(1, 0, 1)
yhat <- m * x + c
cost_error <- (1 / (n + 2)) * sum((y - yhat) ^ 2)
converged = F
iterations = 0
while(converged == F) {
m_new <- m - learn_rate * ((1 / n) * (sum((yhat - y) * x)))
c_new <- c - learn_rate * ((1 / n) * (sum(yhat - y)))
m <- m_new
c <- c_new
yhat <- m * x + c
cost_error_new <- (1 / (n + 2)) * sum((y - yhat) ^ 2)
if(cost_error - cost_error_new <= conv_threshold) {
converged = T
}
iterations = iterations + 1
if(iterations > max_iter) { abline( c, m)  #calculated
dev.off()
converged = T
return(paste("Optimal intercept:", c, "Optimal slope:", m))
}
}
}
``````
• Beautiful!! It works well. Initially, I was getting no plot with the regression line but once dev.off() is removed it works a treat. Thank you kindly sir. – Seanosapien Feb 7 '17 at 23:41
• In addition, the print wrapper around a ggplot call works perfectly to produce a variant of the above example. Thanks again. – Seanosapien Feb 8 '17 at 12:18