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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
1

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

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