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I am not able to apply ucminf function to minimise my cost function in R.

Here is my cost function:

costfunction <- function(X,y,theta){ 
m <- length(y);
J = 1/m * ((-t(y)%*%log(sigmoid(as.matrix(X)%*%as.matrix(theta))))  - ((1-t(y))%*%log(1-sigmoid(as.matrix(X)%*%as.matrix(theta)))))
}

Here is my sigmoid function:

sigmoid <- function(t){
g = 1./(1+exp(-t))  
} 

Here is my gradient function:

gradfunction <- function(X,y,theta){ 

grad =  1/ m * t(X) %*% (sigmoid(as.matrix(X) %*% as.matrix(theta) - y));

}

I am trying to do the following:

library("ucminf")
data <- read.csv("ex2data1.txt",header=FALSE)
X <<- data[,c(1,2)]
y <<- data[,3]
qplot(X[,1],X[,2],colour=factor(y))
m <- dim(X)[1]
n <- dim(X)[2]
X <- cbind(1,X)
initial_theta <<- matrix(0,nrow=n+1,ncol=1)
cost <- costfunction(X,y,initial_theta)
grad <- gradfunction(X,y,initial_theta)

This is where I want to call ucminf to find the minimum cost and values of theta. I am not sure how to do this.

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1  
Before anything else, I think it is a good idea to remove the calls of <<- with regular assignments <-. You only need <<- when you want to assign to a different than the current environment (as everything you do is in the global environment, the <<- doesn't make a lot of sense here). Also, <<- is considered potentially dangerous (i.e., unintended consequences). –  Henrik May 22 '13 at 20:14
    
Completely agree! Left by mistake –  Unknown Me May 23 '13 at 2:07

2 Answers 2

up vote 5 down vote accepted

Looks like you are trying to do the week2 problem of the machine learning course of Coursera.

No need to use ucminf packages here, you can simply use the R function optim it works

We will define the sigmoid and cost function first.

sigmoid <- function(z)
    1 / (1 + exp(-z))


costFunction <- function(theta, X, y) {
    m <- length(y)
    J <- -(1 / m) * crossprod(c(y, 1 - y), 
                    c(log(sigmoid(X %*% theta)), log(1 - sigmoid(X %*% theta))))
    grad <- (1 / m) * crossprod(X, sigmoid(X %*% theta) - y)
    list(J = J, grad = grad)
}

Let's load the data now, to make this code it reproductible, I put the data in my dropbox.

download.file("https://dl.dropboxusercontent.com/u/8750577/ex2data1.txt", 
 method = "curl", destfile = "/tmp/ex2data1.txt")

data <- matrix(scan('/tmp/ex2data1.txt', what = double(), sep = ","), 
         ncol = 3, byrow = TRUE)
X <- data[, 1:2]
y <- data[, 3, drop = FALSE]

m <- nrow(X)
n <- ncol(X)
X <- cbind(1, X)
initial_theta = matrix(0, nrow = n + 1)

We can then compute the result of the cost function at the initial theta like this

cost <- costFunction(initial_theta, X, y)

(grad <- cost$grad)
##         [,1]
## [1,]  -0.100
## [2,] -12.009
## [3,] -11.263


(cost <- cost$J)
##         [,1]
## [1,] 0.69315

Finally we can use optim to ge the optimal theta

res <- optim(par = initial_theta, 
             fn = function(t) costFunction(t, X, y)$J,
             gr = function(t) costFunction(t, X, y)$grad,
             method = "BFGS", control = list(maxit = 400))

(theta <- res$par)
##           [,1]
## [1,] -25.08949
## [2,]   0.20566
## [3,]   0.20089


(cost <- res$value)
## [1] 0.2035

If you have some problem with the function download.file, the data can be downloaded here

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As you did not provide a reproducible example it is hard to exactly give you the code you need, but the general idea is to hand the functions over to ucminf:

ucminf(start, costfunction, gradfunction, y = y, theta = initial_theta)

Note that start needs to be a vector of initial starting values which when handed over as X to the two functions need to produce a result. Usually you use random starting value (e.g., runif).

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