0

I'm trying to create a function w(t) from some data. I do this by looping through the data, creating a function, and adding this to w(t). I'm running into infinite recursion problems that arise because I don't know when R is evaluating variables. The error message I get is:

Error: evaluation nested too deeply: infinite recursion / options(expressions=)? Error during wrapup: evaluation nested too deeply: infinite recursion / options(expressions=)?

Below is an example of a Kernalised Perceptron. I generate some linearly separable data and try to fit it. The functional addition occurs in the function kern.perceptron where I:

  1. Create a function from the data: kernel <- FUN(x, ...). From the call this translates to creating a function function(t) (x %*% t)^3 where x should be evaluated. (I think this is where I may be falling down).
  2. add/subtract this function to the existing function wHat

How can I correctly update the function such that wHat(t) = wHat(t) + kernel(t)?

prepend.bias <- function(X){
    cbind(rep(1, nrow(X)), X)
}

pred.perc <- function(X, w, add.bias=FALSE){
    X <- as.matrix(X)
    if (add.bias) X <- prepend.bias(X)
    sign(X %*% w)
}

polyKernel <- function(x, d=2){
    # Function that creates a kernel function for a given data point
    # Expects data point as row matrix
    function(t){
        # expects t as vector or col matrix
        t <- as.matrix(t)
        (x %*% t)^d
    }
}

pred.kperc <- function(X, w, add.bias=FALSE){
    X <- as.matrix(X)
    if (add.bias) X <- prepend.bias(X)
    as.matrix(sign(apply(X, 1, w)))
}

kern.perceptron <- function(X, Y, max.epoch=1, verbose=FALSE, 
                            FUN=polyKernel, ...) {
    wHat <- function(t) 0
    alpha <- numeric(0)
    X <- prepend.bias(X)
    bestmistakes <- Inf
    n <- nrow(X)
    for (epoch in 1:max.epoch) {
        improved <- FALSE
        mistakes <- 0
        for (i in 1:n) {
            x <- X[i,,drop=F]
            yHat <- pred.kperc(x, wHat)
            if (Y[i] != yHat) {
                alpha <- c(alpha, Y[i])
                wPrev <- wHat
                kernel <- FUN(x, ...)
                if (Y[i] == -1){
                    wHat <- function(t) wPrev(t) - kernel(t)
                } else{
                    wHat <- function(t) wPrev(t) + kernel(t)
                }

                mistakes <- mistakes + 1
            }
            else alpha <- c(alpha, 0)
        }
        totmistakes <- sum(Y != pred.kperc(X, wHat))
        if (totmistakes < bestmistakes){
            bestmistakes <- totmistakes
            pocket <- wHat
            improved <- TRUE
        }
        if (verbose) {
            message(paste("\nEpoch:", epoch, "\nMistakes In Loop:", mistakes,
                          "\nCurrent Solution Mistakes:", totmistakes, 
                          "\nBest Solution Mistakes:", bestmistakes))
            if (!improved)
                message(paste("WARNING: Epoch", epoch, "No improvement"))
        }
    }
    return(pocket)
}

set.seed(10230)
w <- c(0.3, 0.9, -2)
X <- gendata(100, 2)
Y <- pred.perc(X, w, TRUE)
wHat <- kern.perceptron(X, Y, 10, TRUE, polyKernel, d=3)
  • It's not at all clear what you actually want to do. Making a function from data doesn't make sense. If you want to apply derived data to a function, consider adding input arguments to said function. As it stands, you haven't shown us what is "working," whether you got any error messages, etc. – Carl Witthoft Jan 18 '15 at 14:27
  • Making a function from data: the data x defines what the function will be. polyKernel creates a function from a datapoint x and the option d. I'll add error message to the question though the example code should reproduce the error. – kungfujam Jan 18 '15 at 15:25
  • 1
    It would be more helpful to work on producing a minimal working example, that exhibits the problem you are facing. – Rusan Kax Jan 18 '15 at 15:30
  • @RusanKax, that's fair. I will do so when I have some time. – kungfujam Jan 18 '15 at 22:19
2

I think your getting a stack overflow because your createing a more and more deeply nested function wHat. You could keep a registry of kernel functions in a closure as in:

LL  <-  local({
    #initialize list of kernel functions in the closeure
    funlist = list()
    #a logical vector indicating whether or not to add or subtract the kernal functio
    .sign = logical(zero)


    #register a kernal function and it's sign
    register <- function(fun,sign,x){
        funlist<<-c(funlist,list(fun))
        add<<-c(add,sign)
    }

    # wHat uses k in the closure without having to pass it as an argument
    wHat <- function(t){

        out = 0
        for(i in seq(length(.sign))
            if (.sign[i]){
                out <- out + funlist[[i]](t)
            } else{
                out <- out - funlist[[i]](t)
            }
    }
    list(wHat,register)
})

wHat  <-  LL$wHat
register  <-  LL$register

then to register a kernal functions you call

register(KernelFun,sign)

and when you call

wHat(t)

you get the sum of the kernel functions in the registery, which I think is what you want.

Incidentally, you could do this without closures too...

  • Thank you for your efforts here. It doesn't quite solve the problem as I'm not multiplying kernel functions together, I'm adding them. Additionally, the kernel function is constructed using the data point x and the closure polyKernel. – kungfujam Jan 18 '15 at 22:13
  • Edited so that wHat is a sum of kernel functions – Jthorpe Jan 18 '15 at 22:36
  • you can register the x values just like you register the sign. This is just a model of how you can do what you want (to add a series of kernel functions) without nesting functions – Jthorpe Jan 18 '15 at 23:03

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.