[R] finding roots (Max Like Est)
stathelp
ebballller1584 at yahoo.com
Fri Nov 30 06:17:14 CET 2007
I have this maximum liklihood estimate problem
i need to find the roots of the following:
[sum (from i=1 to n) ] ((2(x[i]-parameter)/(1+(x[i]-parameter)^2))=0
given to me is the x vector which has length 100
how would I find the roots using R?
I have 2 thoughts...... 1 is using a grid search ... eg. brute force, just
choosing a whole bunch of different values for my parameter .... such as
parameter=seq(0,100,.1) .... and this is what I have so far,
john=rep(0,length(x))
for(i in 1:length(x)) {
john[i]=((x[i]-0)/(1+(x[i]-0)^2))
}
sum(john)
then
john=rep(0,length(x))
for(i in 1:length(x)) {
john[i]=((x[i]-.1)/(1+(x[i]-.1)^2))
}
sum(john)
then
john=rep(0,length(x))
for(i in 1:length(x)) {
john[i]=((x[i]-.2)/(1+(x[i]-.2)^2))
}
sum(john)
something like this ...
theta=seq(0,100,.1)
john=rep(0,length(x))
for(i in 1:length(x)) {
john[i]=((x[i]-theta[j])/(1+(x[i]-theta[j])^2))
}
sum(john)
but something is wrong with my code because its not working. Anyone have any
ideas? (I am very new to R and statistical software in general)
The 2nd thought was to use the Newton Raphson Method, but, I dont even know
where to start with that.
Any thoughts help.
Thanks
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