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# Estimate relationship between X and Y in R [closed]

I want to estimate the relationship between X and Y (from data m) using P (see below) at 100 equal points over (0, 10). How can I do this using R?

``````> m
X        Y
1     0.5      6.0
2     1.5      5.0
3     2.5      6.7
4     3.5      7.1
5     4.5      6.1
6     5.5      8.1
7     6.5      8.0
8     7.5      7.9
9     8.5      8.0
10    9.5      6.0
``````

(1)

`````` P=function(x,X,Y,sigma){
# x = point to evaluate our estimate.
# X = vector of observation X values
# Y = vector of observation Y values
# sigma = standard deviation.

weights = rep(0,length(X))
sumweights = 0
smooth = 0

for(i in 1:length(X)){

weights[i] = dnorm(x,mean=X[i],sd=sigma)

sumweights = sumweights + weights[i]

smooth = smooth + weights[i]*Y[i]
}

return( smooth/sumweights )
}
``````
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## closed as not a real question by thelatemail, nograpes, joran, mnel, BoroMar 4 '13 at 10:31

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center.If this question can be reworded to fit the rules in the help center, please edit the question.

What? This has got to be the most unclear question I have ever seen. – nograpes Mar 2 '13 at 2:11
@nograpes I edited the question, let me know if it needs more clarification... – Titi90 Mar 2 '13 at 2:17
@Titi90 - now it makes even less sense! Explain what you are trying to do in a bit more detail please! – thelatemail Mar 2 '13 at 2:18
@thelatemail Sorry for the confusion. Is it more clear now? – Titi90 Mar 2 '13 at 2:27

I'm not exactly sure what you are trying to do, but you said " I want to estimate the relationship between X and Y" which sounds like trying to fit a function to your data set. One way to explore data of unknown relation is to plot it and try and guess at a mathematical relationship between variables. For example:

``````m <- read.table(header=T, text='
X        Y
0.5      6.0
1.5      5.0
2.5      6.7
3.5      7.1
4.5      6.1
5.5      8.1
6.5      8.0
7.5      7.9
8.5      8.0
9.5      6.0')

with(m,plot(X,Y))
``````

Now try fitting a linear regression to your data.

``````lm_xy <- lm(Y~X,m)

abline(lm_xy,col='blue')

summary(lm_xy)
``````

This doesn't look like a good fit, but you can play around with `lm`, `nls` and other packages to look for a better model.

For example, try:

``````pn_xy <- nls(Y ~ a*(X - b)^2 + c, start = c(a=0.05, b=8, c=8),data=m)

lines(m\$X,predict(pn_xy,m\$X),col='red')

summary(pn_xy)
``````

You can see the different models here:

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