# using lines() with 'multiple x entries'

I'm looking for a way to plot a nonlinear regression line on a data set where every value in my vector y is being stored multiple times, so I tried to use something like:

``````x <- c(1,2,3,4,5,6,7,8,9,10)
y <- c(1,4,9,15,25,9,36,25,36,25)
reg4 <- lm( x ~ y + I(y^2) )
plot(x ~ y)
lines(y, predict(reg4), type="l", col="red", lwd=1)
``````

this gives http://i.imgur.com/qSEVNdT.png

So my question is, is there a way to, let's say, use some sort of mean value for each y entry? Or well just make it a 'continous' line instead of something that branches of into multiple lines/returns to a lower y value at the points where there are multiple 'entries'.

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The problem does not come from the ties in the data: for a given value of `y`, there is only one forecast. The problem is that the points are not sorted, so that when you join them, you end up with a tangle of lines. You can use `order` to reorder the points.

``````plot(
x ~ y,
xlab = "y", ylab = "x"  # Confusing...
)
i <- order(y)
lines( y[i], predict(reg4)[i] )
``````
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In these cases, it is best to `predict` from the model over the range of the covariate. You do this for say 50 or 100 locations equally spaced over the range of `x`. Increasing or decreasing the number of locations to predict at as needed - more complex responses will need more locations etc. Doing this also solves the spaghetti plot issue as the `newdata` supplied will be in the order of `x`

``````x <- c(1,2,3,4,5,6,7,8,9,10)
y <- c(1,4,9,15,25,9,36,25,36,25)
reg4 <- lm( x ~ y + I(y^2) )
## predictions
pred <- data.frame(y = seq(min(y), max(y), length = 100))
pred <- transform(pred, x = predict(reg4, newdata = pred))
## plot
plot(x ~ y)
lines(x ~ y, data = pred, type = "l", col = "red", lwd = 1)
``````

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