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How can I access all the points in z? I want to know the values of every point along LD1 and LD2 depending on their Sp (c,s,v).

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Re edit on tags: The 'lda' tag got taken by a text analysis method with the same acronym (LDA) as linear discriminant analysis. – 42- Dec 29 '12 at 17:00
up vote 4 down vote accepted

What you are looking for is computed as part of the predict() method of objects of class "lda" (see ?predict.lda). It is returned as component x of the object produced by predict(z):

## follow example from ?lda
Iris <- data.frame(rbind(iris3[,,1], iris3[,,2], iris3[,,3]),
                   Sp = rep(c("s","c","v"), rep(50,3)))
set.seed(1) ## remove this line if you want it to be pseudo random
train <- sample(1:150, 75)
## your answer may differ
##  c  s  v
## 22 23 30
z <- lda(Sp ~ ., Iris, prior = c(1,1,1)/3, subset = train)

## get the whole prediction object
pred <- predict(z)
## show first few sample scores on LDs

the last line shows the first few rows of the object scores on the linear discriminants

> head(pred$x)
          LD1        LD2
40  -8.334664  0.1348578
56   2.462821 -1.5758927
85   2.998319 -0.6648073
134  4.030165 -1.4724530
30  -7.511226 -0.6519301
131  6.779570 -0.8675742

These scores can be plotted like so

plot(LD2 ~ LD1, data = pred$x)

producing the following plot (for this training sample!)

lda scores plot

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Quite useful and then so simple that I can't beleive I had not seen that before. Thanks! – Federico C Sep 20 '12 at 11:53

When you calling the function plot(z), you are actually calling the function plot.lda - this is an S3 method. Basically, the object z has class lda:


We can look at the actual function that is being used:

getS3method("plot", "lda")

This turns out to be rather involved. But the key points are:

x = z
Terms <- x$terms
data <- model.frame(x)
X <- model.matrix(delete.response(Terms), data)
g <- model.response(data)
xint <- match("(Intercept)", colnames(X), nomatch = 0L)
X <- X[, -xint, drop = FALSE]
means <- colMeans(x$means)
X <- scale(X, center = means, scale = FALSE) %*% x$scaling

We can no plot as before:

plot(X[,1], X[,2])

Proviso There might well be an easier way of getting what you want - I just don't know the lda function.

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Wow, Thanks! almost looks like magic! – Federico C Sep 19 '12 at 14:10
+1 and the extra magic source is that this is done for you in the predict() method of "lda" objects, and then some as it provides several different ways to generate the predictions. I have supplied an example in my answer. – Gavin Simpson Sep 19 '12 at 14:34
predict - I should have guessed. Definitely the correct way to go. – csgillespie Sep 19 '12 at 14:35

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