14

I'm new to R, and I have already trained the model using hclust:

 model=hclust(distances,method="ward”)

And the result looks good:

enter image description here

Now I get some new data records, I want to predict which cluster every one of them belongs to. How do I get it done ?

3

5 Answers 5

21

Clustering is not supposed to "classify" new data, as the name suggests - it is the core concept of classification.

Some of the clustering algorithms (like those centroid based - kmeans, kmedians etc.) can "label" new instance based on the model created. Unfortunately hierarchical clustering is not one of them - it does not partition the input space, it just "connects" some of the objects given during clustering, so you cannot assign the new point to this model.

The only "solution" to use the hclust in order to "classify" is to create another classifier on top of the labeled data given by hclust. For example you can now train knn (even with k=1) on the data with labels from hclust and use it to assign labels to new points.

1
  • Great, the knn idea worth trying.
    – WoooHaaaa
    Jan 12, 2014 at 1:15
10

As already mentioned, you can use a classifier such as class :: knn, to determine which cluster a new individual belongs to.

The KNN or k-nearest neighbors algorithm is one of the simplest machine learning algorithms and is an example of instance-based learning, where new data are classified based on stored, labeled instances. More specifically, the distance between the stored data and the new instance is calculated by means of some kind of a similarity measure. This similarity measure is typically expressed by a distance measure such as the Euclidean distance.

Next I leave a code as an example for the iris data.

library(scorecard)
library(factoextra)
library(class)

df_iris <- split_df(iris, ratio = 0.75, seed = 123)
d_iris <- dist(scale(df_iris$train[,-5]))

hc_iris <- hclust(d_iris, method = "ward.D2")
fviz_dend(hc_iris, k = 3,cex = 0.5,k_colors = c("#00AFBB","#E7B800","#FC4E07"),
          color_labels_by_k = TRUE, ggtheme = theme_minimal())
groups <- cutree(hc_iris, k = 3)
table(groups)

enter image description here

Predict new data

knnClust <- knn(train = df_iris$train[,-5], test = df_iris$test[,-5] , k = 1, cl = groups)
knnClust
 [1] 1 1 1 1 1 1 1 1 1 1 1 1 1 1 2 3 2 3 3 3 2 2 2 2 2 3 3 2 2 3 2 2 2 2 2 2 2 2 2
Levels: 1 2 3

# p1 <- fviz_cluster(list(data = df_iris$train[,-5], cluster = groups), stand = F) + xlim(-11.2,-4.8) + ylim(-3,3) + ggtitle("train")
# p2 <- fviz_cluster(list(data = df_iris$test[,-5], cluster = knnClust),stand = F) + xlim(-11.2,-4.8) + ylim(-3,3) + ggtitle("test")
# gridExtra::grid.arrange(p1,p2,nrow = 2)

pca1 <- data.frame(prcomp(df_iris$train[,-5], scale. = T)$x[,1:2], cluster = as.factor(groups), factor = "train")
pca2 <- data.frame(prcomp(df_iris$test[,-5], scale. = T)$x[,1:2], cluster = as.factor(knnClust), factor = "test")
pca <- as.data.frame(rbind(pca1,pca2))

Plot train and test data

ggplot(pca, aes(x = PC1, y = PC2, color = cluster, size = 1, alpha = factor)) +
  geom_point(shape = 19) + theme_bw()

enter image description here

1

You can use this classification and then use LDA to predict which class the new point should fall into.

0

I face the similar problem and work out a temporal solution.

  1. In my environment R, the function hclust gives the label for the train data.
  2. We can use one supervised learning model to reconnect label and features.
  3. And then we just do the same data processing when we deal with a supervised learning model.
  4. If we face a binary classification model, we can use KS value, AUC value and so on to see the performance of this clustering.

Similarly, we can use PCA method on the feature and extract PC1 as a label.

  1. To binning this label, we get a new label fitted to classification.
  2. In the same way, we do the same processing when we deal with a classification model.

In R, I find PCA method processes much faster than hclust. (Mayank 2016) In practice, I find this way is easy to deploy the model. But I suspect whether this temporal solution results in bias on prediction or not.

Ref

Mayank. 2016. “Hclust() in R on Large Datasets.” Stack Overflow. hclust() in R on large datasets.

-5

Why not compute the centroid of the points for each hclust cluster, then assign a new point to the nearest using the same distance function ?

knn in class will only look at nearest n and only allows Euclidean distance.

There's no need to run a classifier.

2
  • 1
    because hierarchical clustering does not create clusters where centroid is a well defined object. You are far from truth here, classifier is needed in such a case, 1nn (suggested above) is the simpliest and probably sufficient solution (its code is even simplier than your suggestion) and it will work, while computing centroids will not.
    – lejlot
    May 23, 2015 at 23:38
  • 1
    The above approach is more valid for kmeans. In regards to HCA, I wonder if a tree splitting technique could be employed based on the results of the dendrogram?
    – Chris
    Jun 17, 2017 at 3:10

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