This package implements a clustering algorithm similar to kmeans, it has two main advantages:

The estimator is resistant to outliers, that means that results of estimator are still correct when there are atipycal values in the sample.

The estimator is efficient, roughly speaking, if there are not outliers in the sample (all data is good), results will be similar than those obtained by a classic algorithm (kmeans)

Clustering procedure is carried out by minimizing the overall robust scale so-called tau scale (see Yohai Gonzalez, Yohai and Zamar 2019 arxiv:1906.08198).

First we load the package ktaucenters

We generate synthetic data (three cluster well separated), and apply a classic algorithm (kmeans) and the robust ktaucenters. Results and code are shown below.

```
# Generate synthetic data (three cluster well separated)
set.seed(1)
Z <- rnorm(600);
mues <- rep(c(-4, 0, 4), 200)
X <- matrix(Z + mues, ncol=2)
### Applying the ROBUST algortihm ####
ktau_output <- ktaucenters(X, K=3,nstart=10)
### Applying the classic algortihm ####
kmeans_output <- kmeans(X,centers=3,nstart=10)
### plotting the center results
plot(X,main=" Efficiency")
points(ktau_output$centers,pch=19,col=2,cex=2)
points(kmeans_output$centers,pch=17,col=3,cex=2)
legend(-6,6,pch=c(19,17),col=c(2,3),cex=1,legend=c("ktau centers" ,"kmeans centers"))
```

We contaminate the previous data by replacing 60 observations to outliers located in a bounding box that contains the clean data. Then we apply kmeans and ktaucenters algorithms.

```
# Generate 60 sintetic outliers (contamination level 20%)
X[sample(1:300,60), ] <- matrix(runif( 40, 2* min(X), 2 * max(X) ),
ncol = 2, nrow = 60)
### Applying the ROBUST algortihm ####
ktau_output <- ktaucenters(X, K=3,nstart=10)
### Applying the classic algortihm ####
kmeans_output <- kmeans(X,centers=3,nstart=10)
```

plotting the estimated centers

```
plot(X,main=" Robustness ")
points(ktau_output$centers,pch=19,col=2,cex=2)
points(kmeans_output$centers,pch=17,col=3,cex=2)
legend(-10,10,pch=c(19,17),col=c(2,3),cex=1,legend=c("ktau centers" ,"kmeans centers"))
```

As it can be observed in Figure kmeans center were very influenced by outliers, while ktaucenters results are still razonable.

Continuation from Example 2, for outliers recognition purposes we can see the `ktau_output$outliers`

that indicates the indices that may be considered as outliers, on the other hand, the labels of each cluster found by the algorithm are coded with integers between 1 and K (in this case K=3), the variable `ktau_output$clusters`

contains that information.

```
plot(X,main=" Estimated clusters and outliers detection ")
## plottig clusters
for (j in 1:3){
points(X[ktau_output$cluster==j, ], col=j+1)
}
## plottig outliers
points(X[ktau_output$outliers, ], pch=19, col=1, cex=1)
legend(7,15,pch=c(1,1,1,19),col=c(2,3,4,1),cex=1,
legend=c("cluster 1" ,"cluster 2","cluster 3","detected \n outliers"),bg = "gray")
```

The final figure contains clusters and outliers detected.

The algorithm ktaucenter works well under noisy data, but fails when clusters have different size, shape and orientation, an algorithm suitable for this sort of data is `improvektaucenters`

. To show how this algorithm works we use the data set so-called M5data from package `tclust: tclust: Robust Trimmed Clustering`

, tclust. M5 data were generated by three normal bivariate distributions with different scales, one of the components is very overlapped with another one. A 10% background noise is added uniformly

::: {#usage .section .level3} ### usage

First we load the data, then, run the `improvedktaucenters`

function.

```
## load non spherical datadata
library("tclust")
data("M5data")
X=M5data[,1:2]
true.clusters=M5data[,3]
### done ######
#run the function to estimate clusters
improved_output=improvedktaucenters(X,K=3,cutoff=0.95)
```

We keep the results in the variable `improved_output`

, that is a list that contains the fields `outliers`

and `cluster`

, among others. For example, we can have access to the cluster labeled as 2 by typing

`X[improved_output$cluster==2, ]`

.

If we want to know the values of outliers, type

`X[improved_output$outliers, ]`

.

By using these commands, it is easy to estimate the original clusters by means of `improvedktaucenters`

routine.

For more information about this package see the vignette ktaucenters_vignette.pdf.

The preprint arxiv:1906.08198) contains comparision with other robust clustering procedures as well as technical details and applications.