MOTIVATION: Many popular clustering methods are not scale-invariant because they are based on Euclidean distances. Even methods using scale-invariant distances, such as the Mahalanobis distance, lose their scale invariance when combined with regularization and/or variable selection. Therefore, the results from these methods are very sensitive to the measurement units of the clustering variables. A simple way to achieve scale invariance is to scale the variables before clustering. However, scaling variables is a very delicate issue in cluster analysis: A bad choice of scaling can adversely affect the clustering results. On the other hand, reporting clustering results that depend on measurement units is not satisfactory. Hence, a safe and eff...
Clustering of patients allows to find groups of subjects with similar characteristics. This categori...
Summary. Variable selection in high-dimensional clustering analysis is an important yet challenging ...
The exploratory nature of data analysis and data mining makes clustering one of the most usual tasks...
Motivation: Many popular clustering methods are not scale-invariant because they are based on Euclid...
The increasing size of datasets is particularly evident in the field of bioinformatics. It is unlike...
Summary: Penalized model-based clustering has been proposed for high-dimensional but small sample-si...
Cluster analysis (CA) is a generic name for an array of quantitative methods, the applications of wh...
Background: Data transformations are commonly used in bioinformatics data processing in the context ...
In many fields, researchers are confronted by datasets whose variables demonstrate grouping patterns...
Normalization before clustering is often needed for proximity indices, such as Euclidian distance, w...
Motivation: Biologists often employ clustering techniques in the explorative phase of microarray dat...
Clustering is one of the most well known activities in scientific investigation and the object of re...
Clustering algorithms are extensively used on patient tissue samples in order to group and visualize...
This chapter discusses several popular clustering functions and open source software packages in R a...
Currently, clustering applications use classical methods to partition a set of data (or objects) in ...
Clustering of patients allows to find groups of subjects with similar characteristics. This categori...
Summary. Variable selection in high-dimensional clustering analysis is an important yet challenging ...
The exploratory nature of data analysis and data mining makes clustering one of the most usual tasks...
Motivation: Many popular clustering methods are not scale-invariant because they are based on Euclid...
The increasing size of datasets is particularly evident in the field of bioinformatics. It is unlike...
Summary: Penalized model-based clustering has been proposed for high-dimensional but small sample-si...
Cluster analysis (CA) is a generic name for an array of quantitative methods, the applications of wh...
Background: Data transformations are commonly used in bioinformatics data processing in the context ...
In many fields, researchers are confronted by datasets whose variables demonstrate grouping patterns...
Normalization before clustering is often needed for proximity indices, such as Euclidian distance, w...
Motivation: Biologists often employ clustering techniques in the explorative phase of microarray dat...
Clustering is one of the most well known activities in scientific investigation and the object of re...
Clustering algorithms are extensively used on patient tissue samples in order to group and visualize...
This chapter discusses several popular clustering functions and open source software packages in R a...
Currently, clustering applications use classical methods to partition a set of data (or objects) in ...
Clustering of patients allows to find groups of subjects with similar characteristics. This categori...
Summary. Variable selection in high-dimensional clustering analysis is an important yet challenging ...
The exploratory nature of data analysis and data mining makes clustering one of the most usual tasks...