Clustering techniques are widely used in the analysis of large datasets to group together samples with similar properties. For example, clustering is often used in the field of single-cell RNA-sequencing in order to identify different cell types present in a tissue sample. There are many algorithms for performing clustering, and the results can vary substantially. In particular, the number of groups present in a dataset is often unknown, and the number of clusters identified by an algorithm can change based on the parameters used. To explore and examine the impact of varying clustering resolution, we present clustering trees. This visualization shows the relationships between clusters at multiple resolutions, allowing researchers to see how...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...
This is the first book to take a truly comprehensive look at clustering. It begins with an introduct...
Motivation: Single cell data measures multiple cellular markers at the single-cell level for thousan...
Clustering is the task of organizing a set of objects into meaningful groups. These groups can be di...
ClutrFree has for primary function to display clusters (the output of any clustering algorithm) comp...
Abstract Background With ever-increasing amounts of data produced in biology research, scientists ar...
The task of the presented study is to find different disease phenotypes of cancer (breast cancer, ca...
The advent of high-throughput technologies and the concurrent advances in information sciences have ...
<div><p>The advent of high-throughput technologies and the concurrent advances in information scienc...
<p>BACKGROUND: Clustering has become a standard analysis for many types of biological data (e.g inte...
Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, especially fo...
Flow cytometry allows inexpensive monitoring of large and diverse cell populations using fluorescent...
Clustering algorithms aim, by definition, at partitioning a given set of objects into a set of clust...
The human DNA is a 3.1 billion long string of organic molecules, represented by four unique letters,...
Background Clustering is one of the most common techniques in data analysis and seeks to group toget...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...
This is the first book to take a truly comprehensive look at clustering. It begins with an introduct...
Motivation: Single cell data measures multiple cellular markers at the single-cell level for thousan...
Clustering is the task of organizing a set of objects into meaningful groups. These groups can be di...
ClutrFree has for primary function to display clusters (the output of any clustering algorithm) comp...
Abstract Background With ever-increasing amounts of data produced in biology research, scientists ar...
The task of the presented study is to find different disease phenotypes of cancer (breast cancer, ca...
The advent of high-throughput technologies and the concurrent advances in information sciences have ...
<div><p>The advent of high-throughput technologies and the concurrent advances in information scienc...
<p>BACKGROUND: Clustering has become a standard analysis for many types of biological data (e.g inte...
Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, especially fo...
Flow cytometry allows inexpensive monitoring of large and diverse cell populations using fluorescent...
Clustering algorithms aim, by definition, at partitioning a given set of objects into a set of clust...
The human DNA is a 3.1 billion long string of organic molecules, represented by four unique letters,...
Background Clustering is one of the most common techniques in data analysis and seeks to group toget...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...
This is the first book to take a truly comprehensive look at clustering. It begins with an introduct...
Motivation: Single cell data measures multiple cellular markers at the single-cell level for thousan...