Density-based clustering procedures are widely used in a variety of data science applications. Their advantage lies in the capability to find arbitrarily shaped and sized clusters and robustness against outliers. In particular, they proved effective in the analysis of molecular dynamics simulations, where they serve to identify relevant, low-energetic molecular conformations. As such, they can provide a convenient basis for the construction of kinetic (core-set) Markov-state models. Here we present the open-source Python project CommonNNClustering, which provides an easy-to-use and efficient reimplementation of the common-nearest-neighbor (CommonNN) method. The package provides functionalities for hierarchical clustering and an evaluation o...
International audienceIn structural biology, many fragment-based 3D modeling methods require fragmen...
Given the ubiquity of lattice models in physics, it is imperative for researchers to possess robust ...
International audienceAbstract Motivation Density Peaks is a widely spread clustering algorithm that...
Cluster analyses are often conducted with the goal to characterize an underlying probability density...
The identification of metastable states of a molecule plays an important role in the interpretation o...
We present an unsupervised data processing workflow that is specifically designed to obtain a fast c...
The large amount of molecular dynamics simulation data produced by modern computational models bring...
The large amount of molecular dynamics simulation data produced by modern computational models bring...
Consensus clustering is a machine learning tehnique for class discovery and clustering validation. T...
The core-set approach is a discretization method for Markov state models of complex molecular dynami...
WOS:000451650400002International audienceIt is extremely helpful to be able to partition the thousan...
[[abstract]]A clustering analysis method using the number of commonly exposed groups identified as a...
Understanding protein folding is a prerequisite for understanding diseases like Alzheimer's, Parkins...
Simulating natural phenomena at greater accuracy results in an explosive growth of data. Large-scale...
MOTIVATION: Sampling the conformational space is a fundamental step for both ligand- and structure-b...
International audienceIn structural biology, many fragment-based 3D modeling methods require fragmen...
Given the ubiquity of lattice models in physics, it is imperative for researchers to possess robust ...
International audienceAbstract Motivation Density Peaks is a widely spread clustering algorithm that...
Cluster analyses are often conducted with the goal to characterize an underlying probability density...
The identification of metastable states of a molecule plays an important role in the interpretation o...
We present an unsupervised data processing workflow that is specifically designed to obtain a fast c...
The large amount of molecular dynamics simulation data produced by modern computational models bring...
The large amount of molecular dynamics simulation data produced by modern computational models bring...
Consensus clustering is a machine learning tehnique for class discovery and clustering validation. T...
The core-set approach is a discretization method for Markov state models of complex molecular dynami...
WOS:000451650400002International audienceIt is extremely helpful to be able to partition the thousan...
[[abstract]]A clustering analysis method using the number of commonly exposed groups identified as a...
Understanding protein folding is a prerequisite for understanding diseases like Alzheimer's, Parkins...
Simulating natural phenomena at greater accuracy results in an explosive growth of data. Large-scale...
MOTIVATION: Sampling the conformational space is a fundamental step for both ligand- and structure-b...
International audienceIn structural biology, many fragment-based 3D modeling methods require fragmen...
Given the ubiquity of lattice models in physics, it is imperative for researchers to possess robust ...
International audienceAbstract Motivation Density Peaks is a widely spread clustering algorithm that...