Given the ubiquity of lattice models in physics, it is imperative for researchers to possess robust methods for quantifying clusters on the lattice — whether they be Ising spins or clumps of molecules. Inspired by biophysical studies, we present Python code for handling clusters on a 2D periodic lattice. Properties of individual clusters, such as their area, can be obtained with a few function calls. Our code invokes an unsupervised machine learning method called hierarchical clustering, which is simultaneously effective for the present problem and simple enough for non-experts to grasp qualitatively. Moreover, our code transparently merges clusters neighboring each other across periodic boundaries using breadth-first search (BFS), an algor...
This paper describes a new technique for parallelizing protein clustering, an important bioinformati...
Hierarchical Clustering. Hierarchical clustering methods construct a dendro-gram of the input datase...
In this paper, we present a novel clustering scheme based on binary embeddings, which provides compa...
Given the ubiquity of lattice models in physics, it is imperative for researchers to possess robust ...
Periodic boundary conditions are natural in many scientific problems, and often lead to particular s...
Understanding protein folding is a prerequisite for understanding diseases like Alzheimer's, Parkins...
A novel breadth-first based structural clustering method for graphs is proposed. Clustering is an im...
Many clustering algorithms have been proposed in recent years. Most methods operate in an iterative ...
International audienceIn structural biology, many fragment-based 3D modeling methods require fragmen...
[[abstract]]A clustering analysis method using the number of commonly exposed groups identified as a...
Unsupervised clustering, also known as natural clustering, stands for the classification of data acc...
Most learning algorithms operate in a clearly defined feature space and assume that all relevant str...
Abstract. Hierarchical clustering is a popular method for grouping to-gether similar elements based ...
[[abstract]]Clustering analysis is a very useful tool for discovering unknown knowledgeform dataset ...
Clustering in data mining is a discovery process that groups a set of data such that the intracluste...
This paper describes a new technique for parallelizing protein clustering, an important bioinformati...
Hierarchical Clustering. Hierarchical clustering methods construct a dendro-gram of the input datase...
In this paper, we present a novel clustering scheme based on binary embeddings, which provides compa...
Given the ubiquity of lattice models in physics, it is imperative for researchers to possess robust ...
Periodic boundary conditions are natural in many scientific problems, and often lead to particular s...
Understanding protein folding is a prerequisite for understanding diseases like Alzheimer's, Parkins...
A novel breadth-first based structural clustering method for graphs is proposed. Clustering is an im...
Many clustering algorithms have been proposed in recent years. Most methods operate in an iterative ...
International audienceIn structural biology, many fragment-based 3D modeling methods require fragmen...
[[abstract]]A clustering analysis method using the number of commonly exposed groups identified as a...
Unsupervised clustering, also known as natural clustering, stands for the classification of data acc...
Most learning algorithms operate in a clearly defined feature space and assume that all relevant str...
Abstract. Hierarchical clustering is a popular method for grouping to-gether similar elements based ...
[[abstract]]Clustering analysis is a very useful tool for discovering unknown knowledgeform dataset ...
Clustering in data mining is a discovery process that groups a set of data such that the intracluste...
This paper describes a new technique for parallelizing protein clustering, an important bioinformati...
Hierarchical Clustering. Hierarchical clustering methods construct a dendro-gram of the input datase...
In this paper, we present a novel clustering scheme based on binary embeddings, which provides compa...