Treffer: Identifying clusters on a discrete periodic lattice via machine learning.
Weitere Informationen
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 algorithm well-documented in computer science pedagogy. The fact that our code is written in Python – instead of proprietary languages – further enhances its value for reproducible science. Program Title: Cluster Collector Program Files doi: http://dx.doi.org/10.17632/w7rcv4tbtn.1 Licensing provisions: CC by 4.0 Programming language: Python Nature of problem: Lattice simulations of, say, membrane proteins model the spatiotemporal organization of a system. In order to extract insights from such simulations, we need robust methods for identifying clusters of simulated objects on the lattice. Solution method: Hierarchical clustering first identifies all potential clusters. Then, breadth-first search connects together clusters that neighbor each other across periodic boundaries. [ABSTRACT FROM AUTHOR]