Litcius/Paper detail

Extreme learning machine for the characterization of anomalous diffusion from single trajectories (AnDi-ELM)

Carlo Manzo

2021Journal of Physics A Mathematical and Theoretical27 citationsDOIOpen Access PDF

Abstract

Abstract The study of the dynamics of natural and artificial systems has provided several examples of deviations from Brownian behavior, generally defined as anomalous diffusion. The investigation of these dynamics can provide a better understanding of diffusing objects and their surrounding media, but a quantitative characterization from individual trajectories is often challenging. Efforts devoted to improving anomalous diffusion detection using classical statistics and machine learning have produced several new methods. Recently, the anomalous diffusion challenge (AnDi, www.andi-challenge.org ) was launched to objectively assess these approaches on a common dataset, focusing on three aspects of anomalous diffusion: the inference of the anomalous diffusion exponent; the classification of the diffusion model; and the segmentation of trajectories. In this article, I describe a simple approach to tackle the tasks of the AnDi challenge by combining extreme learning machine and feature engineering (AnDi-ELM). The method reaches satisfactory performance while offering a straightforward implementation and fast training time with limited computing resources, making it a suitable tool for fast preliminary screening of anomalous diffusion.

Topics & Concepts

Anomalous diffusionComputer scienceFeature (linguistics)Artificial intelligenceDiffusionCharacterization (materials science)InferenceMachine learningFocus (optics)Extreme learning machineStatistical physicsMeasure (data warehouse)Brownian motionSegmentationDiffusion mapAlgorithmComponent (thermodynamics)Large deviations theoryDynamics (music)Data miningPattern recognition (psychology)Simple (philosophy)Machine Learning and ELMFractional Differential Equations SolutionsViral Infections and Vectors