6533b874fe1ef96bd12d62c6
RESEARCH PRODUCT
Machine learning method for single trajectory characterization
Gorka Mu��oz-gilMiguel Angel Garcia-marchCarlo ManzoJos�� D. Mart��n-guerreroMaciej Lewensteinsubject
FOS: Computer and information sciencesComputer Science - Machine LearningStatistical Mechanics (cond-mat.stat-mech)Biological Physics (physics.bio-ph)FOS: Physical sciencesPhysics - Biological PhysicsCondensed Matter - Statistical MechanicsMachine Learning (cs.LG)description
In order to study transport in complex environments, it is extremely important to determine the physical mechanism underlying diffusion, and precisely characterize its nature and parameters. Often, this task is strongly impacted by data consisting of trajectories with short length and limited localization precision. In this paper, we propose a machine learning method based on a random forest architecture, which is able to associate even very short trajectories to the underlying diffusion mechanism with a high accuracy. In addition, the method is able to classify the motion according to normal or anomalous diffusion, and determine its anomalous exponent with a small error. The method provides highly accurate outputs even when working with very short trajectories and in the presence of experimental noise. We further demonstrate the application of transfer learning to experimental and simulated data not included in the training/testing dataset. This allows for a full, high-accuracy characterization of experimental trajectories without the need of any prior information.
year | journal | country | edition | language |
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2019-03-07 |