Detection of Anomalous Diffusion with Deep Residual Networks

Author:

Gajowczyk Miłosz,Szwabiński JanuszORCID

Abstract

Identification of the diffusion type of molecules in living cells is crucial to deduct their driving forces and hence to get insight into the characteristics of the cells. In this paper, deep residual networks have been used to classify the trajectories of molecules. We started from the well known ResNet architecture, developed for image classification, and carried out a series of numerical experiments to adapt it to detection of diffusion modes. We managed to find a model that has a better accuracy than the initial network, but contains only a small fraction of its parameters. The reduced size significantly shortened the training time of the model. Moreover, the resulting network has less tendency to overfitting and generalizes better to unseen data.

Funder

NCN

Publisher

MDPI AG

Subject

General Physics and Astronomy

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