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The anomalous diffusion challenge: single trajectory characterisation as a competition

机译:异常的扩散挑战:单一轨迹表征作为竞争

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The deviation from pure Brownian motion, generally referred to as anomalous diffusion, has received large attention in the scientific literature to describe many physical scenarios. Several methods, based on classical statistics and machine learning approaches, have been developed to characterize anomalous diffusion from experimental data, which are usually acquired as particle trajectories. With the aim to assess and compare the available methods to characterize anomalous diffusion, we have organized the Anomalous Diffusion (AnDi) Challenge (http://www.andi-challenge.org/). Specifically, the AnDi Challenge will address three different aspects of anomalous diffusion characterization, namely: (ⅰ) Inference of the anomalous diffusion exponent, (ⅱ) Identification of the underlying diffusion model, (ⅲ) Segmentation of trajectories. Each problem includes sub-tasks for different number of dimensions (1D, 2D and 3D). In order to compare the various methods, we have developed a dedicated open-source framework for the simulation of the anomalous diffusion trajectories that are used for the training and test datasets. The challenge was launched on March 1, 2020, and consists of three phases. Currently, the participation to the first phase is open. Submissions will be automatically evaluated and the performance of the top-scoring methods will be thoroughly analyzed and compared in an upcoming article.
机译:纯布朗运动的偏差通常被称为异常扩散,在科学文献中得到了很大的关注来描述许多物理场景。已经开发了基于经典统计和机器学习方法的几种方法,以表征来自实验数据的异常扩散,这些数据通常被获取为粒子轨迹。旨在评估和比较可用方法来表征异常扩散,我们组织了异常扩散(ANDI)挑战(http://www.andi-challenge.org/)。具体地,ANDI挑战将解决异常扩散特征的三个不同方面,即:(Ⅰ)异常扩散指数的推断,(Ⅱ)识别底层扩散模型,(Ⅲ)轨迹分割。每个问题包括用于不同数量的维度(1d,2d和3d)的子任务。为了比较各种方法,我们开发了一种专用的开源框架,用于模拟用于训练和测试数据集的异常扩散轨迹。这一挑战是在2020年3月1日推出的,并由三个阶段组成。目前,参与第一阶段是开放的。将自动评估提交,并将在即将到来的文章中进行彻底分析并比较批次评分方法的性能。

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