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Machine Learning Model for Computational Tracking and Forecasting the COVID-19 Dynamic Propagation

机译:计算跟踪机器学习模型和预测Covid-19动态传播

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摘要

A computational model with intelligent machine learning for analysis of epidemiological data, is proposed. The innovations of adopted methodology consist of an interval type-2 fuzzy clustering algorithm based on adaptive similarity distance mechanism for defining specific operation regions associated to the behavior and uncertainty inherited to epidemiological data, and an interval type-2 fuzzy version of Observer/Kalman Filter Identification (OKID) algorithm for adaptive tracking and real time forecasting according to unobservable components computed by recursive spectral decomposition of experimental epidemiological data. Experimental results and comparative analysis illustrate the efficiency and applicability of proposed methodology for adaptive tracking and real time forecasting the dynamic propagation behavior of novel coronavirus 2019 (COVID-19) outbreak in Brazil.
机译:提出了一种具有智能机器学习的计算模型,用于分析流行病学数据。采用方法的创新由基于自适应相似距离机制的间隔类型-2模糊聚类算法组成,用于定义与流行病学数据继承的行为和不确定性相关的特定操作区域,以及观察者/卡尔曼滤波器的间隔类型-2模糊版本根据实验流行病学数据的递归谱分解计算的不可接受的组分的自适应跟踪和实时预测识别(OKID)算法。实验结果和比较分析说明了建议的适应性跟踪和实时预测新冠状病毒2019年动态传播行为(Covid-19)爆发的效率和适用性。

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