We propose a robust parameter estimation method for dynamical systems based on Statistical Learning techniques which aims to estimate a set of parameters that well fit the dynamics in order to obtain robust evidences about the qualitative behaviour of its trajectory. The method is quite general and flexible, since it does not rely on any specific property of the dynamical system, and represents a reinterpretation of Approximate Bayesian Computation methods through the lens of Statistical Learning. The method is specially useful for estimating parameters in epidemiological compartmental models in order to obtain qualitative properties of a disease evolution. We apply it to simulated and real data about COVID-19 spread in the US in order to evaluate qualitatively its evolution over time, showing how one may assess the effectiveness of measures implemented to slow the spread and some qualitative features of the disease current and future evolution.
翻译:我们根据统计学习技术,为动态系统提出一套强有力的参数估计方法,旨在估计一套非常适合动态的参数,以便获得有关其轨迹质量表现的可靠证据。该方法相当笼统和灵活,因为它不依赖动态系统的任何具体属性,并且代表了从统计学习角度对阿普约巴伊西亚计算法的重新解释。该方法特别有用,用于估计流行病学分层模型的参数,以便获得疾病演变的质量特性。我们将其应用于美国传播的关于COVID-19的模拟和真实数据,以便从质量上评价其随时间演变,表明人们如何评估为减缓疾病蔓延和当前及未来演变的某些质量特征而采取的措施的有效性。