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在线学习环境下的自我调节学习和学习分析实证研究述评 被引量:27
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作者 +1 位作者 肖俊洪(译) 《中国远程教育》 CSSCI 北大核心 2020年第12期28-41,58,93,共16页
我们能够根据学生自我调节学习情况预测其学业表现,然而,自我调节学习对学习者而言并非易事。在新兴在线学习环境下自我调节学习能力变得更加重要。学习分析能改变我们提供学习支持的方式从而提升学习表现,因此在培养学生掌握自我调节... 我们能够根据学生自我调节学习情况预测其学业表现,然而,自我调节学习对学习者而言并非易事。在新兴在线学习环境下自我调节学习能力变得更加重要。学习分析能改变我们提供学习支持的方式从而提升学习表现,因此在培养学生掌握自我调节学习能力上发挥关键作用。本文对2011—2019年间发表的54篇学习分析在在线学习环境下自我调节学习中的应用的实证研究论文做一个概括性评价。本文的研究问题是:学习分析在评价和支持在线学习环境下学生自我调节学习方面的应用情况如何?重点关注学习分析涉及自我调节学习哪些阶段、方法、自我调节学习支持形式、学习分析促进学习的证据以及在线学习环境的类型。本文根据齐默尔曼(Zimmerman)2002年提出的模型划分自我调节学习的不同阶段,而学习分析促进学习的证据则从四个方面进行分析,即学习分析是否提升了学习效果、提高了学习支持和教学支持水平、广泛应用和使用符合伦理道德规范。文献综述结果表明,大多数研究重点涉及自我调节学习的预先计划阶段和行为表现阶段,较少关注反思阶段;提升学习效果(20%)以及学习支持和教学支持水平(22%)的证据不充分;尚未得到广泛应用;遵循道德规范的研究为数不多(15%)。从总体看,学习分析研究主要是为了评价而非支持自我调节学习。因此,非常有必要进一步发挥学习分析支持自我调节学习的作用,培养学生在在线学习环境下自我调节学习的能力。 展开更多
关键词 自我调节学习 学习分析 在线学习 教育 实证研究 文献综述
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A Bayesian model calibration framework for stochastic compartmental models with both time-varying and timeinvariant parameters
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作者 Brandon Robinson Philippe Bisaillon +4 位作者 Jodi D.Edwards Tetyana Kendzerska mohammad khalil Dominique Poirel Abhijit Sarkar 《Infectious Disease Modelling》 CSCD 2024年第4期1224-1249,共26页
We consider state and parameter estimation for compartmental models having both timevarying and time-invariant parameters.In this manuscript,we first detail a general Bayesian computational framework as a continuation... We consider state and parameter estimation for compartmental models having both timevarying and time-invariant parameters.In this manuscript,we first detail a general Bayesian computational framework as a continuation of our previous work.Subsequently,this framework is specifically tailored to the susceptible-infectious-removed(SIR)model which describes a basic mechanism for the spread of infectious diseases through a system of coupled nonlinear differential equations.The SIR model consists of three states,namely,the susceptible,infectious,and removed compartments.The coupling among these states is controlled by two parameters,the infection rate and the recovery rate.The simplicity of the SIR model and similar compartmental models make them applicable to many classes of infectious diseases.However,the combined assumption of a deterministic model and time-invariance among the model parameters are two significant impediments which critically limit their use for long-term predictions.The tendency of certain model parameters to vary in time due to seasonal trends,non-pharmaceutical interventions,and other random effects necessitates a model that structurally permits the incorporation of such time-varying effects.Complementary to this,is the need for a robust mechanism for the estimation of the parameters of the resulting model from data.To this end,we consider an augmented state vector,which appends the time-varying parameters to the original system states whereby the time evolution of the time-varying parameters are driven by an artificial noise process in a standard manner.Distinguishing between time-varying and time-invariant parameters in this fashion limits the introduction of artificial dynamics into the system,and provides a robust,fully Bayesian approach for estimating the timeinvariant system parameters as well as the elements of the process noise covariance matrix.This computational framework is implemented by leveraging the robustness of the Markov chain Monte Carlo algorithm permits the estimation of time-invariant parameters while nested nonlinear filters concurrently perform the joint estimation of the system states and time-varying parameters.We demonstrate performance of the framework by first considering a series of examples using synthetic data,followed by an exposition on public health data collected in the province of Ontario. 展开更多
关键词 Time-varying parameter estimation Bayesian inference Stochastic compartmental models
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