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Harnessing Entropy via Predictive Analytics to Optimize Outcomes in the Pedagogical System: An Artificial Intelligence-Based Bayesian Networks Approach

机译:通过预测分析利用熵来优化教学系统中的结果:基于人工智能的贝叶斯网络方法

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Educational stakeholders would be better informed if they could use their students’ formative assessments results and personal background attributes to predict the conditions for achieving favorable learning outcomes, and conversely, to gain awareness of the “at-risk” signals to prevent unfavorable or worst-case scenarios from happening. It remains, however, quite challenging to simulate predictive counterfactual scenarios and their outcomes, especially if the sample size is small, or if a baseline control group is unavailable. To overcome these constraints, the current paper proffers a Bayesian Networks approach to visualize the dynamics of the spread of “energy” within a pedagogical system, so that educational stakeholders, rather than computer scientists, can also harness entropy to work for them. The paper uses descriptive analytics to investigate “what has already happened?” in the collected data, followed by predictive analytics with controllable parameters to simulate outcomes of “what-if?” scenarios in the experimental Bayesian Network computational model to visualize how effects spread when interventions are applied. The conceptual framework and analytical procedures in this paper could be implemented using Bayesian Networks software, so that educational researchers and stakeholders would be able to use their own schools’ data and produce findings to inform and advance their practice.
机译:如果教育利益相关者可以利用学生的形成性评估结果和个人背景属性来预测实现良好学习成果的条件,并且可以相反地,使他们意识到“高风险”信号以防止不利或最糟糕的情况发生,则可以更好地了解他们。案例场景的发生。但是,要模拟预测性的反事实情景及其结果仍然非常具有挑战性,尤其是在样本量较小或没有基准对照组的情况下。为了克服这些限制,当前的论文提供了一种贝叶斯网络方法来可视化教学系统内“能量”的传播动态,以便教育利益相关者而不是计算机科学家也可以利用熵来为他们工作。该论文使用描述性分析来调查“已经发生了什么?”在收集的数据中进行分析,然后进行具有可控参数的预测分析,以模拟“假设分析”的结果贝叶斯网络实验模型中的各种场景,以可视化效果显示干预措施如何传播。本文中的概念框架和分析程序可以使用贝叶斯网络软件来实现,这样教育研究人员和利益相关者将能够使用自己学校的数据并产生发现,从而为他们的实践提供信息并促进他们的实践。

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