Exploring the Computational Effects of Advanced Deep Neural Networks on Logical and Activity Learning for Enhanced Thinking Skills

Deming Li, Kellyt D. Ortegas, Marvin White
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引用次数: 4

Abstract

The Logical and Activity Learning for Enhanced Thinking Skills (LAL) method is an educational approach that fosters the development of critical thinking, problem-solving, and decision-making abilities in students using practical, experiential learning activities. Although LAL has demonstrated favorable effects on children’s cognitive growth, it presents various obstacles, including the requirement for tailored instruction and the complexity of tracking advancement. The present study presents a model known as the Deep Neural Networks-based Logical and Activity Learning Model (DNN-LALM) as a potential solution to tackle the challenges above. The DNN-LALM employs sophisticated machine learning methodologies to offer tailored instruction and assessment tracking, and enhanced proficiency in cognitive and task-oriented activities. The model under consideration has been assessed using a dataset comprising cognitive assessments of children. The findings indicate noteworthy enhancements in accuracy, precision, and recall. The model above attained a 93% accuracy rate in detecting logical patterns and an 87% precision rate in forecasting activity outcomes. The findings of this study indicate that the implementation of DNN-LALM can augment the efficacy of LAL in fostering cognitive growth, thereby facilitating improved monitoring of children’s advancement by educators and parents. The model under consideration can transform the approach toward LAL in educational environments, facilitating more individualized and efficacious learning opportunities for children.
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探索高级深度神经网络对逻辑和活动学习的计算效果,以提高思维技能
逻辑和活动学习增强思维技能(LAL)方法是一种教育方法,通过实践,体验式学习活动,培养学生的批判性思维,解决问题和决策能力。虽然LAL对儿童的认知发展有良好的影响,但它也存在各种障碍,包括需要量身定制的指导和跟踪进展的复杂性。本研究提出了一种称为基于深度神经网络的逻辑和活动学习模型(DNN-LALM)的模型,作为解决上述挑战的潜在解决方案。DNN-LALM采用复杂的机器学习方法,提供量身定制的指导和评估跟踪,并提高认知和任务导向活动的熟练程度。正在考虑的模型已使用包含儿童认知评估的数据集进行评估。研究结果表明,在准确性、精确度和召回率方面有显著的提高。上述模型在检测逻辑模式方面达到了93%的准确率,在预测活动结果方面达到了87%的准确率。本研究的结果表明,实施DNN-LALM可以增强LAL在促进认知成长方面的功效,从而促进教育者和家长更好地监测儿童的进步。所考虑的模型可以改变教育环境中LAL的方法,为儿童提供更加个性化和有效的学习机会。
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