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首页> 外文期刊>Topics in cognitive science >Perceptual Learning Modules in Mathematics: Enhancing Students' Pattern Recognition, Structure Extraction, and Fluency
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Perceptual Learning Modules in Mathematics: Enhancing Students' Pattern Recognition, Structure Extraction, and Fluency

机译:数学中的感性学习模块:增强学生的模式识别,结构提取和流利度

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摘要

Learning in educational settings emphasizes declarative and procedural knowledge. Studies of expertise, however, point to other crucial components of learning, especially improvements produced by experience in the extraction of information: perceptual learning (PL). We suggest that such improvements characterize both simple sensory and complex cognitive, even symbolic, tasks through common processes of discovery and selection. We apply these ideas in the form of perceptual learning modules (PLMs) to mathematics learning. We tested three PLMs, each emphasizing different aspects of complex task performance, in middle and high school mathematics. In the MultiRep PLM, practice in matching function information across multiple representations improved students' abilities to generate correct graphs and equations from word problems. In the Algebraic Transformations PLM, practice in seeing equation structure across transformations (but not solving equations) led to dramatic improvements in the speed of equation solving. In the Linear Measurement PLM, interactive trials involving extraction of information about units and lengths produced successful transfer to novel measurement problems and fraction problem solving. Taken together, these results suggest (a) that PL techniques have the potential to address crucial, neglected dimensions of learning, including discovery and fluent processing of relations; (b) PL effects apply even to complex tasks that involve symbolic processing; and (c) appropriately designed PL technology can produce rapid and enduring advances in learning.
机译:在教育环境中的学习强调声明性和程序性知识。然而,专门知识的研究指向学习的其他关键组成部分,尤其是信息提取经验所带来的改进:感知学习(PL)。我们建议这样的改进通过常见的发现和选择过程来表征简单的感官和复杂的认知甚至符号任务。我们将这些思想以感知学习模块(PLM)的形式应用于数学学习。我们在中学和高中数学中测试了三个PLM,每个PLM都强调复杂任务性能的不同方面。在MultiRep PLM中,跨多种表示形式匹配功能信息的练习提高了学生从单词问题中生成正确的图形和方程式的能力。在代数变换PLM中,查看跨变换的方程结构(而不​​是求解方程)的实践导致方程求解速度的显着提高。在线性测量PLM中,涉及提取有关单位和长度信息的交互式试验成功地转移到了新的测量问题和分数问题的求解中。综上所述,这些结果表明:(a)PL技术有可能解决关键的,被忽视的学习领域,包括发现和流畅地处理关系; (b)PL效果甚至适用于涉及符号处理的复杂任务; (c)设计适当的PL技术可以在学习中取得快速而持久的进步。

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