Generating Near and Far Analogies for Educational Applications: Progress and Challenges

M. Boger, A. Laverghetta, Nikolai Fetisov, John Licato
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引用次数: 2

Abstract

Analogical reasoning, it has been argued, fundamentally underlies many cognitive processes and is an important marker of developmental cognition. This connection suggests that the clever use of analogical reasoning tasks can improve cognitive performance in specific ways, thus leading to clear educational applications, as recent psychological work has confirmed. However, currently there are no known methods to either solve or generate analogical word problems, at least to a degree of reliability that would be necessary before such educational applications are possible. To address these concerns we present work to both solve and generate analogy word problems: First, given an analogy word problem, our algorithm performs a parallel random walk through the semantic network ConceptNet to limit the number of choices that are then considered by a vector embedding. We achieve an improvement in accuracy beyond existing state-of-the-art. Second, we explore a method for automatically generating explainable n-step analogy word problems, and analyze the results.
在教育应用中产生远近类比:进展与挑战
类比推理一直被认为是许多认知过程的基础,是发展认知的重要标志。这种联系表明,巧妙地使用类比推理任务可以以特定的方式提高认知表现,从而导致明确的教育应用,正如最近的心理学研究所证实的那样。然而,目前还没有已知的方法来解决或产生类似的单词问题,至少在这种教育应用成为可能之前,没有一定程度的可靠性。为了解决这些问题,我们提出了解决和生成类比词问题的工作:首先,给定一个类比词问题,我们的算法在语义网络ConceptNet中执行并行随机漫步,以限制向量嵌入所考虑的选择数量。我们实现了精度的提高,超越了现有的最先进的技术。其次,我们探索了一种自动生成可解释的n步类比词问题的方法,并分析了结果。
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