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InPHYNet: Leveraging attention-based multitask recurrent networks for multi-label physics text classification

机译:InphyNet:利用基于关注的多任务复发网络,用于多标签物理文本分类

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The ability to create and sustain educational infrastructure is a major challenge to nations across the world. Today, information technology is increasingly being used to alleviate this problem by bridging the gap between learners and the textual materials by automating the process of teaching and learning. Due to this, there has been a steep rise in the information need for pedagogical content in recent years. Although there is increasing interest in building question-answering systems, there is a scarcity of intelligent tutoring systems, particularly, in physics education that can aid both students and teachers in secondary education. In this paper, we introduce a novel method for multi-label classification of paragraphs, where the paragraphs are chosen from physics subject of 6th to 12th grades from the curriculum of Central Board of Secondary Education (CBSE), India. This curriculum is common across India. For this purpose, we have constructed an attention-based recurrent interleaved multitask learning (MTL) network, namely InPHYNet that can be used for any general purpose multi-label classification task related to the educational domain. The proposed solution is contextual and scalable. Although related to physics education, it is generalizable as an approach for other subjects. We perform experiments (i) to verify and validate the labels of data collected, and (ii) to conduct robust analysis of the proposed InPHYNet network. It is observed to yield significant accuracy on the dataset and can be used for any education-based text classification/annotation or as a module within the educational question-answering systems to enhance its quality. (C) 2020 Elsevier B.V. All rights reserved.
机译:创造和维持教育基础设施的能力是世界各地国家的主要挑战。今天,信息技术越来越多地用于通过弥合学习者与文本材料之间的差距来缓解这一问题,通过自动化教学和学习。由于这一点,近年来教学内容的信息需求急剧上升。虽然对建筑物回答系统的兴趣越来越兴趣,但智能辅导系统略有稀缺,特别是在物理教育中,可以帮助学生和教师中的中学教育。在本文中,我们介绍了一种新的段落的多标签分类方法,其中段落选自中央委员会中央委员会(CBSE),印度中央委员会第6阶段的物理学科。这课程在印度普遍。为此目的,我们已经构建了一种基于关注的重复交错的多任务学习(MTL)网络,即InphyNet,可用于与教育域相关的任何通用多标签分类任务。所提出的解决方案是上下文和可扩展的。虽然与物理教育有关,但它是概遍的,作为其他科目的方法。我们执行实验(i)以验证并验证收集的数据标签,并对建议的InphyNet网络进行稳健分析。观察到在数据集中产生显着的准确性,可用于任何教育文本分类/注释或教育问题答案系统中的模块,以提高其质量。 (c)2020 Elsevier B.v.保留所有权利。

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