基于知识图谱的远程学校教育问答系统

Lekshmi S. Nair, Shivani M K
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引用次数: 2

摘要

自动问答系统的目标是根据输入的文本提供问题的答案。这类系统基于文本处理,需要较长的处理时间。知识图谱用于问答已被证明是一种有效的方法。知识图谱可以应用于教与学,提高远程教育的效率。重点讨论了从非结构化文本中构建知识图谱、对知识点进行处理和评价、提取知识实体以及对知识实体的集成。本文提出了一个结合知识图和预训练的BERT(双向编码器表示)的问答模型,用于学习目的。这种模式通过提供即时反馈来帮助所有年龄段的学习者。因此,获得并继续远程学习对学生是非常有益的。
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Knowledge Graph based Question Answering System for Remote School Education
An automated question-answering system aims to deliver answers to the questions based on an input text. Such systems are based on text processing and require extended processing time. Knowledge graphs for question answering have proven to be an efficient approach. The knowledge graphs can be applied in teaching-learning to make more efficient remote education. Developing a knowledge graph from unstructured text, processing and evaluating knowledge points, extracting knowledge entities, and integrating them are all focused. This article proposes a Question answering model incorporating a Knowledge graph and the pre-trained BERT(Bidirectional Encoder Representation from Transformers) for learning purposes. This model helps in assisting learners of all ages by providing immediate feedback. Hence it can be highly beneficial to students to obtain access to and continue remote learning.
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