MotorIA:自动电子学习课程生成系统

María del Carmen Rodríguez-Hernández, María de la Vega Rodrigálvarez-Chamarro, Jorge I. Vea-Murguia Merck, Ángel Esteban Ballano, Marta Arguedas Lafuente, R. del-Hoyo-Alonso
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引用次数: 1

摘要

最近,通过开放数据源的可用性和自然语言处理(NLP)和人工智能的先进技术的存在,出现了一些工具来支持学生和讲师(不同知识领域的专家)的教育学习过程。然而,很少有作品提出自动化电子学习课程内容开发过程的工具。因此,教育培训领域的专家对能够简化这类过程的应用程序的出现表现出极大的兴趣。本文介绍了MotorIA,这是一个使用NLP和机器学习技术作为自动生成不同领域在线课程内容的系统(例如,计算机科学,生物学,数学等)。MotorIA提供从Wikipedia服务和PDF文档中提取的非结构化信息。在电子学习课程内容生成过程中,文本信息在知识图中进行预处理和结构化,知识图必须满足领域专家预定义的一组约束条件。后验阶段,由专家用户对MotorIA进行验证,获得较好的评价结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MotorIA: Automatic E-Learning Course Generation System
Recently, through the availability of open data sources and the existence of advanced techniques of Natural Language Processing (NLP) and Artificial Intelligence, several tools have emerged to support the educational learning process of students and lecturers (experts in different knowledge domains). However, there are very few works which propose tools that automate the e-learning course content development process. Hence, experts in the field of educational training have shown great interest in the emergence of applications that ease this type of process. This paper presents MotorIA, a system which uses NLP and Machine Learning techniques as a means to automate online course content generation from different domains (e.g., computer science, biology, mathematic, etc.). MotorIA is supplied with unstructured information extracted from both Wikipedia services and PDF documents. During the e-learning course content generation process, textual information is pre-processed and structured in a knowledge graph, which must satisfy a set of constraints predefined by experts in the field. In a posterior phase, MotorIA was validated by expert users obtaining good evaluation results.
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