基于机器学习方法的电子学习问题分类

Oktariani Nurul Pratiwi, Y. Syukriyah
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引用次数: 3

摘要

随着电子学习的使用,数据库中问题的收集也在增加。上传到电子学习系统的问题当然可以重复使用。如果问题被正确地分组,重复问题的使用将很容易在重新发明的过程中完成。不幸的是,在电子学习中,基于主题分组问题到每个主题分组的细节很少被完成。这使得跟踪现有问题的过程变得困难。此外,印度尼西亚的教育课程状况经常发生变化。变化可以是整体变化,也可以是部分变化。这种改变可以使主题中的材料内容改变顺序或被消除。当这些变化发生时,以前仍然可以使用的问题将在课程变化时难以使用。因此,大量的问题数据和很难再次找到问题使得研究者进行了这项研究。电子学习系统必须具有机器学习功能,能够根据主题到子主题自动对问题进行分类。深入检查,每个问题都可以有一个分类的形式,在主题类别,主题,子主题的困难程度的问题。在这项研究中,研究人员着重于根据主题类别和主题对问题进行分组。本研究的目的是找到正确的方法来构建机器学习模型,根据主题类别和子主题准确快速地对问题进行分类。因此,电子学习中的问题可以根据需要自动回调。
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Question Classification for e-Learning Using Machine Learning Approach
Along with the use of e-learning, the collection of questions in the database is also increasing. The questions that have been uploaded to the e-learning system can certainly be used repeatedly. The use of repetitive questions will be easy to do with the process of reinvention if the questions have been grouped properly. Unfortunately, grouping questions based on subjects to details on grouping per topic is rarely done in e-learning. This makes the process of tracking the existing problems difficult.In addition, the state of the educational curriculum in Indonesia is often changing. Changes can be changes in whole or in part. This change can make the material content in the subject change order or be eliminated. When these changes occur, the previous problems that can still be used will be difficult to use when curriculum changes occur.Therefore, the large amount of question data and the difficulty in finding the questions again made the researcher to conduct this research. E-learning systems must have machine learning capabilities that are able to classify questions automatically based on topics to sub topics. Examined deeper, each question can have a classification in the form of subject categories, topics, sub topics to the level of difficulty of the questions. In this study, researchers focused on grouping questions based on subject categories and topics.The purpose of this study is to find the right method in building machine learning models in classifying questions according to topic categories and subtopics accurately and quickly. So, the questions in e-learning can be called back exactly as needed automatically.
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