加强个性化学习:人工智能驱动的学习风格识别和内容修改策略

Md. Kabin Hasan Kanchon, Mahir Sadman, Kaniz Fatema Nabila, Ramisa Tarannum, Riasat Khan
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引用次数: 0

摘要

在教育技术飞速发展的时代,定制学习材料有可能提高个人的学习能力。本研究致力于设计一种有效的方法,利用人工智能技术检测学习者偏好的学习风格,并随后调整学习内容以适应这种风格。我们的研究发现,分析学习者的网络跟踪日志以进行活动分类,以及对个人反应进行分类以进行反馈分类,是识别学习者学习风格(如视觉、听觉和动觉)的非常有效的方法。本研究利用 Moodle 学习管理系统(LMS)构建了一个自定义数据集,其中包括约 506 个样本和 22 个特征,成功地将学生分为各自的学习风格。此外,决策树、随机森林、支持向量机(SVM)、逻辑回归、XGBoost、混合集合和卷积神经网络(CNN)算法以及相应的优化超参数和合成少数超采样技术(SMOTE)已被应用于学习行为分类。采用 XGBoost 元学习模型的混合集合技术在学习风格检测方面取得了最佳性能,准确率达到 97.56%。接下来,通过采用不同的自然语言处理(NLP)技术,包括 spaCy 命名实体识别、知识图谱、生成式预训练转换器 3 (GPT-3) 和文本到文本转换器 (T5) 模型,对电子文档的文本内容进行修改,以适应不同的学习风格。此外,还采用了彩色编码、音频脚本、思维导图、闪存卡等多种方法,以有效地根据检测到的学习者类别调整内容。基于 spaCy NLP 的命名实体识别(NER)模型在生成包含 790 个不同单词的十个电子文档的彩色编码文本时,显示出 94.16% 的 F1 分数和 0.92 的精确匹配率。这些修改旨在迎合学习者的独特偏好,促进更加个性化和引人入胜的教育体验。据我们所知,这是首次利用高效的人工智能技术和私有数据集开发出集成学习风格检测和内容修改系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing personalized learning: AI-driven identification of learning styles and content modification strategies

In the rapidly advancing era of educational technology, customized learning materials have the potential to enhance individuals’ learning capacities. This research endeavors to devise an effective method for detecting a learner’s preferred learning style and subsequently adapting the learning content to align with that style, utilizing artificial intelligence AI techniques. Our investigation finds that analyzing learners’ web tracking logs for activity classification and categorizing individual responses for feedback classification are highly effective methods for identifying a learner’s learning styles, such as visual, auditory, and kinesthetic. A custom dataset has been constructed in this research comprising approximately 506 samples and 22 features utilizing the Moodle learning management system (LMS), successfully categorizing students into their respective learning styles. Furthermore, decision tree, random forest, support vector machine (SVM), logistic regression, XGBoost, blending ensemble, and convolutional neural network (CNN) algorithms with corresponding optimized hyperparameters and synthetic minority oversampling technique (SMOTE) have been applied for learning behavior classification. The blending ensemble technique with the XGBoost meta-learning model accomplished the best performance for learning style detection with an accuracy of 97.56%. Next, the text content of the electronic documents is modified by employing different natural language processing (NLP) techniques, including named entity recognition of spaCy, knowledge graph, generative pre-trained transformer 3 (GPT-3), and text-to-text transfer transformer (T5) model, to accommodate diverse learning styles. Various approaches, such as color coding, audio scripts, mind maps, flashcards, etc., are implemented to adapt the content effectively for the detected categories of learners. The spaCy NLP-based named entity recognition (NER) model demonstrates a 94.16% F1 score and 0.92 exact match ratio for color coding text generation of ten electronic documents comprising 790 distinct individual words. These modifications aim to cater to the unique preferences of learners, fostering a more personalized and engaging educational experience. To the best of our knowledge, this is the first time an integrated learning style detection and content modification system has been developed in this work utilizing efficient AI techniques and a private dataset.

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