Revealing at-risk learning patterns and corresponding self-regulated strategies via LSTM encoder and time-series clustering

IF 2.1 Q2 INFORMATION SCIENCE & LIBRARY SCIENCE Information Discovery and Delivery Pub Date : 2021-06-28 DOI:10.1108/idd-12-2020-0160
Mingyan Zhang, Xu Du, K. Rice, Jui-Long Hung, Hao Li
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引用次数: 3

Abstract

Purpose This study aims to propose a learning pattern analysis method which can improve a predictive model’s performance, as well as discover hidden insights into micro-level learning pattern. Analyzing student’s learning patterns can help instructors understand how their course design or activities shape learning behaviors; depict students’ beliefs about learning and their motivation; and predict learning performance by analyzing individual students’ learning patterns. Although time-series analysis is one of the most feasible predictive methods for learning pattern analysis, literature-indicated current approaches cannot provide holistic insights about learning patterns for personalized intervention. This study identified at-risk students by micro-level learning pattern analysis and detected pattern types, especially at-risk patterns that existed in the case study. The connections among students’ learning patterns, corresponding self-regulated learning (SRL) strategies and learning performance were finally revealed. Design/methodology/approach The method used long short-term memory (LSTM)-encoder to process micro-level behavioral patterns for feature extraction and compression, thus the students’ behavior pattern information were saved into encoded series. The encoded time-series data were then used for pattern analysis and performance prediction. Time series clustering were performed to interpret the unique strength of proposed method. Findings Successful students showed consistent participation levels and balanced behavioral frequency distributions. The successful students also adjusted learning behaviors to meet with course requirements accordingly. The three at-risk patten types showed the low-engagement (R1) the low-interaction (R2) and the non-persistent characteristics (R3). Successful students showed more complete SRL strategies than failed students. Political Science had higher at-risk chances in all three at-risk types. Computer Science, Earth Science and Economics showed higher chances of having R3 students. Research limitations/implications The study identified multiple learning patterns which can lead to the at-risk situation. However, more studies are needed to validate whether the same at-risk types can be found in other educational settings. In addition, this case study found the distributions of at-risk types were vary in different subjects. The relationship between subjects and at-risk types is worth further investigation. Originality/value This study found the proposed method can effectively extract micro-level behavioral information to generate better prediction outcomes and depict student’s SRL learning strategies in online learning. The authors confirm that the research in their work is original, and that all the data given in the paper are real and authentic. The study has not been submitted to peer review and not has been accepted for publishing in another journal.
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通过LSTM编码器和时间序列聚类揭示风险学习模式和相应的自我调节策略
本研究旨在提出一种学习模式分析方法,以提高预测模型的性能,并发现微观层面学习模式的隐藏见解。分析学生的学习模式可以帮助教师了解他们的课程设计或活动是如何塑造学习行为的;描述学生对学习的信念和动机;并通过分析个别学生的学习模式来预测学习表现。虽然时间序列分析是学习模式分析中最可行的预测方法之一,但文献表明,目前的方法无法为个性化干预提供关于学习模式的整体见解。本研究通过微观层面的学习模式分析来识别风险学生,并检测模式类型,特别是案例研究中存在的风险模式。最后揭示了学生的学习模式、相应的自主学习策略与学习绩效之间的关系。该方法利用LSTM编码器对微观层面的行为模式进行特征提取和压缩,从而将学生的行为模式信息保存成编码序列。然后将编码的时间序列数据用于模式分析和性能预测。采用时间序列聚类来解释该方法的独特优势。研究结果:成功的学生表现出一致的参与水平和平衡的行为频率分布。成功的学生也相应地调整了学习行为以适应课程要求。三种风险模式类型表现出低投入(R1)、低互动(R2)和非持久性(R3)特征。成功学生比失败学生表现出更完整的学习策略。在所有三种风险类型中,政治学的风险几率都更高。计算机科学、地球科学和经济学有更高的机会拥有R3学生。研究的局限性/意义研究确定了多种学习模式,这些模式可能导致有风险的情况。然而,需要更多的研究来验证是否在其他教育环境中也能发现同样的高危类型。此外,本案例研究还发现,在不同的研究对象中,风险类型的分布是不同的。受试者与高危类型之间的关系值得进一步研究。独创性/价值本研究发现,该方法可以有效地提取微观层面的行为信息,生成更好的预测结果,并描述学生在线学习中的SRL学习策略。作者确认其工作中的研究是原创的,论文中给出的所有数据都是真实可信的。该研究尚未提交同行评议,也未被其他期刊接受发表。
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来源期刊
Information Discovery and Delivery
Information Discovery and Delivery INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
5.40
自引率
4.80%
发文量
21
期刊介绍: Information Discovery and Delivery covers information discovery and access for digital information researchers. This includes educators, knowledge professionals in education and cultural organisations, knowledge managers in media, health care and government, as well as librarians. The journal publishes research and practice which explores the digital information supply chain ie transport, flows, tracking, exchange and sharing, including within and between libraries. It is also interested in digital information capture, packaging and storage by ‘collectors’ of all kinds. Information is widely defined, including but not limited to: Records, Documents, Learning objects, Visual and sound files, Data and metadata and , User-generated content.
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