Information as Interpretation: Measuring Learning Behavior for Knowledge Insight

Traditional Learning Analytics (LA) has been primarily focused on the behavioral aspects of learners’ learning due to its data-driven nature, often lacking analysis of the knowledge-related aspects of what learners have learned. To tackle this issue, the Information Theory on Learning Ana...

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Main Authors: Kensuke Takii, Changhao Liang, Hiroaki Ogata
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/11052294/
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author Kensuke Takii
Changhao Liang
Hiroaki Ogata
author_facet Kensuke Takii
Changhao Liang
Hiroaki Ogata
author_sort Kensuke Takii
collection DOAJ
description Traditional Learning Analytics (LA) has been primarily focused on the behavioral aspects of learners’ learning due to its data-driven nature, often lacking analysis of the knowledge-related aspects of what learners have learned. To tackle this issue, the Information Theory on Learning Analytics and Knowledge (ITLAK) framework uses information theory to quantify the informational value of learners’ learning behavior regarding their interaction with knowledge. This paper shows the foundation of ITLAK and its case study, demonstrating its theoretical validity and practical usefulness. ITLAK was applied to the context of English Intensive Reading (IR) specialized in English grammar learning, and a field experiment was conducted with Japanese junior high school third-year students using an IR system. The results showed the possibility that the information content calculated by ITLAK is an indicator that can capture the behavioral and knowledge-related aspects of learning. In particular, it was suggested that the information content metric functions in immediate feedback and captures aspects of learning distinct from the number of contacts with knowledge. However, this case study is limited by the small sample size, reliance on subjective self-assessment, and short intervention period, so further large-scale and long-term studies with objective proficiency measures are needed to validate and generalize the findings. This finding can indicate that ITLAK provides a theoretical foundation for advancing Knowledge-Aware Learning Analytics (KALA) and opens new possibilities for LA. Future research will involve revalidating the findings with large-scale data and designing learning support models.
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spelling doaj-art-972c7b77708743d5aca09820935dec392025-08-20T02:41:43ZengIEEEIEEE Access2169-35362025-01-011312419712421010.1109/ACCESS.2025.358331111052294Information as Interpretation: Measuring Learning Behavior for Knowledge InsightKensuke Takii0https://orcid.org/0000-0001-9427-8908Changhao Liang1https://orcid.org/0000-0002-9775-0697Hiroaki Ogata2https://orcid.org/0000-0001-5216-1576Academic Center for Computing and Media Studies, Kyoto University, Kyoto, JapanAcademic Center for Computing and Media Studies, Kyoto University, Kyoto, JapanAcademic Center for Computing and Media Studies, Kyoto University, Kyoto, JapanTraditional Learning Analytics (LA) has been primarily focused on the behavioral aspects of learners’ learning due to its data-driven nature, often lacking analysis of the knowledge-related aspects of what learners have learned. To tackle this issue, the Information Theory on Learning Analytics and Knowledge (ITLAK) framework uses information theory to quantify the informational value of learners’ learning behavior regarding their interaction with knowledge. This paper shows the foundation of ITLAK and its case study, demonstrating its theoretical validity and practical usefulness. ITLAK was applied to the context of English Intensive Reading (IR) specialized in English grammar learning, and a field experiment was conducted with Japanese junior high school third-year students using an IR system. The results showed the possibility that the information content calculated by ITLAK is an indicator that can capture the behavioral and knowledge-related aspects of learning. In particular, it was suggested that the information content metric functions in immediate feedback and captures aspects of learning distinct from the number of contacts with knowledge. However, this case study is limited by the small sample size, reliance on subjective self-assessment, and short intervention period, so further large-scale and long-term studies with objective proficiency measures are needed to validate and generalize the findings. This finding can indicate that ITLAK provides a theoretical foundation for advancing Knowledge-Aware Learning Analytics (KALA) and opens new possibilities for LA. Future research will involve revalidating the findings with large-scale data and designing learning support models.https://ieeexplore.ieee.org/document/11052294/English as a foreign languageinformation contentinformation theoryintensive readingITLAKknowledge-aware learning analytics
spellingShingle Kensuke Takii
Changhao Liang
Hiroaki Ogata
Information as Interpretation: Measuring Learning Behavior for Knowledge Insight
IEEE Access
English as a foreign language
information content
information theory
intensive reading
ITLAK
knowledge-aware learning analytics
title Information as Interpretation: Measuring Learning Behavior for Knowledge Insight
title_full Information as Interpretation: Measuring Learning Behavior for Knowledge Insight
title_fullStr Information as Interpretation: Measuring Learning Behavior for Knowledge Insight
title_full_unstemmed Information as Interpretation: Measuring Learning Behavior for Knowledge Insight
title_short Information as Interpretation: Measuring Learning Behavior for Knowledge Insight
title_sort information as interpretation measuring learning behavior for knowledge insight
topic English as a foreign language
information content
information theory
intensive reading
ITLAK
knowledge-aware learning analytics
url https://ieeexplore.ieee.org/document/11052294/
work_keys_str_mv AT kensuketakii informationasinterpretationmeasuringlearningbehaviorforknowledgeinsight
AT changhaoliang informationasinterpretationmeasuringlearningbehaviorforknowledgeinsight
AT hiroakiogata informationasinterpretationmeasuringlearningbehaviorforknowledgeinsight