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Development of an Open-Source Emotion-Based Adaptive Learning Support System using Computational Thinking Activities

Published:29 June 2023Publication History

ABSTRACT

This report summarizes the information related to a PhD project that aims to develop an Open-Source Emotion-Based Adaptive Learning Support System through Computational Thinking activities. This paper outlines the proposed objectives and provides an update on the progress made in research to date.

References

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          • Published in

            cover image ACM Conferences
            ITiCSE 2023: Proceedings of the 2023 Conference on Innovation and Technology in Computer Science Education V. 2
            June 2023
            694 pages
            ISBN:9798400701399
            DOI:10.1145/3587103

            Copyright © 2023 Owner/Author

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            Publication History

            • Published: 29 June 2023

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            Overall Acceptance Rate552of1,613submissions,34%

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            ITiCSE 2024
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