Improving Frame-based Engagement Classification in E-Learning Using EfficientNet and Normalized Loss Weighting

Dublin Core

Title

Improving Frame-based Engagement Classification in E-Learning Using EfficientNet and Normalized Loss Weighting

Subject

classification; deep learning; engagement; EfficientNet; normalized loss

Description

Engagement can be defined as how individuals are involved in and interact with a task that requires attention and emotional conditions. Engagement is an affective state positively correlated with learning processes. Engagement along with other affective states, such as boredom, confusion, and frustration must be analyzed to identify students’ learning behavior. Implementing proper prevention by measuring student engagement levels could increase students’ learning intake. Such implementation involves building an effective feedback system or rearranging the learning design. Several researchers have proposed deep-learning approaches using the DAiSEE dataset to classify student engagement levels. In addition, previous studies utilized various loss functions equipped with class weighting to assign higher importance to the minor classes, which are low and very low engagement classes. Most of the state-of-the-art models achieved high accuracy, but the f1-score was still low because of the minor class struggle. This research tries to solve engagement level classification on imbalance conditions by proposing a normalized loss function weighting based on the Inverse Class Frequency formula based on each class’ instances to give more importance and focus to the classes and trained on Vanilla EfficientNet model rather than experimenting on more advanced model to keep the efficient and suit the memory constraint on the e-learning implementation. Based on the conducted experiments, the normalized ICF obtained the highest accuracy of 51.64% and weighted f1-score of 50.86%, which is superior to the standard ICF performance, which received 50.32% accuracy and weighted f1-score of 50.49% using the same settings

Creator

Joseph A. Sugihdharma1, Fitra AbdurrachmanBachtiar2*, Novanto Yudistira3

Source

https://jurnal.iaii.or.id/index.php/RESTI/article/view/6161/1088

Publisher

ntelligent System Laboratory, Facultyof Computer Science, Brawijaya University, Malang, Indonesia

Date

June 21, 2025

Contributor

FAJAR BAGUS W

Format

PDF

Language

ENGLISH

Type

TEXT

Files

Collection

Citation

Joseph A. Sugihdharma1, Fitra AbdurrachmanBachtiar2*, Novanto Yudistira3, “Improving Frame-based Engagement Classification in E-Learning Using EfficientNet and Normalized Loss Weighting,” Repository Horizon University Indonesia, accessed January 27, 2026, https://repository.horizon.ac.id/items/show/10515.