Assessing National Reading Habits through Machine Learning: Insights from the Indonesian Reading Interest Rate Survey (2020–2023)

dc.contributor.authorMonika, W.
dc.contributor.authorWijesundara, Chiranthi
dc.contributor.authorSudiar, N.
dc.contributor.authorLatiar, H.
dc.date.accessioned2026-05-18T04:57:39Z
dc.date.issued2025
dc.description.abstractReading interest is a vital component of educational development, yet many regions face low engagement in reading activities. This study employs advanced machine learning methods to analyze and predict provincial reading interest trends in Indonesia (2020–2023). We performed classification and regression analyses using top-performing models, including CatBoost, LightGBM, XGBoost, Random Forest, ExtraTrees, k-Nearest Neighbors, and neural networks. Classification models categorized provinces by reading interest level with exceptional accuracy, reaching up to 100% on the held-out test set using an ensemble neural network. Regression models predicted continuous reading interest index scores precisely, achieving a root mean square error (RMSE) around 1.0 on a 0–100 scale. Our findings demonstrate that modern machine learning approaches can effectively uncover underlying patterns in reading interest data, such as a notable decline in reading interest in 2021 coinciding with the COVID-19 pandemic (highlighting digital disruption effects). However, given the relatively small dataset (34 provinces over 4 years),these results should be interpreted with caution in terms of generalizability and granularity. Ensemble tree-based models and neural networks exhibited superior performance, capturing both linear and non-linear relationships in the data, whereas simpler methods (e.g., k-NN) under performed. This aligns with prior research emphasizing the impact of digital media on reading habits and literacy development. By leveraging predictive analytics, educators and policymakers can proactively identify declines in reading interest and implement targeted interventions to foster sustained reading engagement in an increasingly digital world.
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dc.identifier.citationMonika, W., Wijesundara, C., Sudiar, N., & Latiar, H. (2025). Assessing National Reading Habits through Machine Learning: Insights from the Indonesian Reading Interest Rate Survey (2020–2023). IT Journal Research and Development (ITJRD), 10(1), 35-52. https://doi.org/10.25299/itjrd.2025.24019
dc.identifier.issn2528-4061
dc.identifier.urihttps://archive.cmb.ac.lk/handle/70130/8874
dc.identifier.urihttps://doi.org/10.25299/itjrd.2025.24019
dc.language.isoen
dc.publisherUniversitas Islam Riau
dc.subjectReading Interes
dc.subjectMachine Learning
dc.subjectEducational Development
dc.subjectPredictive Analytics
dc.subjectDigital Disruption
dc.titleAssessing National Reading Habits through Machine Learning: Insights from the Indonesian Reading Interest Rate Survey (2020–2023)
dc.typeArticle

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