Comparison of Data Imputation Performance in Deep Generative Models for Educational Tabular Missing Data
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| Title: | Comparison of Data Imputation Performance in Deep Generative Models for Educational Tabular Missing Data |
|---|---|
| Language: | English |
| Authors: | Wan-Chong Choi, Chan-Tong Lam, António José Mendes |
| Source: | International Educational Data Mining Society. 2025. |
| Availability: | International Educational Data Mining Society. e-mail: admin@educationaldatamining.org; Web site: https://educationaldatamining.org/conferences/ |
| Peer Reviewed: | Y |
| Page Count: | 10 |
| Publication Date: | 2025 |
| Document Type: | Speeches/Meeting Papers Reports - Research |
| Descriptors: | Research Problems, Data Analysis, Research Methodology, Models, Classification, Artificial Intelligence |
| Abstract: | Missing data presents a significant challenge in Educational Data Mining (EDM). Imputation techniques aim to reconstruct missing data while preserving critical information in datasets for more accurate analysis. Although imputation techniques have gained attention in various fields in recent years, their use for addressing missing data in education remains limited. This study contributes to filling the research gap by evaluating state-of-the-art deep generative models: Tabular Variational Autoencoder (TVAE), Conditional Tabular Generative Adversarial Networks (CTGAN), and Tabular Denoising Diffusion Probabilistic Models (TabDDPM) for imputing missing values using the Open University Learning Analytics Dataset (OULAD) with varying levels of missing data. These deep generative models identify relationships among demographic, behavioral, and partial assessment data to impute absent numerical assessment scores. TabDDPM showed the best imputation performance and maintained closer alignment with the original data, as demonstrated by the KL divergence and KDE plots. To further enhance predictive modeling performance with imputed data, this study proposes TabDDPM-SMOTE, which combines TabDDPM with the Synthetic Minority Over-sampling Technique (SMOTE) to tackle the class imbalance often encountered in educational datasets. Our TabDDPM-SMOTE model consistently achieves the highest F1-score when using the imputed data in XGBoost classification tasks, showcasing its strong efficiency and potential to enhance predictive effectiveness modeling. [For the complete proceedings, see ED675583.] |
| Abstractor: | As Provided |
| Entry Date: | 2025 |
| Accession Number: | ED675609 |
| Database: | ERIC |
| FullText | Text: Availability: 0 CustomLinks: – Url: https://eric.ed.gov/contentdelivery/servlet/ERICServlet?accno=ED675609 Name: ERIC Full Text Category: fullText Text: Full Text from ERIC |
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| Items | – Name: Title Label: Title Group: Ti Data: Comparison of Data Imputation Performance in Deep Generative Models for Educational Tabular Missing Data – Name: Language Label: Language Group: Lang Data: English – Name: Author Label: Authors Group: Au Data: <searchLink fieldCode="AR" term="%22Wan-Chong+Choi%22">Wan-Chong Choi</searchLink><br /><searchLink fieldCode="AR" term="%22Chan-Tong+Lam%22">Chan-Tong Lam</searchLink><br /><searchLink fieldCode="AR" term="%22António+José+Mendes%22">António José Mendes</searchLink> – Name: TitleSource Label: Source Group: Src Data: <searchLink fieldCode="SO" term="%22International+Educational+Data+Mining+Society%22"><i>International Educational Data Mining Society</i></searchLink>. 2025. – Name: Avail Label: Availability Group: Avail Data: International Educational Data Mining Society. e-mail: admin@educationaldatamining.org; Web site: https://educationaldatamining.org/conferences/ – Name: PeerReviewed Label: Peer Reviewed Group: SrcInfo Data: Y – Name: Pages Label: Page Count Group: Src Data: 10 – Name: DatePubCY Label: Publication Date Group: Date Data: 2025 – Name: TypeDocument Label: Document Type Group: TypDoc Data: Speeches/Meeting Papers<br />Reports - Research – Name: Subject Label: Descriptors Group: Su Data: <searchLink fieldCode="DE" term="%22Research+Problems%22">Research Problems</searchLink><br /><searchLink fieldCode="DE" term="%22Data+Analysis%22">Data Analysis</searchLink><br /><searchLink fieldCode="DE" term="%22Research+Methodology%22">Research Methodology</searchLink><br /><searchLink fieldCode="DE" term="%22Models%22">Models</searchLink><br /><searchLink fieldCode="DE" term="%22Classification%22">Classification</searchLink><br /><searchLink fieldCode="DE" term="%22Artificial+Intelligence%22">Artificial Intelligence</searchLink> – Name: Abstract Label: Abstract Group: Ab Data: Missing data presents a significant challenge in Educational Data Mining (EDM). Imputation techniques aim to reconstruct missing data while preserving critical information in datasets for more accurate analysis. Although imputation techniques have gained attention in various fields in recent years, their use for addressing missing data in education remains limited. This study contributes to filling the research gap by evaluating state-of-the-art deep generative models: Tabular Variational Autoencoder (TVAE), Conditional Tabular Generative Adversarial Networks (CTGAN), and Tabular Denoising Diffusion Probabilistic Models (TabDDPM) for imputing missing values using the Open University Learning Analytics Dataset (OULAD) with varying levels of missing data. These deep generative models identify relationships among demographic, behavioral, and partial assessment data to impute absent numerical assessment scores. TabDDPM showed the best imputation performance and maintained closer alignment with the original data, as demonstrated by the KL divergence and KDE plots. To further enhance predictive modeling performance with imputed data, this study proposes TabDDPM-SMOTE, which combines TabDDPM with the Synthetic Minority Over-sampling Technique (SMOTE) to tackle the class imbalance often encountered in educational datasets. Our TabDDPM-SMOTE model consistently achieves the highest F1-score when using the imputed data in XGBoost classification tasks, showcasing its strong efficiency and potential to enhance predictive effectiveness modeling. [For the complete proceedings, see ED675583.] – Name: AbstractInfo Label: Abstractor Group: Ab Data: As Provided – Name: DateEntry Label: Entry Date Group: Date Data: 2025 – Name: AN Label: Accession Number Group: ID Data: ED675609 |
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| RecordInfo | BibRecord: BibEntity: Languages: – Text: English PhysicalDescription: Pagination: PageCount: 10 Subjects: – SubjectFull: Research Problems Type: general – SubjectFull: Data Analysis Type: general – SubjectFull: Research Methodology Type: general – SubjectFull: Models Type: general – SubjectFull: Classification Type: general – SubjectFull: Artificial Intelligence Type: general Titles: – TitleFull: Comparison of Data Imputation Performance in Deep Generative Models for Educational Tabular Missing Data Type: main BibRelationships: HasContributorRelationships: – PersonEntity: Name: NameFull: Wan-Chong Choi – PersonEntity: Name: NameFull: Chan-Tong Lam – PersonEntity: Name: NameFull: António José Mendes IsPartOfRelationships: – BibEntity: Dates: – D: 01 M: 01 Type: published Y: 2025 Titles: – TitleFull: International Educational Data Mining Society Type: main |
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