Step-by-Step Data Cleaning Recommendations to Improve ML Prediction Accuracy

Open Access
Authors
Publication date 10-03-2025
Host editors
  • Alkis Simitsis
  • Bettina Kemme
  • Anna Queralt
  • Oscar Romero
  • Petar Jovanovic
Book title Proceedings 28th International Conference on Extending Database Technology (EDBT 2025)
Book subtitle Barcelona, Spain, March 25-March 28
Series Advances in Database Technology, 3
Event 28th International Conference on Extending Database Technology, EDBT 2025
Pages (from-to) 542-554
Publisher Konstanz: Open Proceedings
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Data quality is crucial in machine learning (ML) applications, as errors in the data can significantly impact the prediction accuracy of the underlying ML model. Therefore, data cleaning is an integral component of any ML pipeline. However, in practical scenarios, data cleaning incurs significant costs, as it often involves domain experts for configuring and executing the cleaning process. Thus, efficient resource allocation during data cleaning can enhance ML prediction accuracy while controlling expenses. This paper presents Comet, a system designed to optimize data cleaning efforts for ML tasks. Comet gives step-by-step recommendations on which feature to clean next, maximizing the efficiency of data cleaning under resource constraints. We evaluated Comet across various datasets, ML algorithms, and data error types, demonstrating its robustness and adaptability. Our results show that Comet consistently outperforms feature importance-based, random, and another well-known cleaning method, achieving up to 52 and on average 5 percentage points higher ML prediction accuracy than the proposed baselines.
Document type Conference contribution
Language English
Published at https://doi.org/10.48786/edbt.2025.43
Other links https://www.scopus.com/pages/publications/105007908461 https://www.openproceedings.org/html/pages/2025_edbt.html
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