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Classification via Label Imputation and Imputation Using Labels

The paper Imputation Using Training Labels and Classification via Label Imputation introduces two novel machine learning algorithms designed to efficiently handle missing values, a common issue in practical datasets. The first approach, Classification Based on… 

DPER: Direct Parameter Estimation for Randomly Missing Data

The paper “DPER: Direct Parameter Estimation for Randomly Missing Data,” by Thu Nguyen, Khoi Minh Nguyen-Duy, Duy Ho Minh Nguyen, Binh T. Nguyen, Bruce Alan Wade introduces a novel methodology for handling missing data. Its main contributions are as follows: These contributions position the DPER… 

Combining datasets to increase sample size

Detailed information can be found in Combining datasets to improve model fitting or its presentation slide. Summary: The key points of the paper titled “Combining Datasets to Improve Model Fitting” are as follows: Problem and… 

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