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CACTI: Leveraging Copy Masking and Contextual Information to Improve Tabular Data Imputation

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arxiv 2506.02306 v1 pith:25SLZ7J7 submitted 2025-06-02 cs.LG stat.ML

CACTI: Leveraging Copy Masking and Contextual Information to Improve Tabular Data Imputation

classification cs.LG stat.ML
keywords missingnesscacticontextualinformationpatternsrandomapproachcopy
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present CACTI, a masked autoencoding approach for imputing tabular data that leverages the structure in missingness patterns and contextual information. Our approach employs a novel median truncated copy masking training strategy that encourages the model to learn from empirical patterns of missingness while incorporating semantic relationships between features - captured by column names and text descriptions - to better represent feature dependence. These dual sources of inductive bias enable CACTI to outperform state-of-the-art methods - an average $R^2$ gain of 7.8% over the next best method (13.4%, 6.1%, and 5.3% under missing not at random, at random and completely at random, respectively) - across a diverse range of datasets and missingness conditions. Our results highlight the value of leveraging dataset-specific contextual information and missingness patterns to enhance imputation performance.

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