Litcius/Paper detail

Multiple Imputation via Generative Adversarial Network for High-dimensional Blockwise Missing Value Problems

Zongyu Dai, Zhiqi Bu, Qi Long

20212021 20th IEEE International Conference on Machine Learning and Applications (ICMLA)21 citationsDOIOpen Access PDF

Abstract

Missing data are present in most real world problems and need careful handling to preserve the prediction accuracy and statistical consistency in the downstream analysis. As the gold standard of handling missing data, multiple imputation (MI) methods are proposed to account for the imputation uncertainty and provide proper statistical inference. In this work, we propose Multiple Imputation via Generative Adversarial Network (MI-GAN), a deep learning-based (in specific, a GAN-based) multiple imputation method, that can work under missing at random (MAR) mechanism with theoretical support. MI-GAN leverages recent progress in conditional generative adversarial neural works and shows strong performance matching existing state-of-the-art imputation methods on high-dimensional datasets, in terms of imputation error. In particular, MI-GAN significantly outperforms other imputation methods in the sense of statistical inference and computational speed.

Topics & Concepts

Imputation (statistics)Missing dataComputer scienceInferenceGenerative grammarArtificial intelligenceArtificial neural networkStatistical inferenceAdversarial systemData miningMachine learningConsistency (knowledge bases)Generative adversarial networkPattern recognition (psychology)Deep learningStatisticsMathematicsGenerative Adversarial Networks and Image SynthesisBayesian Methods and Mixture ModelsStochastic Gradient Optimization Techniques