MISNN: Multiple Imputation via Semi-parametric Neural Networks

Zhiqi Bu, Zongyu Dai, Yiliang Zhang, Q. Long
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引用次数: 0

Abstract

Multiple imputation (MI) has been widely applied to missing value problems in biomedical, social and econometric research, in order to avoid improper inference in the downstream data analysis. In the presence of high-dimensional data, imputation models that include feature selection, especially $\ell_1$ regularized regression (such as Lasso, adaptive Lasso, and Elastic Net), are common choices to prevent the model from underdetermination. However, conducting MI with feature selection is difficult: existing methods are often computationally inefficient and poor in performance. We propose MISNN, a novel and efficient algorithm that incorporates feature selection for MI. Leveraging the approximation power of neural networks, MISNN is a general and flexible framework, compatible with any feature selection method, any neural network architecture, high/low-dimensional data and general missing patterns. Through empirical experiments, MISNN has demonstrated great advantages over state-of-the-art imputation methods (e.g. Bayesian Lasso and matrix completion), in terms of imputation accuracy, statistical consistency and computation speed.
MISNN:通过半参数神经网络的多重输入
多重归算(Multiple imputation, MI)被广泛应用于生物医学、社会和计量经济学研究中的缺失值问题,以避免下游数据分析中的不正确推断。在存在高维数据的情况下,包括特征选择的输入模型,特别是正则化回归(如Lasso, adaptive Lasso和Elastic Net),是防止模型欠确定的常用选择。然而,用特征选择进行人工智能是困难的:现有的方法通常计算效率低,性能差。利用神经网络的近似能力,MISNN是一个通用的、灵活的框架,兼容任何特征选择方法、任何神经网络架构、高维/低维数据和一般缺失模式。通过实证实验,MISNN在插补精度、统计一致性和计算速度方面都比最先进的插补方法(如贝叶斯拉索和矩阵补全)有很大的优势。
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