Litcius/Paper detail

A General M-estimation Theory in Semi-Supervised Framework

Shanshan Song, Yuanyuan Lin, Yong Zhou

2023Journal of the American Statistical Association22 citationsDOI

Abstract

We study a class of general M-estimators in the semi-supervised setting, wherein the data are typically a combination of a relatively small labeled dataset and large amounts of unlabeled data. A new estimator, which efficiently uses the useful information contained in the unlabeled data, is proposed via a projection technique. We prove consistency and asymptotic normality, and provide an inference procedure based on K-fold cross-validation. The optimal weights are derived to balance the contributions of the labeled and unlabeled data. It is shown that the proposed method, by taking advantage of the unlabeled data, produces asymptotically more efficient estimation of the target parameters than the supervised counterpart. Supportive numerical evidence is shown in simulation studies. Applications are illustrated in analysis of the homeless data in Los Angeles. Supplementary materials for this article are available online.

Topics & Concepts

EstimatorConsistency (knowledge bases)InferenceComputer scienceAsymptotic distributionProjection (relational algebra)Class (philosophy)Labeled dataNormalityMathematicsArtificial intelligenceData miningMathematical optimizationMachine learningAlgorithmStatisticsStatistical Methods and InferenceStatistical Methods and Bayesian InferenceSpatial and Panel Data Analysis