JOURNAL ARTICLE
Efficient semiparametric estimation in two‐sample comparison via semisupervised learning.
Published In: Canadian Journal of Statistics, 2025, v. 53, n. 2. P. 1 1 of 3
Database: Academic Search Ultimate 2 of 3
Authored By: Tan, Tao; Zhang, Shuyi; Zhou, Yong 3 of 3
Abstract
We develop a general semisupervised framework for statistical inference in the two‐sample comparison setting. Although the supervised Mann–Whitney statistic outperforms many estimators in the two‐sample problem for nonnormally distributed responses, it is excessively inefficient because it ignores large amounts of unlabelled information. To borrow strength from unlabelled data, we propose a class of efficient and adaptive estimators that use two‐step semiparametric imputation. The probabilistic index model is adopted primarily to achieve dimension reduction for multivariate covariates, and a follow‐up reweighting step balances the contributions of labelled and unlabelled data. The asymptotic properties of our estimator are derived with variance comparison through a phase diagram. Efficiency theory shows our estimators achieve the semiparametric variance lower bound if the probabilistic index model is correctly specified, and are more efficient than their supervised counterpart when the model is not degenerate. The asymptotic variance is estimated through a two‐step perturbation resampling procedure. To gauge the finite sample performance, we conducted extensive simulation studies which verify the adaptive nature of our methods with respect to model misspecification. To illustrate the merits of our proposed method, we analyze a dataset concerning homelessness in Los Angeles. [ABSTRACT FROM AUTHOR]
Additional Information
- Source:Canadian Journal of Statistics. 2025/06, Vol. 53, Issue 2, p1
- Document Type:Article
- Subject Area:Business and Management
- Publication Date:2025
- ISSN:0319-5724
- DOI:10.1002/cjs.11813
- Accession Number:185349736
- Copyright Statement:Copyright of Canadian Journal of Statistics is the property of Wiley-Blackwell and its content may not be copied or emailed to multiple sites without the copyright holder's express written permission. Additionally, content may not be used with any artificial intelligence tools or machine learning technologies. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
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