Enregistré dans:
Détails bibliographiques
Auteurs principaux: Wang, Yue, Zhao, Jianhua, Jiang, Fen, Shi, Lei, Pan, Jianxin
Format: Preprint
Publié: 2024
Sujets:
Accès en ligne:https://arxiv.org/abs/2406.04150
Tags: Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!
_version_ 1866911908569808896
author Wang, Yue
Zhao, Jianhua
Jiang, Fen
Shi, Lei
Pan, Jianxin
author_facet Wang, Yue
Zhao, Jianhua
Jiang, Fen
Shi, Lei
Pan, Jianxin
contents Random effects meta-analysis model is an important tool for integrating results from multiple independent studies. However, the standard model is based on the assumption of normal distributions for both random effects and within-study errors, making it susceptible to outlying studies. Although robust modeling using the $t$ distribution is an appealing idea, the existing work, that explores the use of the $t$ distribution only for random effects, involves complicated numerical integration and numerical optimization. In this paper, a novel robust meta-analysis model using the $t$ distribution is proposed ($t$Meta). The novelty is that the marginal distribution of the effect size in $t$Meta follows the $t$ distribution, enabling that $t$Meta can simultaneously accommodate and detect outlying studies in a simple and adaptive manner. A simple and fast EM-type algorithm is developed for maximum likelihood estimation. Due to the mathematical tractability of the $t$ distribution, $t$Meta frees from numerical integration and allows for efficient optimization. Experiments on real data demonstrate that $t$Meta is compared favorably with related competitors in situations involving mild outliers. Moreover, in the presence of gross outliers, while related competitors may fail, $t$Meta continues to perform consistently and robustly.
format Preprint
id arxiv_https___arxiv_org_abs_2406_04150
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A novel robust meta-analysis model using the $t$ distribution for outlier accommodation and detection
Wang, Yue
Zhao, Jianhua
Jiang, Fen
Shi, Lei
Pan, Jianxin
Methodology
Machine Learning
62P10
I.2.6
Random effects meta-analysis model is an important tool for integrating results from multiple independent studies. However, the standard model is based on the assumption of normal distributions for both random effects and within-study errors, making it susceptible to outlying studies. Although robust modeling using the $t$ distribution is an appealing idea, the existing work, that explores the use of the $t$ distribution only for random effects, involves complicated numerical integration and numerical optimization. In this paper, a novel robust meta-analysis model using the $t$ distribution is proposed ($t$Meta). The novelty is that the marginal distribution of the effect size in $t$Meta follows the $t$ distribution, enabling that $t$Meta can simultaneously accommodate and detect outlying studies in a simple and adaptive manner. A simple and fast EM-type algorithm is developed for maximum likelihood estimation. Due to the mathematical tractability of the $t$ distribution, $t$Meta frees from numerical integration and allows for efficient optimization. Experiments on real data demonstrate that $t$Meta is compared favorably with related competitors in situations involving mild outliers. Moreover, in the presence of gross outliers, while related competitors may fail, $t$Meta continues to perform consistently and robustly.
title A novel robust meta-analysis model using the $t$ distribution for outlier accommodation and detection
topic Methodology
Machine Learning
62P10
I.2.6
url https://arxiv.org/abs/2406.04150