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数学学院、所2020年系列学术活动(第84场):夏寅教授 复旦大学

发表于: 2020-06-22   点击: 

报告题目:Integrative High Dimensional Inference with Heterogeneity under Data Sharing Constraints

报 告 人:夏寅教授 复旦大学

报告时间:2020年6月28日 16:00-17:00

报告地点:腾讯会议 ID:797 141 422

或点击链接直接加入会议:

https://meeting.tencent.com/s/dVUDrHM49uRf

校内联系人:朱复康 fzhu@jlu.edu.cn


报告摘要:

Evidence based decision making often relies on meta-analyzing multiple studies, which enables more precise estimation and investigation of generalizability. Integrative analysis of multiple heterogeneous studies is, however, highly challenging in the high dimensional setting. The challenge is even more pronounced when the individual level data cannot be shared across studies due to privacy concerns. Under ultra high dimensional sparse regression models and the constraint of not sharing individual data across studies, we propose in this talk a novel integrative estimation procedure by Aggregating and Debiasing Local Estimators (ADeLE). The ADeLE procedure protects individual data through summary-statistics-based integrating procedure, accommodates between study heterogeneity in both the covariate distribution and model parameters, and attains consistent variable selection. Furthermore, the prediction and estimation errors incurred by aggregating derived data is negligible compared to the statistical minimax rate. In addition, the ADeLE estimator is shown to be asymptotically equivalent in prediction and estimation to the ideal estimator obtained by sharing all data. Furthermore, we propose a novel data shielding integrative large-scale testing approach to signal detection by allowing between study heterogeneity and not requiring sharing of individual level data. Assuming the underlying high dimensional regression models of the data differ across studies yet share similar support, the proposed method incorporates proper integrative estimation and debiasing procedures to construct test statistics for the overall effects of specific covariates. We also develop a multiple testing procedure to identify significant effects while controlling the false discovery rate and false discovery proportion. The new method is applied to a real example on detecting interaction effect of the genetic variants for statins and obesity on the risk for type II diabetes.


报告人简介:


夏寅,复旦大学管理学院教授、博士生导师,2013年博士毕业于宾夕法尼亚大学沃顿商学院,研究方向包括高维统计推断、大范围检验及应用等,在 JASA、AOS、JRSSB、Biometrika、Biometrics、Biostatistics、Statistica Sinica等期刊上发表十多篇论文。