BEGIN:VCALENDAR VERSION:2.0 PRODID:-//132.216.98.100//NONSGML kigkonsult.se iCalcreator 2.20.4// BEGIN:VEVENT UID:20250715T223314EDT-7153mwpc20@132.216.98.100 DTSTAMP:20250716T023314Z DESCRIPTION:Title: Model-assisted analyses of cluster-randomized experiment s\n\nAbstract:\n\nCluster-randomized experiments are widely used due to th eir logistical convenience and policy relevance. To analyze them properly\ , we must address the fact that the treatment is assigned at the cluster l evel instead of the individual level. Standard analytic strategies are reg ressions based on individual data\, cluster averages\, and cluster totals\ , which differ when the cluster sizes vary. These methods are often motiva ted by models with strong and unverifiable assumptions\, and the choice am ong them can be subjective. Without any outcome modeling assumption\, we e valuate these regression estimators and the associated robust standard err ors from a design-based perspective where only the treatment assignment it self is random and controlled by the experimenter. We demonstrate that reg ression based on cluster averages targets a weighted average treatment eff ect\, regression based on individual data is suboptimal in terms of effici ency\, and regression based on cluster totals is consistent and more effic ient with a large number of clusters. We highlight the critical role of co variates in improving estimation efficiency\, and illustrate the efficienc y gain via both simulation studies and data analysis. Moreover\, we show t hat the robust standard errors are convenient approximations to the true a symptotic standard errors under the design-based perspective. Our theory h olds even when the outcome models are misspecified\, so it is model-assist ed rather than model-based. We also extend the theory to a wider class of weighted average treatment effects.\n\n\n Speaker\n\n\nPeng Ding is an Asso ciate Professor in the Department of Statistics\, UC Berkeley. He obtained my Ph.D. from the Department of Statistics\, Harvard University in May 20 15\, and worked as a postdoctoral researcher in the Department of Epidemio logy\, Harvard T. H. Chan School of Public Health until December 2015. Pre viously\, he received his B.S. (Mathematics)\, B.A. (Economics)\, and M.S. (Statistics) from Peking University.\n\nhttps://mcgill.zoom.us/j/83436686 293?pwd=b0RmWmlXRXE3OWR6NlNIcWF5d0dJQT09\n\nMeeting ID: 834 3668 6293\n\nP asscode: 12345\n\n\n \n  \n  \n \n \n\n DTSTART:20211022T193000Z DTEND:20211022T203000Z SUMMARY:Peng Ding (UC Berkeley) URL:/mathstat/channels/event/peng-ding-uc-berkeley-334 313 END:VEVENT END:VCALENDAR