BEGIN:VCALENDAR VERSION:2.0 PRODID:-//132.216.98.100//NONSGML kigkonsult.se iCalcreator 2.20.4// BEGIN:VEVENT UID:20250513T132707EDT-9908V3ZeFC@132.216.98.100 DTSTAMP:20250513T172707Z DESCRIPTION:Erin Evelyn Gabriel\, PhD\n\nAssociate Professor in Biostatisti cs\, University of Copenhagen\n\nWhere: Hybrid Event | 2001 ɬÀï·¬ College \, Room 1140\; Zoom\n\nAbstract\n\nA causal query (estimand) will commonly not be identifiable from observed data without the assumption of no unmea sured confounders\, in which case no estimator of the query can be contriv ed without further assumptions or additional measured variables. However\, it may still be possible to derive bounds on the query in terms of the di stribution of observed variables. Bounds\, numeric or symbolic\, can often be more valuable than a statistical estimator derived under implausible a ssumptions. Symbolic bounds\, however\, provide a measure of uncertainty a nd information loss due to the lack of an identifiable estimand even in th e absence of data. We develop and describe a general approach for the comp utation of symbolic bounds and characterize a class of settings in which o ur method is guaranteed to provide tight valid bounds. This expands the kn own settings in which tight causal bounds are solutions to linear programs to include multicategorical variables\, cross-world nested counterfactual s queries\, and missing data problems. We demonstrate the usefulness of sy mbolic bounds and the estimates from them both conceptually for the planni ng of studies and in several real data settings\, including the Danish Mas k Study.\n\nSpeaker Bio\n\nErin is an Associate Professor of Biostatistics at the Section of Biostatistics in the Department of Public Health at the University of Copenhagen. Her research focuses on methods for causal infe rence and surrogate evaluation\, and design\, testing\, and estimation in emulated and randomized clinical trials. Although her primary area of appl ication is infectious diseases\, she has recently started working more in cancer and chronic illness. Erin is currently funded by the Novo Nordisk F oundation. Website: https://eegabriel.github.io/\n\n \n DTSTART:20230125T203000Z DTEND:20230125T213000Z SUMMARY:Derivation and Usefulness of Tight Symbolic Causal Bounds URL:/epi-biostat-occh/channels/event/derivation-and-us efulness-tight-symbolic-causal-bounds-344477 END:VEVENT END:VCALENDAR