BEGIN:VCALENDAR VERSION:2.0 PRODID:-//132.216.98.100//NONSGML kigkonsult.se iCalcreator 2.20.4// BEGIN:VEVENT UID:20251005T194233EDT-7013mBN8v9@132.216.98.100 DTSTAMP:20251005T234233Z DESCRIPTION:Justin Weltz\, PhD\n\nIs an Emerging Political Economies and Ap plied Complexity Postdoctoral Fellow at the Santa Fe Institute\, Duke Univ ersity\n\nNOTE: Meet & Greet Justin Weltz from 3-3:30pm in Room 1140\n\nWH EN: Wednesday\, October 8\, 2025\, from 3:30 to 4:30 p.m.\n WHERE: Hybrid | 2001 ɬÀï·¬ College Avenue\, Rm 1140\; Zoom\n NOTE: Justin Weltz will be p resenting in-person at SPGH\n\nAbstract\n\nRespondent-driven sampling (RDS ) is widely used to study hidden or hard-to-reach populations by incentivi zing study participants to recruit their social connections. The success a nd efficiency of RDS can depend critically on the nature of the incentives \, including their number\, value\, call to action\, etc. Standard RDS use s an incentive structure that is set a priori and held fixed throughout th e study. Thus\, it does not make use of accumulating information on which incentives are effective and for whom. We propose a reinforcement learning (RL) based adaptive RDS study design in which the incentives are tailored over time to maximize cumulative utility during the study. We show that t hese designs are more efficient\, cost-effective\, and can generate new in sights into the social structure of hidden populations. In addition\, we d evelop methods for valid post-study inference which are non-trivial due to the adaptive sampling induced by RL as well as the complex dependencies a mong subjects due to latent (unobserved) social network structure. We prov ide asymptotic regret bounds and illustrate its finite sample behavior thr ough a suite of simulation experiments.\n\nSpeaker Bio\n\nI am an Emerging Political Economies and Applied Complexity Postdoctoral Fellow at the San ta Fe Institute\, where I work with Matt Jackson\, Eleanor Power\, and Fio na Steele on statistical inference for complex network sampling techniques . I recently completed my Ph.D. at Duke University advised by Alexander Vo lfovsky and Eric Laber. My dissertation research focused on creating metho ds for the study and assistance of hard-to-reach populations.\n\nWebsite: justinweltz.com\n\n \n DTSTART:20251008T193000Z DTEND:20251008T203000Z SUMMARY:Reinforcement Learning for Respondent-Driven Sampling URL:/epi-biostat-occh/channels/event/reinforcement-lea rning-respondent-driven-sampling-368109 END:VEVENT END:VCALENDAR