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Presented By: Department of Statistics

Statistics Department Seminar Series: Ian Laga, PhD Candidate, Department of Statistics, Penn State University

"Everyone Counts: A Correlated Network Scale-up Model to Understand Key Populations"

Ian Laga Ian Laga
Ian Laga
Abstract: Key populations are populations that due to higher-risk behaviors, are more likely to live with and transmit infectious diseases like HIV. These populations include female sex workers, men who have sex with men, and drug users. In order to implement efficient HIV and infectious disease prevention programs, organizations need to understand both how large these key populations are and where they live. Aggregated relational data (ARD), formed from "How many X's do you know?" questions, is a powerful tool for learning important network characters with incomplete network data. Compared to traditional survey methods, ARD is attractive as it does not require a sample from the target population and does not ask respondents to self-reveal their own status. This is helpful for studying key populations who may be hesitant to reveal their status. The Kiev International Institute of Sociology (KIIS) collected ARD to estimate the size of HIV-related subpopulations in Ukraine. To analyze this data, we propose a new ARD model which incorporates respondent and subpopulation covariates in a regression framework and adds a correlation structure to the responses. The resulting size estimates of those most-at-risk of HIV infection can improve the HIV response efficiency in Ukraine. Additionally, the proposed model allows us to better understand two network features: 1. What characteristics affect who respondents know, and 2. How is knowing someone from one group related to knowing people from other groups. These features can allow researchers to better recruit marginalized individuals into the prevention and treatment programs.

https://ilaga.github.io/
Ian Laga Ian Laga
Ian Laga

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