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   <subfield code="a">Bilon, Xavier Javines</subfield>
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   <subfield code="a">Bootstrap-based parameter estimation for networked hard-to-reach populations under respondent-driven sampling</subfield>
   <subfield code="c">Xavier Javines Bilon.</subfield>
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   <subfield code="a">Quezon City</subfield>
   <subfield code="b">University of the Philippines Diliman</subfield>
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   <subfield code="a">Includes UPSS OGS FORM 2c (STAT 300 FINAL DEFENSE).</subfield>
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   <subfield code="c">University of the Philippines Diliman</subfield>
   <subfield code="d">2022</subfield>
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   <subfield code="a">Hard-to-reach populations present a methodological challenge in obtaining samples and in drawing inference about population characteristics from the samples obtained. Such challenge follows from the undefined population size and boundaries and the involvement of stigmatized or illegal behavior in one's membership in the population that limit the usefulness of standard sampling methods and the corresponding inference procedures in the types of population. Respondent-driven sampling (RDS) which views the sample as a subset of the social network under study can mitigate these issues. However, despite the practicality of RDS procedure, and while the current estimation procedures are simple and analytically tractable, they depend on several strong assumptions. In this study, we proposed employing bootstrap-based procedures --- nonparametric bootstrapping for homogenous means, and model-based and residual-based bootstrapping for heterogenous means --- in estimating parameters of networked hard-to-reach populations. Simulation studies show that, in estimating homogenous means, the proposed procedure --- nonparametric bootstrapping estimation --- was not only asymptotically unbiased, but also performed better than the existing procedure --- the RDS II estimation (Volz &amp; Heckathorn, 2008) --- across most network configurations and parameter values considered. Additionally, the proposed RDS estimation procedure for homogenous means was robust against the presence of few and small or average-sized clusters. On the other hand, in estimating heterogenous means, the three RDS estimation procedures --- least squares estimation (LSE), and model-based and residual-based bootstrap estimation --- performed similarly across most different network configurations and parameter values considered. although, in some cases, the model-based or residual-based bootstrap procedure appears to have performed better than the others. Results also show that, in constructing confidence intervals, the residual-based bootstrap estimation was more robust against the presence of clusters than the other two procedures. Furthermore, simulation studies conducted demonstrate that the bootstrap-based procedures performed well when not too few and not too many seeds (e.g., 4-10 initial participants) and recruits (e.g., five recruits) were used in obtaining the respondents-driven samples. Lastly, the proposed estimation procedures were used on actual RDS samples from  hard-to-reach populations (i.e., people who inject drugs in a region in ESTONIA and SYRIAN activist-refugees in Jordan) to illustrate the applicability  and advantages of our approach. For both the homogenous and heterogenous means, point estimates obtained using the proposed procedures and their corresponding estimated standard errors supported the results of the simulation studies.</subfield>
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