Dados Bibliográficos

AUTOR(ES) G. Ryan , D.P. Kennedy , Joan S. Tucker , Suzanne L. Wenzel , Daniela Golinelli , Helena D. Green
AFILIAÇÃO(ÕES) RAND Corporation, Santa Monica, CA, USA, RAND Corporation, Santa Monica, CA, USA, University of Southern California School of Social Work, Los Angeles, CA, USA, RAND Corporation, Santa Monica, CA, USA,
ANO 2010
TIPO Artigo
PERIÓDICO Field Methods
ISSN 1525-822X
E-ISSN 1552-3969
EDITORA SAGE Publications
DOI 10.1177/1525822x10370796
CITAÇÕES 9
ADICIONADO EM 2025-08-18
MD5 19776d94053cec0ff8729a44c36a3bc6

Resumo

Recently, researchers have been increasingly interested in collecting personal network data. Collecting this type of data is particularly burdensome on the respondents, who need to elicit the names of alters, answer questions about each alter (network composition), and evaluate the strength of possible relationships among the named alters (network structure). In line with the research of McCarty et al., the authors propose reducing respondent burden by randomly sampling a smaller set of alters from those originally elicited. Via simulation, the authors assess the estimation error they incur when measures of the network structure are computed on a random sample of alters and illustrate the trade-offs between reduction in respondent burden (measured with the amount of interview time saved) and total estimation error incurred. Researchers can use the provided trade-offs figure to make an informed decision regarding the number of alters to sample when they need to reduce respondent burden.

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