%0 Journal Article %T How to Deal with Missing Data and Galton¡¯s Problem in Cross-Cultural Survey Research: A Primer for R %A E. Anthon Eff %A Malcolm M. Dow %J Structure and Dynamics : e-Journal of Anthropological and Related Sciences %D 2009 %I University of California %X Multiple imputation (MI) has become the preferred method for dealing with missing data in surveyresearch. MI involves three steps: creating m multiply imputed complete datasets; estimatingmodels on each of the m datasets using any standard statistical procedure; combining the resultingmultiple estimates of each statistic of interest. This paper provides R programs for MI, and offerssome advice for employing MI with data drawn from the Standard Cross-Cultural Sample (SCCS).A second set of R programs combines estimates from the m imputed data sets, and also deals withthe problem of network autocorrelation effects, i.e., Galton¡¯s Problem or the non-independenceof cases, using two-stage instrumental variables (IV) regression. The objective of the paper isto provide programs, advice and explanations that will help researchers employing cross-culturalsurvey data, especially the SCCS, to deal with the twin problems of missing data and networkautocorrelation effects, using the open source statistical package R. The paper is intended tocomplement a recent suite of publications by Dow and Eff where both theoretical and empiricalissues underlying these two problems are discussed in detail. %U http://escholarship.org/uc/item/7cm1f10b