Package: endorse Version: 1.6.2 Date: 2022-5-2 Title: Bayesian Measurement Models for Analyzing Endorsement Experiments Authors@R: c(person("Yuki", "Shiraito", role = c("aut","cre"), email = "shiraito@umich.edu"), person("Kosuke", "Imai", role = "aut", email = "imai@harvard.edu"), person("Bryn", "Rosenfeld", role = "ctb", email = "brosenfe@usc.edu")) Author: Yuki Shiraito [aut, cre], Kosuke Imai [aut], Bryn Rosenfeld [ctb] Maintainer: Yuki Shiraito Depends: coda, utils Description: Fit the hierarchical and non-hierarchical Bayesian measurement models proposed by Bullock, Imai, and Shapiro (2011) to analyze endorsement experiments. Endorsement experiments are a survey methodology for eliciting truthful responses to sensitive questions. This methodology is helpful when measuring support for socially sensitive political actors such as militant groups. The model is fitted with a Markov chain Monte Carlo algorithm and produces the output containing draws from the posterior distribution. LazyLoad: yes LazyData: yes License: GPL (>=2) URL: https://github.com/SensitiveQuestions/endorse/ Repository: https://sensitivequestions.r-universe.dev Date/Publication: 2022-05-02 06:51:10 UTC RemoteUrl: https://github.com/sensitivequestions/endorse RemoteRef: HEAD RemoteSha: 6ce3bd0749e26b852b90b4e93f87b4c8b5cb037b NeedsCompilation: yes Packaged: 2026-07-02 08:40:00 UTC; root