Package: mixedsubjects Title: Causal Inference in Experiments with Mixed-Subjects Designs Version: 1.0.0 Authors@R: c( person("Austin", "van Loon", email = "avanloon@mit.edu", role = c("aut")), person("Klint", "Kanopka", email = "klint.kanopka@nyu.edu", role = c("aut", "cre")), person("Yuan", "Huang", email = "yh2741@nyu.edu", role = "ctb") ) Description: Implements seven estimators for average treatment effect (ATE) estimation in mixed-subjects designs (MSDs), where human subjects data is augmented with predictions from large language models (LLMs). Includes Difference-in-Means, GREG, PPI++, Doubly-Tuned, Difference-in-Predictions (DiP), DiP++, and D-T DiP estimators. Provides point estimates, variance estimation via delta-method or bootstrap, and optimal design selection for budget allocation between human observations and LLM predictions. License: MIT + file LICENSE Encoding: UTF-8 RoxygenNote: 7.3.3 Imports: stats Suggests: knitr, rmarkdown, testthat (>= 3.0.0) VignetteBuilder: knitr Config/testthat/edition: 3 URL: https://klintkanopka.com/mixedsubjects/ BugReports: https://github.com/klintkanopka/mixedsubjects/issues NeedsCompilation: no Packaged: 2026-07-02 21:35:12 UTC; root Author: Austin van Loon [aut], Klint Kanopka [aut, cre], Yuan Huang [ctb] Maintainer: Klint Kanopka Repository: https://cran.r-universe.dev Date/Publication: 2026-07-02 18:30:02 UTC RemoteUrl: https://github.com/cran/mixedsubjects RemoteRef: HEAD RemoteSha: 144fa387a327efc928a1bc8159fd7cd1c55dddc6