Comments (2)
Can you run easystats::install_latest(force = TRUE)
and then retry? For me, everything is ok.
mm <- transform(mtcars, bigcyl = as.numeric(cyl > 2))
m <- glm(bigcyl ~ mpg, data = mm, family = binomial)
performance::check_model(m)
Session ino
sessioninfo::session_info()
#> ─ Session info ───────────────────────────────────────────────────────────────
#> setting value
#> version R version 4.3.3 (2024-02-29 ucrt)
#> os Windows 11 x64 (build 22631)
#> system x86_64, mingw32
#> ui RTerm
#> language (EN)
#> collate German_Germany.utf8
#> ctype German_Germany.utf8
#> tz Europe/Berlin
#> date 2024-03-25
#> pandoc 3.1.1 @ C:/Users/DL/AppData/Local/Pandoc/ (via rmarkdown)
#>
#> ─ Packages ───────────────────────────────────────────────────────────────────
#> package * version date (UTC) lib source
#> bayestestR 0.13.2 2024-03-12 [1] https://easystats.r-universe.dev (R 4.3.3)
#> benchmarkme 1.0.8 2022-06-12 [1] CRAN (R 4.3.0)
#> benchmarkmeData 1.0.4 2020-04-23 [1] CRAN (R 4.3.0)
#> bitops 1.0-7 2021-04-24 [1] CRAN (R 4.3.0)
#> boot 1.3-30 2024-02-26 [1] CRAN (R 4.3.3)
#> caTools 1.18.2 2021-03-28 [1] CRAN (R 4.3.0)
#> cli 3.6.2 2023-12-11 [1] CRAN (R 4.3.2)
#> codetools 0.2-19 2023-02-01 [2] CRAN (R 4.3.3)
#> colorspace 2.1-0 2023-01-23 [1] CRAN (R 4.3.0)
#> datawizard 0.9.1.8 2024-03-23 [1] https://easystats.r-universe.dev (R 4.3.3)
#> DEoptimR 1.1-3 2023-10-07 [1] CRAN (R 4.3.1)
#> DHARMa 0.4.6 2022-09-08 [1] CRAN (R 4.3.0)
#> digest 0.6.35 2024-03-11 [1] CRAN (R 4.3.3)
#> doParallel 1.0.17 2022-02-07 [1] CRAN (R 4.3.0)
#> dplyr 1.1.4 2023-11-17 [1] CRAN (R 4.3.2)
#> evaluate 0.23 2023-11-01 [1] CRAN (R 4.3.2)
#> fansi 1.0.6 2023-12-08 [1] CRAN (R 4.3.2)
#> farver 2.1.1 2022-07-06 [1] CRAN (R 4.3.0)
#> fastmap 1.1.1 2023-02-24 [1] CRAN (R 4.3.0)
#> foreach 1.5.2 2022-02-02 [1] CRAN (R 4.3.0)
#> fs 1.6.3 2023-07-20 [1] CRAN (R 4.3.1)
#> generics 0.1.3 2022-07-05 [1] CRAN (R 4.3.0)
#> ggplot2 3.5.0 2024-02-23 [1] CRAN (R 4.3.3)
#> ggrepel 0.9.5 2024-01-10 [1] CRAN (R 4.3.2)
#> glue 1.7.0 2024-01-09 [1] CRAN (R 4.3.2)
#> gtable 0.3.4 2023-08-21 [1] CRAN (R 4.3.1)
#> htmltools 0.5.7 2023-11-03 [1] CRAN (R 4.3.2)
#> httr 1.4.7 2023-08-15 [1] CRAN (R 4.3.1)
#> insight 0.19.10 2024-03-22 [1] https://easystats.r-universe.dev (R 4.3.3)
#> iterators 1.0.14 2022-02-05 [1] CRAN (R 4.3.0)
#> knitr 1.45 2023-10-30 [1] CRAN (R 4.3.1)
#> labeling 0.4.3 2023-08-29 [1] CRAN (R 4.3.1)
#> lattice 0.22-5 2023-10-24 [1] CRAN (R 4.3.3)
#> lifecycle 1.0.4 2023-11-07 [1] CRAN (R 4.3.2)
#> lme4 1.1-35.1 2023-11-05 [1] CRAN (R 4.3.2)
#> magrittr 2.0.3 2022-03-30 [1] CRAN (R 4.3.0)
#> MASS 7.3-60.0.1 2024-01-13 [1] CRAN (R 4.3.2)
#> Matrix 1.6-5 2024-01-11 [1] CRAN (R 4.3.2)
#> memuse 4.2-3 2023-01-24 [1] CRAN (R 4.3.0)
#> mgcv 1.9-1 2023-12-21 [1] CRAN (R 4.3.2)
#> minqa 1.2.6 2023-09-11 [1] CRAN (R 4.3.1)
#> munsell 0.5.0 2018-06-12 [1] CRAN (R 4.3.0)
#> nlme 3.1-164 2023-11-27 [1] CRAN (R 4.3.2)
#> nloptr 2.0.3 2022-05-26 [1] CRAN (R 4.3.0)
#> opdisDownsampling 0.8.3 2023-12-13 [1] CRAN (R 4.3.2)
#> patchwork 1.2.0 2024-01-08 [1] CRAN (R 4.3.2)
#> performance 0.11.0 2024-03-24 [1] https://easystats.r-universe.dev (R 4.3.3)
#> pillar 1.9.0 2023-03-22 [1] CRAN (R 4.3.0)
#> pkgconfig 2.0.3 2019-09-22 [1] CRAN (R 4.3.0)
#> pracma 2.4.4 2023-11-10 [1] CRAN (R 4.3.2)
#> purrr 1.0.2 2023-08-10 [1] CRAN (R 4.3.1)
#> qqconf 1.3.2 2023-04-14 [1] CRAN (R 4.3.0)
#> qqplotr 0.0.6 2023-01-25 [1] CRAN (R 4.3.0)
#> R.cache 0.16.0 2022-07-21 [1] CRAN (R 4.3.0)
#> R.methodsS3 1.8.2 2022-06-13 [1] CRAN (R 4.3.0)
#> R.oo 1.26.0 2024-01-24 [1] CRAN (R 4.3.2)
#> R.utils 2.12.3 2023-11-18 [1] CRAN (R 4.3.2)
#> R6 2.5.1 2021-08-19 [1] CRAN (R 4.3.0)
#> Rcpp 1.0.12 2024-01-09 [1] CRAN (R 4.3.2)
#> reprex 2.1.0 2024-01-11 [1] CRAN (R 4.3.2)
#> rlang 1.1.3 2024-01-10 [1] CRAN (R 4.3.2)
#> rmarkdown 2.26 2024-03-05 [1] CRAN (R 4.3.3)
#> robustbase 0.99-2 2024-01-27 [1] CRAN (R 4.3.2)
#> scales 1.3.0 2023-11-28 [1] CRAN (R 4.3.2)
#> see 0.8.3.1 2024-03-24 [1] https://easystats.r-universe.dev (R 4.3.3)
#> sessioninfo 1.2.2 2021-12-06 [1] CRAN (R 4.3.0)
#> styler 1.10.2 2023-08-29 [1] CRAN (R 4.3.1)
#> tibble 3.2.1 2023-03-20 [1] CRAN (R 4.3.0)
#> tidyselect 1.2.1 2024-03-11 [1] CRAN (R 4.3.3)
#> twosamples 2.0.1 2023-06-23 [1] CRAN (R 4.3.1)
#> utf8 1.2.4 2023-10-22 [1] CRAN (R 4.3.1)
#> vctrs 0.6.5 2023-12-01 [1] CRAN (R 4.3.2)
#> withr 3.0.0 2024-01-16 [1] CRAN (R 4.3.2)
#> xfun 0.42 2024-02-08 [1] CRAN (R 4.3.2)
#> yaml 2.3.8 2023-12-11 [1] CRAN (R 4.3.2)
#>
#> [1] C:/Users/DL/AppData/Local/R/win-library/4.3
#> [2] C:/Program Files/R/R-4.3.3/library
#>
#> ──────────────────────────────────────────────────────────────────────────────
Created on 2024-03-25 with reprex v2.1.0
from performance.
Must have been a transient version-mismatch thing. Thanks for checking.
from performance.
Related Issues (20)
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