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@easystats4u

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Official channel of {easystats}, a collection of #rstats 📦s with a unifying and consistent framework for statistical modeling, visualization, and reporting

worldwide
Joined January 2020
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@easystats4u
easystats
1 year
If you're on bluesky - we're too! https://t.co/uB8Qw8LNS9
@easystats4u
easystats
1 year
We're on bluesky now! Follow us under @easystats.bsky.social #easystats #rstats
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@Dom_Makowski
Dominique Makowski 🧙
6 months
🤯📈 TAKE YOUR STATS SKILLZ TO THE NEXT LEVEL WITH THIS #R PACKAGE 🔥The @easystats4u {modelbased} package (the successor of #ggeffects) is now published in @JOSS_TheOJ https://t.co/A897NTJMzZ Check it out for a demystification of marginal means, contrasts and effects #rlang
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@easystats4u
easystats
1 year
We're working on revisiting and homogenizing outputs from our #easystats packages. This includes consistent coloring of information/warnings/messages, but also: which information is useful in the output, which information should just go into the docs? WDYT?
@strengejacke
Daniel 🕹️
1 year
Which of the following information below model output (last paragraph, not that one about uncertainty intervals) do you find useful/helpful and think it's worth printing? It's printed once per session. Should some/all information moved into the docs, or kept in output? #easystats
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@easystats4u
easystats
1 year
{bayestestR} makes it now much easier to process inputs from packages {marginaleffects}, {emmeans}, or random variable types from posterior draws! #easystats #rstats
@mattansb
Mattan S. Ben-Shachar
1 year
New update to {bayestestR} expands support for a tidy workflow - working better with tidy inputs, `rvar`s, and post-modeling estimates, and generating tidy outputs! @easystats4u #rstats 🧵 https://t.co/i95bgVxfKI
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@easystats4u
easystats
1 year
We're on bluesky now! Follow us under @easystats.bsky.social #easystats #rstats
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@mattansb
Mattan S. Ben-Shachar
1 year
NEW to {bayestestR} dev version - support for #marginaleffects! Take it for a test drive: remotes::install_github("easystats/bayestestR") @easystats4u #rstats
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@easystats4u
easystats
1 year
A short update on this feature: - Improved documentation ( https://t.co/Oo9gRxj9KK) - Streamlined text output - Improved plots #rstats #easystats #DAG
@easystats4u
easystats
1 year
A new feature that *might* be added to our #rstats #easystats packages soon: checking models for correct adjustment by using DAGs! `check_dag()` (working title) makes it so easy to check the causal paths of your model and tells you how to address misspecifications!
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@easystats4u
easystats
1 year
A new feature that *might* be added to our #rstats #easystats packages soon: checking models for correct adjustment by using DAGs! `check_dag()` (working title) makes it so easy to check the causal paths of your model and tells you how to address misspecifications!
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@easystats4u
easystats
1 year
We improved the accuracy for many new model families and validated the results against examples from the paper that has proposed this method: https://t.co/b0S99cIWEp "r2_nakagawa()" is probably one of the most accurate functions to return R2 for mixed models in #rstats.
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@easystats4u
easystats
1 year
Are you working with mixed (multilevel) models in #rstats and wondering how to calculate R2? Grab the latest updates of our #easystats {performance} and {insight} packages from CRAN and try out "r2_nakagawa()" (or simply "r2()" for mixed model): https://t.co/WG374eDB43 /1
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easystats.github.io
Compute the marginal and conditional r-squared value for mixed effects models with complex random effects structures.
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@mattansb
Mattan S. Ben-Shachar
1 year
Today Tom Geva (from @bengurionu's Statisticas and Data Analysis program) presented the work he's done over the last few months for @easystats4u's correlation package 👏
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@mzloteanu
ᴅʀ ᴍɪʀᴄᴇᴀ ᴢʟᴏᴛᴇᴀɴᴜ 🍁 🍃
1 year
#statstab #129 Structural Models (EFA, CFA, SEM, ...) w/ {parameters} Thoughts: Lots of debate about #EFA vs #CFA; very confusing. Once I figure out what to use, this #R package seems to have lots of functionality. #rstats #factoranalysis #r #stats https://t.co/gDY41o2g6h
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@easystats4u
easystats
2 years
And another "small but great" piece in our #easystats collection...
@mattansb
Mattan S. Ben-Shachar
2 years
{effectsize} has been updated! This update includes the new repeated_measures_d() function that can compute not 1, not 2, but 6 (!) types of standardized mean differences for repeated measures. Try it out: https://t.co/UuD8QvqPQS #RStats
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@easystats4u
easystats
2 years
You may think it's just s small addition to one of our packages, but overall, the many small pieces form a marvelous "R Framework for Easy Statistical Modeling, Visualization, and Reporting" #easystats
@Dom_Makowski
Dominique Makowski 🧙
2 years
A long overdue little feature just dropped: report() now works with #BayesFactor objects. Use it to make your stats reports more reproducible and easy to read. #Rstats @easystats4u
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@easystats4u
easystats
2 years
🚨New publication in Behavior Research Methods!🚨 We review outlier detection methods and how to achieve them in R using #easystats' {performance} 📦 📄paper: https://t.co/4RIbfKfCEd 📃preprint: https://t.co/UMD3CEYgAG 💻performance: https://t.co/k8DkbIyG9W #rstats
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@easystats4u
easystats
2 years
read the case study how to arrive at the best model fit ( https://t.co/rUdEzG1DJv), using `check_model()` and other tools from the {performance} package. Want to use the latest features? Install the {easystats} package from CRAN, run `easystats::install_latest()` and have fun! /3
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@easystats4u
easystats
2 years
accurate tests using simulated residuals, and improved diagnostics plots (in particular, Q-Q plots). Check out the two vignettes how to check your model based on simulated residuals ( https://t.co/zHsoLiFjCR) and /2
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@easystats4u
easystats
2 years
Checking model assumptions is important, and doing so requires accurate tests and visuals appropriate for the given model. Hence, we revised our #easystats #rstats packages {see} and {performance}, which now provide methods to simulate residuals for complex models, to perform /1
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@jeffreymgirard
Jeffrey Girard
2 years
(5) "Transitioning to R for Multilevel Modeling" will run June 18-19 and eases the transition to R for those who already know mixed effects modeling (MLM/HLM/GLMM) in another software package. Uses {easystats} tools and donates to @easystats4u.
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@jeffreymgirard
Jeffrey Girard
2 years
(4) "Transitioning to R for Statistics" will run June 17-18 and ease the transition to R for those who already know correlations, group comparisons, and multiple regression in another software package. Uses {easystats} tools and donates to @easystats4u.
smart-workshops.com
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