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Posts by Gerda Wyssen

As a Bernese speaking person I can confirm. It's sound is magical.

4 days ago 1 0 0 0
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Very excited to announce that the #BayesianWorkflow book by @statmodeling.bsky.social, @avehtari.bsky.social, @rmcelreath.bsky.social et al publishes in June! routledge.com/9780367490140 #RStats #DataScience #Bayesian

1 week ago 95 20 1 1

Happy to report that our survey study on the diversity with which people seem to experience their mental imagery is now published in RSOS :) doi.org/10.1098/rsos...
I posted a longer thread summarising the findings some months ago when we first put out the preprint: bsky.app/profile/samp...

3 weeks ago 64 19 2 1
R-Ladies branded graphic with purple-to-indigo gradient background. The classic R-Ladies logo (purple R in a gray oval) is centered at the top. Large white text reads "We Are R-Ladies." Below, three statistics are displayed: 200+ chapters, 60+ countries, 100k+ members. A tagline reads "Promoting gender diversity in the R community worldwide." The bottom bar shows rladies.org, #RLadiesIWD2026, and #IWD2026.

R-Ladies branded graphic with purple-to-indigo gradient background. The classic R-Ladies logo (purple R in a gray oval) is centered at the top. Large white text reads "We Are R-Ladies." Below, three statistics are displayed: 200+ chapters, 60+ countries, 100k+ members. A tagline reads "Promoting gender diversity in the R community worldwide." The bottom bar shows rladies.org, #RLadiesIWD2026, and #IWD2026.

We Are R-Ladies

200+ chapters. 60+ countries. 100,000+ members.

Since 2012, we've been promoting gender diversity in the R community — building a global network of R leaders, mentors, learners, and developers.

This is who we are.

rladies.org

#RLadiesIWD2026 #IWD2026

1 month ago 35 13 0 1

There’s no better song to play while waiting for a #brms model to finish fitting than “The Truth” by Handsome Boy Modeling School...
It perfectly captures the feeling of knowing the credible intervals are about to make me feel profound sadness.

1 month ago 0 1 0 0

So I gave this workshop today and I think it went pretty well. The best comment afterwards was "thanks for presenting statistics as someone who is not dead inside".

I will aim to write this up as a blog post or preprint when I get some time (after teaching finishes later this month).

1 month ago 86 5 0 0
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February 21, 1993, died on this day aged 105 years, Danish seismologist Inge Lehman.
She discovered that the Earth has a inner core announcing it in 1936 with the shortest title for a paper ever: P' - after the seismic discontinuity between core and mantle shown by the P-waves

2 months ago 180 58 3 3
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One approach to the age-period-cohort problem: Just don’t. Just to cause yourself more problems, you seek for something. But there is no need for you to seek anything. You have plenty, and you have just enough problems. Shunryū Suzuki in a 1971 talk A ...

New blog post about the age-period-cohort identification problem!

In which, for the first time ever, I ask "What's the mechanism?" and also suggest that sometimes you may actually *not* be interested in causal inference.

www.the100.ci/2026/02/13/o...

2 months ago 159 42 20 7

The dream dplyr update for my data cleaning pipelines 😍

filter_out() is going to be SO nice, no longer will I need to wrangle with annoying is.na() conditions

replace_values() and recode_values() also going to be a dream too, go read the post!

#rstats

2 months ago 31 9 1 2

Very useful ressource for teaching!

2 months ago 0 0 0 0
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APA PsycNet

Nice sunday morning reading on why we should consider generative models in #cogpsy :
"the use of descriptive summary statistics such as mean differences limits inferences about mechanisms underlying various patterns of behavior produced by a given task"
psycnet.apa.org/fulltext/202...

2 months ago 0 0 1 0
**Part 1: From Bayesian inference to Bayesian workflow**

1. Bayesian theory and Bayesian practice
2. Statistical modeling and workflow
3. Computational tools
4. Introduction to workflow: Modeling performance on a multiple choice exam

**Part 2: Statistical workflow**

5. Building statistical models
6. Using simulations to capture uncertainty
7. Prediction, generalization, and causal inference
8. Visualizing and checking fitted models
9. Comparing and improving models
10. Statistical inference and scientific inference

**Part 3: Computational workflow**

11. Fitting statistical models
12. Diagnosing and fixing problems with fitting
13. Approximate algorithms and approximate models
14. Simulation-based calibration checking
15. Statistical modeling as software development

**Part 1: From Bayesian inference to Bayesian workflow** 1. Bayesian theory and Bayesian practice 2. Statistical modeling and workflow 3. Computational tools 4. Introduction to workflow: Modeling performance on a multiple choice exam **Part 2: Statistical workflow** 5. Building statistical models 6. Using simulations to capture uncertainty 7. Prediction, generalization, and causal inference 8. Visualizing and checking fitted models 9. Comparing and improving models 10. Statistical inference and scientific inference **Part 3: Computational workflow** 11. Fitting statistical models 12. Diagnosing and fixing problems with fitting 13. Approximate algorithms and approximate models 14. Simulation-based calibration checking 15. Statistical modeling as software development

**4. Case studies**

16. Coding a series of models: Simulated data of movie ratings
17. Prior specification for regression models: Reanalysis of a sleep study
18. Predictive model checking and comparison: Clinical trial
19. Building up to a hierarchical model: Coronavirus testing
20. Using a fitted model for decision analysis: Mixture model for time series competition
21. Posterior predictive checking: Stochastic learning in dogs
22. Incremental development and testing: Black cat adoptions
23. Debugging a model: World Cup football
24. Leave-one-out cross validation model checking and comparison: Roaches
25. Model building and expansion: Golf putting
26. Model building with latent variables: Markov models for animal movement
27. Model building: Time-series decomposition for birthdays
28. Models for regression coefficients and variable selection: Student grades
29. Sampling problems with latent variables: No vehicles in the park
30. Challenge of multimodality: Differential equation for planetary motion
31. Simulation-based calibration checking in model development workflow

**Appendices**

A. Statistical and computational workflow for Bayesians and non-Bayesians
B. How to get the most out of Bayesian Data Analysis

**4. Case studies** 16. Coding a series of models: Simulated data of movie ratings 17. Prior specification for regression models: Reanalysis of a sleep study 18. Predictive model checking and comparison: Clinical trial 19. Building up to a hierarchical model: Coronavirus testing 20. Using a fitted model for decision analysis: Mixture model for time series competition 21. Posterior predictive checking: Stochastic learning in dogs 22. Incremental development and testing: Black cat adoptions 23. Debugging a model: World Cup football 24. Leave-one-out cross validation model checking and comparison: Roaches 25. Model building and expansion: Golf putting 26. Model building with latent variables: Markov models for animal movement 27. Model building: Time-series decomposition for birthdays 28. Models for regression coefficients and variable selection: Student grades 29. Sampling problems with latent variables: No vehicles in the park 30. Challenge of multimodality: Differential equation for planetary motion 31. Simulation-based calibration checking in model development workflow **Appendices** A. Statistical and computational workflow for Bayesians and non-Bayesians B. How to get the most out of Bayesian Data Analysis

Bayesian Workflow by
Andrew Gelman, Aki Vehtari, @rmcelreath.bsky.social with @danpsimpson.bsky.social, @charlesm993.bsky.social, @yulingy.bsky.social, Lauren Kennedy, Jonah Gabry, @paulbuerkner.com, @modrakm.bsky.social, @vianeylb.bsky.social

(in production, estimated copy-editing time 6 weeks)

2 months ago 160 31 3 4

With some trepidation, I'm putting this out into the world:
gershmanlab.com/textbook.html
It's a textbook called Computational Foundations of Cognitive Neuroscience, which I wrote for my class.

My hope is that this will be a living document, continuously improved as I get feedback.

3 months ago 591 238 16 10

I think the options help people to feel a bit more in control, a rare feeling as a novice in R. It could encourage people rather than let them stop using the package out of frustration (a internal counter is hard to figure out... its more of a "why did it stop working, I did the same as yesterday!")

3 months ago 0 0 0 0
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We Need to Talk About How We Talk About 'AI' | TechPolicy.Press We share a responsibility to create and use empowering metaphors rather than misleading language, write Emily M. Bender and Nanna Inie.

Anthropomorphizing language can be cute when applied to your favorite car, but it helps to muddy the discourse when applied to tech sold as "AI". New from me & @nannainie.bsky.social on @techpolicypress.bsky.social -- how to spot & revise away from anthropomorphizing language applied to "AI"

3 months ago 306 117 11 14
course schedule as a table. Available at the link in the post.

course schedule as a table. Available at the link in the post.

I'm teaching Statistical Rethinking again starting Jan 2026. This time with live lectures, divided into Beginner and Experienced sections. Will be a lot more work for me, but I hope much better for students.

I will record lectures & all will be found at this link: github.com/rmcelreath/s...

4 months ago 662 235 12 20

I always tell students they should do the *most appropriate analysis which they (still) understand* or to adapt the question they ask. And-most of the time-I try to listen to my advice as well. But this is not something which is rewarded by the current publishing system and AI surely doesn't help.

4 months ago 4 0 0 0

Working on my first review, #rstats people: what is the best R package for cleaning and deduplicating? Thanks for your help!

4 months ago 1 0 1 0
Screenshot from a flyer that reads: 
Public Lecture on Scientific Integrity
Dr. Elisabeth Bik
Errors and Misconduct in
Biomedical Research
Images
Science builds upon science. Even after peer-review and publication, science papers could still contain
images or other data of concern. If not addressed, papers containing incorrect or even falsified data
could lead to wasted time and money spent by other researchers trying to reproduce those results.
Several high-profile cases of science misconduct have been reported, but many more remain
undetected. Elisabeth Bik is an image forensics detective who left her paid job in industry to search for
and report biomedical articles that contain errors or data of concern. She has conducted a systematic
review of 20,000 papers across 40 journals and found that approximately 4% of these contained
inappropriately duplicated images. In her talk, she will present her work and show several types of
inappropriately duplicated images and other examples of research misconduct. In addition, she will
discuss how Artificial Intelligence can both help identify cases of misconduct and also create them, as
well as the growing threat of scientific paper mills.
On the occasion of the Dies academicus of the University of Bern on 6th December 2025,
Elisabeth Bik will receive an honorary doctorate from the Faculty of Science for her
groundbreaking work and untiring commitment to scientific integrity.
Friday 5th December 2025, 4pm
Aula, 2nd floor, Main Building, Hochschulstrasse 4.

Also see this link: https://www.vetsuisse.unibe.ch/e58/e1479157/e1624857/e1753357/Elisabeth_Bik_flyer_2025_A3_20251104_ger.pdf

Screenshot from a flyer that reads: Public Lecture on Scientific Integrity Dr. Elisabeth Bik Errors and Misconduct in Biomedical Research Images Science builds upon science. Even after peer-review and publication, science papers could still contain images or other data of concern. If not addressed, papers containing incorrect or even falsified data could lead to wasted time and money spent by other researchers trying to reproduce those results. Several high-profile cases of science misconduct have been reported, but many more remain undetected. Elisabeth Bik is an image forensics detective who left her paid job in industry to search for and report biomedical articles that contain errors or data of concern. She has conducted a systematic review of 20,000 papers across 40 journals and found that approximately 4% of these contained inappropriately duplicated images. In her talk, she will present her work and show several types of inappropriately duplicated images and other examples of research misconduct. In addition, she will discuss how Artificial Intelligence can both help identify cases of misconduct and also create them, as well as the growing threat of scientific paper mills. On the occasion of the Dies academicus of the University of Bern on 6th December 2025, Elisabeth Bik will receive an honorary doctorate from the Faculty of Science for her groundbreaking work and untiring commitment to scientific integrity. Friday 5th December 2025, 4pm Aula, 2nd floor, Main Building, Hochschulstrasse 4. Also see this link: https://www.vetsuisse.unibe.ch/e58/e1479157/e1624857/e1753357/Elisabeth_Bik_flyer_2025_A3_20251104_ger.pdf

This afternoon, I will give a public lecture about #ResearchIntegrity and #ImageForensics, at the University of Bern, CH, where I will receive an honorary doctorate from the Faculty of Science tomorrow.

Thank you for your support ❤️

4 months ago 183 21 21 5
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If you’re still hunting for color tools, I’m working on a more user-friendly version of meodai.github.io/poline/ keeping you huedrated

4 months ago 1931 396 46 8

All we hear about now is LLMs and AI but the most frequently clicked links in the RDM Weekly newsletter are about basic data management (naming files, documentation, organizing code, etc.). So if you feel behind by what you see posted, please don't. These foundational skills still matter.

6 months ago 71 9 1 1

For me this is a hard red line in psychological science. If you advocate the use of "silicon samples" you do not understand what it is we're supposed to be doing (and likely don't understand LLMs, or are a grifter). Luckily I haven't seen much of this among people I'd consider my peer group.

6 months ago 61 13 1 2

I agree. And it all comes down to how productivity is defined... As soon as quality matters, growth just takes time - we may be able to produce more pages but not more meaning.

6 months ago 1 0 1 0
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The best evidence Tylenol causes autism isn't great On Monday, RFK Jr announced Tylenol ‘causes’ autism referencing three studies as evidence. Let's dive in.

If you’ve been following the RFK Jr autism news, then you’ve probably heard that there’s a systematic review “proving” Tylenol causes autism.

Here’s my review of that paper👇🏼

open.substack.com/pub/epiellie...

6 months ago 574 170 43 13
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Whoa—my book is up for pre-order!

𝐌𝐨𝐝𝐞𝐥 𝐭𝐨 𝐌𝐞𝐚𝐧𝐢𝐧𝐠: 𝐇𝐨𝐰 𝐭𝐨 𝐈𝐧𝐭𝐞𝐫𝐩𝐫𝐞𝐭 𝐒𝐭𝐚𝐭 & 𝐌𝐋 𝐌𝐨𝐝𝐞𝐥𝐬 𝐢𝐧 #Rstats 𝐚𝐧𝐝 #PyData

The book presents an ultra-simple and powerful workflow to make sense of ± any model you fit

The web version will stay free forever and my proceeds go to charity.

tinyurl.com/4fk56fc8

7 months ago 293 88 11 4

Launched in 2023, Imaging Neuroscience is now firmly established, with full indexing (PubMed, etc.) and 700 papers to date.

We're very happy to announce that we are able to reduce the APC to $1400.

Huge thanks to all authors, reviewers, editorial team+board, and MIT Press.

7 months ago 233 80 2 6

While being pregnant I learned that I could actually feel quite well which food gives steep rises/falls. White rice for example was a surprise for me then but I learned that one really fast (blood level changes correlated highly with nausea).

7 months ago 2 0 1 0
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Welcome to the Psychology Department. It has been 0 days since we discovered something existentially horryfing about bugs in our/their code that lets us question our whole reality... ;-)

7 months ago 1 0 0 0
The Art of Data Visualization with ggplot2

A shout out for @nrennie.bsky.social fab book on data viz! nrennie.rbind.io/art-of-viz/

7 months ago 34 10 2 0

Is your preprint still pending moderation? See our recent post about how to make sure getting it approved is a smooth process:
bsky.app/profile/impr...

(pro tip: you can make edits even while it's in the moderation queue!)

7 months ago 2 3 0 0