rmcelreath / stat_rethinking_2026Links
Statistical Rethinking Course 2026
☆342Updated this week
Alternatives and similar repositories for stat_rethinking_2026
Users that are interested in stat_rethinking_2026 are comparing it to the libraries listed below
Sorting:
- ☆173Updated 10 months ago
- Building a Survival Model in Stan.☆57Updated 2 years ago
- One day course on causal inference, MPI-EVA 9 September 2021☆251Updated 4 years ago
- Introductory guide to the art and science of data visualisation. Insights, advice, and examples (with code) to make data outputs more rea…☆164Updated last year
- 📦 R package for Supplemental Materials for the Bayes Rules! Book☆73Updated last week
- Kentaro Matsuura (2022). Bayesian Statistical Modeling with Stan, R, and Python. Springer, Singapore.☆142Updated 11 months ago
- ☆176Updated last year
- Spells for everyday living, also a book -- Models Demystified -- now available!☆84Updated 4 months ago
- Markov chain Monte Carlo general, and Hamiltonian Monte Carlo specific, diagnostics for Stan☆89Updated 2 weeks ago
- Working through "Regression and other stories," one chapter at a time☆57Updated 2 years ago
- Introduction to Bayesian statistics☆115Updated 2 months ago
- Bayesian Gaussian Graphical Models☆60Updated last month
- Introductory tutorial on the Stan language☆22Updated last year
- Inference case studies in knitr☆171Updated 3 years ago
- Translating ML into Bayes, one line at a time☆82Updated this week
- Regression and Other Stories - Tidyverse Examples☆106Updated 4 years ago
- Repository for the textbook 'Improving Your Statistical Inferences' by Daniel Lakens☆299Updated 3 months ago
- ☆58Updated 2 years ago
- The ebook version lives here: https://solomon.quarto.pub/dbda2☆153Updated 3 weeks ago
- Run Stan models in the browser☆54Updated last week
- ☆91Updated 2 weeks ago
- worked R examples☆120Updated last year
- Lecture notes and python code to replicate models built throughout the course of Richard Mcelreath's 2023 Lecture Series 'Statistical Ret…☆75Updated 2 years ago
- 🎯 Targeted Learning in R: A Causal Data Science Handbook☆60Updated last year
- ☆79Updated 3 months ago
- The ebook lives here:☆136Updated last week
- ☆81Updated 2 years ago
- Case studies on model assessment, model selection and inference after model selection☆170Updated 2 years ago
- Telling Stories with Data☆142Updated 7 months ago
- Easily combine predictions from multiple Bayesian models using techniques including (pseudo) Bayesian model averaging, hierarchical stack…☆37Updated last month