slds-lmu / lecture_imlLinks
☆17Updated this week
Alternatives and similar repositories for lecture_iml
Users that are interested in lecture_iml are comparing it to the libraries listed below
Sorting:
- Testing hypotheses through statistical models opens a universe of new possibilities. Learn how to improve your daily work with this appro…☆84Updated 2 years ago
- ☆11Updated last year
- Repository for the book Machine Learning Learning Beyond Point Predictions: Uncertainty Quantification, by Rafael Izbicki.☆32Updated 5 months ago
- Explaining the output of machine learning models with more accurately estimated Shapley values☆171Updated last week
- Practical Guide to Applied Conformal Prediction, published by Packt☆193Updated last month
- This course is an overview of applied causal inference.☆52Updated 6 months ago
- A curated list of causal inference libraries, resources, and applications.☆1,075Updated 8 months ago
- Source for book "Feature Engineering A-Z"☆151Updated 2 weeks ago
- Tools for conformal inference in regression☆251Updated last year
- Explanatory Model Analysis. Explore, Explain and Examine Predictive Models☆196Updated last year
- Generalized Optimal Sparse Decision Trees☆59Updated 7 months ago
- Causal Inference Crash Course for Scientists - contains slides and Jupyter notebooks☆108Updated 3 weeks ago
- Power analysis and AB test analysis library☆47Updated last week
- DoubleML - Double Machine Learning in R☆156Updated 8 months ago
- ☆11Updated last month
- Code for the Book Causal Inference in Python☆356Updated last year
- This repository consolidates my teaching material for "Causal Machine Learning".☆260Updated last month
- A collection of visual guides to help applied scientists learn causal inference.☆289Updated 3 years ago
- Notebooks for Applied Causal Inference Powered by ML and AI☆140Updated 9 months ago
- ☆33Updated last year
- Machine Learning and Causal Inference taught by Brigham Frandsen☆218Updated 2 months ago
- All data sets required for the examples and exercises in the book "Forecasting: principles and practice" (3rd ed, 2020) by Rob J Hyndman …☆150Updated 3 months ago
- Extensive tutorials for learning how to build deep learning models for causal inference (HTE) using selection on observables in Tensorflo…☆340Updated last year
- Must-read papers and resources related to causal inference and machine (deep) learning☆744Updated 3 years ago
- Examples of conformal prediction. Manual calculation, and using the MAPIE package.☆22Updated 2 years ago
- Applied Time Series Analysis and Forecasting☆169Updated 2 years ago
- This is the repository for the Python library mlsynth☆54Updated this week
- Kentaro Matsuura (2022). Bayesian Statistical Modeling with Stan, R, and Python. Springer, Singapore.☆141Updated 10 months ago
- Resources for education in statistics and machine learning: from advanced undergraduate to research level☆103Updated last year
- Slides for a forecasting course based on "Forecasting: Principles and Practice"☆172Updated last year