Uplift modeling and causal inference with machine learning algorithms
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Updated
Apr 25, 2025 - Python
Uplift modeling and causal inference with machine learning algorithms
❗ uplift modeling in scikit-learn style in python 🐍
YLearn, a pun of "learn why", is a python package for causal inference
CausalLift: Python package for causality-based Uplift Modeling in real-world business
train models in pytorch, Learn to Rank, Collaborative Filter, Heterogeneous Treatment Effect, Uplift Modeling, etc
Uplift modeling and evaluation library. Actively maintained pypi version.
Machine learning based causal inference/uplift in Python
A flexible python package for cost-aware uplift modelling.
My collection of causal inference algorithms built on top of accessible, simple, out-of-the-box ML methods, aimed at being explainable and useful in the business context
A Python Framework for Automatically Evaluating various Uplift Modeling Algorithms to Estimate Individual Treatment Effects
Causal Simulations for Uplift Modeling
Customer targeting model to optimize promotion targeting, on simulated data from Starbucks. (work in progress)
Uplift Modeling to identify the pursuable group of users from all the users in order to send them encouragement (in terms of coupons or other offers) to buy the product more without spending resources to convert those users who are not willing or interested to buy the product even after encouragement.
Fast multiple choice knapsack, optimised for settings with unequal patient treatment eligibilities
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