Causal Inference and Machine Learning in Practice with EconML and CausalML: Industrial Use Cases at Microsoft, TripAdvisor, Uber

Overview

Causal Inference and Machine Learning in Practice with EconML and CausalML: Industrial Use Cases at Microsoft, TripAdvisor, Uber

Schedule

Time

  • 4:00 AM - 7:00 AM August 15, 2021 SGT
  • 4:00 PM - 7:00 PM August 14, 2021 EDT
  • 1:00 PM - 4:00 PM August 14, 2021 PDT

Live Zoom Link

To be shared within the KDD 21 Virtual Platform during the conference.

Abstract

In recent years, both academic research and industry applications see an increased effort in using machine learning methods to measure granular causal effects and design optimal policies based on these causal estimates. Open source packages such as CausalML and EconML provide a unified interface for applied researchers and industry practitioners with a variety of machine learning methods for causal inference. The tutorial will cover the topics including conditional treatment effect estimators by meta-learners and tree-based algorithms, model validations and sensitivity analysis, optimization algorithms including policy leaner and cost optimization. In addition, the tutorial will demonstrate the production of these algorithms in industry use cases.

Target Audience and Prerequisites for the Tutorial

Anyone who is interested in causal inference and machine learning, especially economists/statisticians/data scientists who want to learn how to combine causal inference and machine learning with real industry use cases incorporated in large scaled machine learning systems at companies such as Microsoft, TripAdvisor and Uber. The tutorial assumes some basic knowledge in statistical methods, machine learning algorithms and the Python programming language.

Outline

Title Duration Slides Code
Introduction to Causal Inference 20 minutes Slides
Case Studies Part 1 by CausalML
Introduction to CausalML 15 minutes Slides
Case Study #1: Causal Impact Analysis with Observational Data: CeViChE at Uber 30 minutes Slides Notebook
Case Study #2: Targeting Optimization: Bidder at Uber 30 minutes Slides Notebook
Case Studies Part 2 by EconML
Introduction to EconML 15 minutes Slides Notebook
Case Study #3: Customer Segmentation at TripAdvisor with Recommendation A/B Tests 30 minutes Slides Notebook
Case Study #4: Long-Term Return-on-Investment at Microsoft via Short-Term Proxies 30 minutes Slides Notebook

Presentation Abstracts

Introduction to Causal Inference

We will give an overview of basic concepts in causal inference. A quick refresher on the main tools and terminology of causal inference: correlation vs causation, average, conditional, and individual treatment effects, causal inference via randomization, Causal inference using instrumental variables, Causal inference via unconfoundedness.

Introduction to CasualML

We will provide an overview of CausalML, an open source Python package that provides a suite of uplift modeling and causal inference methods using machine learning algorithms based on recent research. We will introduce the main components of CausalML: (1) inference with causal machine learning algorithms (e.g. meta-learners, uplift trees, CEVAE, dragonnet), (2) validation/analysis methods (e.g. synthetic data generation, AUUC, sensitivity analysis, interpretability), (3) optimization methods (e.g. policy optimization, value optimization, unit selection).

Case #1: Causal Impact Analysis with Observational Data at Uber

As an introductory case study for using causal inference, we will cover the use case of understanding the causal impact from observational data in the context of cross sell at Uber. We emphasize that simple comparisons of users who make cross purchase or not will produce biased estimates and that can be demonstrated in the causal inference framework. We show the use of different causal estimation methodologies through propensity score matching and meta learners to estimate the causal impact. In addition, we will use sensitivity analysis to show the robustness of the estimates.

Case #2: Targeting Optimization: Bidder at Uber

We will introduce the audience selection method with uplift modeling in online RTB, which aims to estimate heterogeneous treatment effects for advertising. It has been studied to provide a superior return on investment by selecting the most incremental users for a specific campaign. To examine the effectiveness of uplift modeling in the context of real-time bidding, we conducted the comparative analysis of four different meta-learners on real campaign data. We adapted an explore-exploit set up for offline training and online evaluation. We will also introduce how we use Targeted Maximum Likelihood Estimation (TMLE) based Average Treatment Effect (ATE) as ground truth for evaluation.

Introduction to EconML

We will provide an overview of recent methodologies that combine machine learning with causal inference and the significant statistical power that machine learning brings to causal inference estimation methods. We will outline the structure and capabilities of the EconML package and describe some of the key causal machine learning methodologies that are implemented (e.g. double machine learning, causal forests, deepiv, doubly robust learning, dynamic double machine learning). We will also outline approaches to confidence interval construction (e.g. bootstrap, bootstrap-of-little-bags, debiased lasso), interpretability (shap values, tree interpreters) and policy learning (doubly robust policy learning).

Case #3: Customer Segmentation at TripAdvisor with Recommendation A/B Tests

We examine the scenario in which we wish to learn heterogeneous treatment effects (CATE), but observational data is biased and direct experimental data (e.g. A/B test) is plagued by imperfect compliance. In this setup, TripAdvisor would like to know whether joining a membership program compels users to spend more time engaging with the website and purchasing more products. The usual approach, a direct A/B test, is infeasible: the website cannot force users to comply and become members, hence the imperfect compliance that can bias calculations. The solution is to use an alternative A/B test that was originally designed to measure whether an easier sign-up process would promote user membership. This A/B test plays the role of an instrument that nudges users to sign up for membership. We introduce EconML’s IntentToTreatDRIV estimator which can leverage this repurposed A/B test to both learn the effect of membership on user engagement and understand how these effects vary with customer features. We show how this novel methodology led to extracting key business insights and helped TripAdvisor understand and differentiate how customers engage with their platform.

Case #4: Long-Term Return-on-Investment at Microsoft via Short-Term Proxies

In this case study, we talk about using observational data to measure the long term Return-on-Investment of some types of dollar value investments Microsoft gives to the enterprise customers. There are many challenges for this setting, for instance, we don't have enough period of data to identify a long term ROI, we should control the effect coming from the future investment and we are in a high dimensional data space. We then propose a surrogate based approach assuming the long-term effect is channeled through some short-term proxies and employ a dynamic adjustment to the surrogate model in order to get rid of the effect from future investment, finally apply double machine learning (DML) techniques to estimate the ROI. We apply this methodology to answer the questions like what is the average long-run ROI on each type of the investment? What types of customers have a higher ROI to a specific investment? And how different incentives impact the different solution areas. Finally we will showcase how you could use EconML to solve similar problems by only a few lines of code.

Tutors

Presenters

  • Jing Pan, Uber, CausalML
  • Yifeng Wu, Uber, CausalML
  • Huigang Chen, Facebook, CausalML
  • Totte Harinen, Toyota Research Institute, CausalML
  • Paul Lo, Uber, CausalML
  • Greg Lewis, Microsoft Research, EconML
  • Vasilis Syrgkanis, Microsoft Research, EconML
  • Miruna Oprescu, Microsoft Research, EconML
  • Maggie Hei, Microsoft Research, EconML

Contributors

  • Jeong-Yoon Lee, Netflix, CausalML
  • Zhenyu Zhao, Tencent, CausalML
  • Keith Battocchi, Microsoft Research, EconML
  • Eleanor Dillon, Microsoft Research, EconML

References

  1. Künzel, Sören R., et al. "Metalearners for estimating heterogeneous treatment effects using machine learning." Proceedings of the national academy of sciences 116.10 (2019): 4156-4165. (paper)
  2. Chernozhukov, Victor, et al. "Double/debiased/neyman machine learning of treatment effects." American Economic Review 107.5 (2017): 261-65. (paper)
  3. Nie, Xinkun, and Stefan Wager. "Quasi-oracle estimation of heterogeneous treatment effects." arXiv preprint arXiv:1712.04912 (2017) (paper)
  4. Tso, Fung Po, et al. "DragonNet: a robust mobile internet service system for long-distance trains." IEEE transactions on mobile computing 12.11 (2013): 2206-2218. (paper)
  5. Louizos, Christos, et al. "Causal effect inference with deep latent-variable models." arXiv preprint arXiv:1705.08821 (2017) (paper)
  6. Wager, Stefan, and Susan Athey. "Estimation and inference of heterogeneous treatment effects using random forests." Journal of the American Statistical Association 113.523 (2018): 1228-1242. (paper)
  7. Oprescu, Miruna, et al. "EconML: A Machine Learning Library for Estimating Heterogeneous Treatment Effects." (repo)
  8. Chen, Huigang, et al. "Causalml: Python package for causal machine learning." arXiv preprint arXiv:2002.11631 (2020) (repo)
  9. Yao, Liuyi, et al. "A survey on causal inference." arXiv preprint arXiv:2002.02770 (2020). (paper)
  10. Goldenberg, Dmitri, et al. "Personalization in Practice: Methods and Applications." Proceedings of the 14th ACM International Conference on Web Search and Data Mining. 2021 (paper)
  11. Blackwell, Matthew. "A selection bias approach to sensitivity analysis for causal effects." Political Analysis 22.2 (2014): 169-182. (paper)
  12. Athey, Susan, and Stefan Wager. "Efficient policy learning." arXiv preprint arXiv:1702.02896 (2017). (paper)
  13. Sharma, Amit, and Emre Kiciman. "Causal Inference and Counterfactual Reasoning." Proceedings of the 7th ACM IKDD CoDS and 25th COMAD. 2020. 369-370. (paper)
  14. Li, Ang, and Judea Pearl. "Unit selection based on counterfactual logic." Proceedings of the Twenty-Eighth International Joint Conference on Artificial Intelligence. 2019 (paper)
  15. Kennedy, Edward H. "Optimal doubly robust estimation of heterogeneous causal effects." arXiv preprint arXiv:2004.14497 (2020) (paper)
  16. Gruber, Susan, and Mark J. Van Der Laan. "Targeted maximum likelihood estimation: A gentle introduction." (2009) (paper)
  17. D. Foster, V. Syrgkanis. Orthogonal Statistical Learning. Proceedings of the 32nd Annual Conference on Learning Theory (COLT), 2019 (paper)
  18. V. Syrgkanis, V. Lei, M. Oprescu, M. Hei, K. Battocchi, G. Lewis. Machine Learning Estimation of Heterogeneous Treatment Effects with Instruments. Proceedings of the 33rd Conference on Neural Information Processing Systems (NeurIPS), 2019 (paper)
  19. M. Oprescu, V. Syrgkanis and Z. S. Wu. Orthogonal Random Forest for Causal Inference. Proceedings of the 36th International Conference on Machine Learning (ICML), 2019 (paper)
  20. Jason Hartford, Greg Lewis, Kevin Leyton-Brown, and Matt Taddy. Deep IV: A flexible approach for counterfactual prediction. Proceedings of the 34th International Conference on Machine Learning, ICML'17, 2017 (paper)
  21. Battocchi, K., Dillon, E., Hei, M., Lewis, G., Oprescu, M., & Syrgkanis, V. (2021). Estimating the Long-Term Effects of Novel Treatments. arXiv preprint arXiv:2103.08390. (paper)
  22. Lewis, G., & Syrgkanis, V. (2020). Double/Debiased Machine Learning for Dynamic Treatment Effects. arXiv preprint arXiv:2002.07285. (paper)
Owner
EconML/CausalML KDD 2021 Tutorial
Causal Inference and Machine Learning in Practice with EconML and CausalML
EconML/CausalML KDD 2021 Tutorial
scikit-multimodallearn is a Python package implementing algorithms multimodal data.

scikit-multimodallearn is a Python package implementing algorithms multimodal data. It is compatible with scikit-learn, a popul

12 Jun 29, 2022
Automated Time Series Forecasting

AutoTS AutoTS is a time series package for Python designed for rapidly deploying high-accuracy forecasts at scale. There are dozens of forecasting mod

Colin Catlin 652 Jan 03, 2023
Python package for causal inference using Bayesian structural time-series models.

Python Causal Impact Causal inference using Bayesian structural time-series models. This package aims at defining a python equivalent of the R CausalI

Thomas Cassou 219 Dec 11, 2022
Xeasy-ml is a packaged machine learning framework.

xeasy-ml 1. What is xeasy-ml Xeasy-ml is a packaged machine learning framework. It allows a beginner to quickly build a machine learning model and use

9 Mar 14, 2022
Merlion: A Machine Learning Framework for Time Series Intelligence

Merlion is a Python library for time series intelligence. It provides an end-to-end machine learning framework that includes loading and transforming data, building and training models, post-processi

Salesforce 2.8k Jan 05, 2023
pure-predict: Machine learning prediction in pure Python

pure-predict speeds up and slims down machine learning prediction applications. It is a foundational tool for serverless inference or small batch prediction with popular machine learning frameworks l

Ibotta 84 Dec 29, 2022
Responsible Machine Learning with Python

Examples of techniques for training interpretable ML models, explaining ML models, and debugging ML models for accuracy, discrimination, and security.

ph_ 624 Jan 06, 2023
Primitives for machine learning and data science.

An Open Source Project from the Data to AI Lab, at MIT MLPrimitives Pipelines and primitives for machine learning and data science. Documentation: htt

MLBazaar 65 Dec 29, 2022
Combines Bayesian analyses from many datasets.

PosteriorStacker Combines Bayesian analyses from many datasets. Introduction Method Tutorial Output plot and files Introduction Fitting a model to a d

Johannes Buchner 19 Feb 13, 2022
Implementation of deep learning models for time series in PyTorch.

List of Implementations: Currently, the reimplementation of the DeepAR paper(DeepAR: Probabilistic Forecasting with Autoregressive Recurrent Networks

Yunkai Zhang 275 Dec 28, 2022
Simple data balancing baselines for worst-group-accuracy benchmarks.

BalancingGroups Code to replicate the experimental results from Simple data balancing baselines achieve competitive worst-group-accuracy. Replicating

Facebook Research 29 Dec 02, 2022
The Ultimate FREE Machine Learning Study Plan

The Ultimate FREE Machine Learning Study Plan

Patrick Loeber (Python Engineer) 2.5k Jan 05, 2023
Distributed Evolutionary Algorithms in Python

DEAP DEAP is a novel evolutionary computation framework for rapid prototyping and testing of ideas. It seeks to make algorithms explicit and data stru

Distributed Evolutionary Algorithms in Python 4.9k Jan 05, 2023
MLOps pipeline project using Amazon SageMaker Pipelines

This project shows steps to build an end to end MLOps architecture that covers data prep, model training, realtime and batch inference, build model registry, track lineage of artifacts and model drif

AWS Samples 3 Sep 16, 2022
ml4h is a toolkit for machine learning on clinical data of all kinds including genetics, labs, imaging, clinical notes, and more

ml4h is a toolkit for machine learning on clinical data of all kinds including genetics, labs, imaging, clinical notes, and more

Broad Institute 65 Dec 20, 2022
Coursera Machine Learning - Python code

Coursera Machine Learning This repository contains python implementations of certain exercises from the course by Andrew Ng. For a number of assignmen

Jordi Warmenhoven 859 Dec 10, 2022
Optuna is an automatic hyperparameter optimization software framework, particularly designed for machine learning

Optuna is an automatic hyperparameter optimization software framework, particularly designed for machine learning. It features an imperative, define-by-run style user API.

7.4k Jan 04, 2023
Climin is a Python package for optimization, heavily biased to machine learning scenarios

climin climin is a Python package for optimization, heavily biased to machine learning scenarios distributed under the BSD 3-clause license. It works

Biomimetic Robotics and Machine Learning at Technische Universität München 177 Sep 02, 2022
A Microsoft Azure Web App project named Covid 19 Predictor using Machine learning Model

A Microsoft Azure Web App project named Covid 19 Predictor using Machine learning Model (Random Forest Classifier Model ) that helps the user to identify whether someone is showing positive Covid sym

Priyansh Sharma 2 Oct 06, 2022
Simple, fast, and parallelized symbolic regression in Python/Julia via regularized evolution and simulated annealing

Parallelized symbolic regression built on Julia, and interfaced by Python. Uses regularized evolution, simulated annealing, and gradient-free optimization.

Miles Cranmer 924 Jan 03, 2023