Causal Inference and Counterfactual Reasoning (3hr Tutorial)

Emre Kıcıman, Amit Sharma
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引用次数: 8

Abstract

As computing systems are more frequently and more actively intervening to improve people's work and daily lives, it is critical to correctly predict and understand the causal effects of these interventions. Conventional machine learning methods, built on pattern recognition and correlational analyses, are insufficient for causal analysis. This tutorial will introduce participants to concepts in causal inference and counterfactual reasoning, drawing from a broad literature from statistics, social sciences and machine learning. We will first motivate the use of causal inference through examples in domains such as recommender systems, social media datasets, health, education and governance. To tackle such questions, we will introduce the key ingredient that causal analysis depends on---counterfactual reasoning---and describe the two most popular frameworks based on Bayesian graphical models and potential outcomes. Based on this, we will cover a range of methods suitable for doing causal inference with large-scale online data, including randomized experiments, observational methods like matching and stratification, and natural experiment-based methods such as instrumental variables and regression discontinuity. We will also focus on best practices for evaluation and validation of causal inference techniques, drawing from our own experiences. After attending this tutorial, participants will understand the basics of causal inference, be able to appropriately apply the most common causal inference methods, and be able to recognize situations where more complex methods are required.
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因果推理和反事实推理(3小时教程)
随着计算系统更频繁、更积极地干预以改善人们的工作和日常生活,正确预测和理解这些干预的因果效应至关重要。基于模式识别和相关分析的传统机器学习方法不足以进行因果分析。本教程将从统计学、社会科学和机器学习的广泛文献中向参与者介绍因果推理和反事实推理的概念。我们将首先通过推荐系统、社交媒体数据集、健康、教育和治理等领域的示例来激励因果推理的使用。为了解决这些问题,我们将介绍因果分析所依赖的关键因素——反事实推理——并描述基于贝叶斯图形模型和潜在结果的两种最流行的框架。在此基础上,我们将涵盖一系列适用于大规模在线数据进行因果推理的方法,包括随机实验,匹配和分层等观察方法,以及基于自然实验的方法,如工具变量和回归不连续。我们还将根据自己的经验,重点介绍评估和验证因果推理技术的最佳实践。参加本教程后,参与者将了解因果推理的基础知识,能够适当地应用最常见的因果推理方法,并能够识别需要更复杂方法的情况。
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