KDD2025

CausalBench: Causal Learning Research Streamlined

Ahmet Kapkiç, Pratanu Mandal, Abhinav Gorantla, Shu Wan, Ertugrul Çoban, Paras Sheth, Huan Liu, K. Selçuk Candan

摘要

Recent advances in causal machine learning introduced a plethora of new causal discovery and causal inference models to tackle decision support problems. Yet, these models exhibit different performance when they train on different data, and even different hardware/software platforms, making it challenging for users to select the appropriate setup pertinent to their specific problem instance. The situation is complicated by the fact that, until recently, the field lacked a unified, publicly available, and configurable platform that supports all major causal inference tasks, including causal discovery, causal effect estimation, and causal inference. CausalBench is a comprehensive benchmarking tool for causal machine learning that facilitates accurate and reproducible benchmarking of causal models across metrics and deployment contexts and helps users to select the most appropriate set up (such as hyper-parameter configuration) for the specific problem setting. This tutorial is intended to familiarize attendees from diverse backgrounds, who are interested in causal learning models and with the capabilities of CausalBench. The tutorial begins with an introduction to ''causality'' and causal machine learning, and then provides hands-on experience with CausalBench to equip attendees with the knowledge necessary to utilize CausalBench for their causal learning problems.