LGMLSep 12, 2024

Introducing CausalBench: A Flexible Benchmark Framework for Causal Analysis and Machine Learning

arXiv:2409.08419v24 citationsh-index: 12
Originality Synthesis-oriented
AI Analysis

This addresses the problem of fragmented evaluation in causal learning for researchers, though it is incremental as it builds on existing needs rather than proposing a new method.

The authors tackled the lack of unified benchmarks in causal learning from observational data by introducing CausalBench, a flexible framework that provides datasets, algorithms, and metrics to advance research and promote reproducibility.

While witnessing the exceptional success of machine learning (ML) technologies in many applications, users are starting to notice a critical shortcoming of ML: correlation is a poor substitute for causation. The conventional way to discover causal relationships is to use randomized controlled experiments (RCT); in many situations, however, these are impractical or sometimes unethical. Causal learning from observational data offers a promising alternative. While being relatively recent, causal learning aims to go far beyond conventional machine learning, yet several major challenges remain. Unfortunately, advances are hampered due to the lack of unified benchmark datasets, algorithms, metrics, and evaluation service interfaces for causal learning. In this paper, we introduce {\em CausalBench}, a transparent, fair, and easy-to-use evaluation platform, aiming to (a) enable the advancement of research in causal learning by facilitating scientific collaboration in novel algorithms, datasets, and metrics and (b) promote scientific objectivity, reproducibility, fairness, and awareness of bias in causal learning research. CausalBench provides services for benchmarking data, algorithms, models, and metrics, impacting the needs of a broad of scientific and engineering disciplines.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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