ACCESS : A Benchmark for Abstract Causal Event Discovery and Reasoning
Abstract
Identifying cause-and-effect relationships is critical to understanding real-world dynamics and ultimately causal reasoning. Existing methods for identifying event causality in NLP, including those based on Large Language Models (LLMs), exhibit difficulties in out-of-distribution settings due to the limited scale and heavy reliance on lexical cues within available benchmarks. Modern benchmarks, inspired by probabilistic causal inference, have attempted to construct causal graphs of events as a robust representation of causal knowledge, where CRAB romanou2023crab is one such recent benchmark along this line. In this paper, we introduce ACCESS, a benchmark designed for discovery and reasoning over abstract causal events. Unlike existing resources, ACCESS focuses on causality of everyday life events on the abstraction level. We propose a pipeline for identifying abstractions for event generalizations from GLUCOSE mostafazadeh-etal-2020-glucose, a large-scale dataset of implicit commonsense causal knowledge, from which we subsequently extract 1,4K causal pairs. Our experiments highlight the ongoing challenges of using statistical methods and/or LLMs for automatic abstraction identification and causal discovery in NLP. Nonetheless, we demonstrate that the abstract causal knowledge provided in ACCESS can be leveraged for enhancing QA reasoning performance in LLMs.
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