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Towards Fine-grained Causal Reasoning and QA

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arxiv 2204.07408 v1 pith:LGNBKET7 submitted 2022-04-15 cs.CL cs.AIcs.LO

Towards Fine-grained Causal Reasoning and QA

classification cs.CL cs.AIcs.LO
keywords causalcausalitydatasetespeciallyeventfine-grainedmethodsnovel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Understanding causality is key to the success of NLP applications, especially in high-stakes domains. Causality comes in various perspectives such as enable and prevent that, despite their importance, have been largely ignored in the literature. This paper introduces a novel fine-grained causal reasoning dataset and presents a series of novel predictive tasks in NLP, such as causality detection, event causality extraction, and Causal QA. Our dataset contains human annotations of 25K cause-effect event pairs and 24K question-answering pairs within multi-sentence samples, where each can have multiple causal relationships. Through extensive experiments and analysis, we show that the complex relations in our dataset bring unique challenges to state-of-the-art methods across all three tasks and highlight potential research opportunities, especially in developing "causal-thinking" methods.

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