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CSRR-2022-Knowledge-Augmented Language Models for Cause-Effect Relation Classification #349

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BrambleXu opened this issue Jan 26, 2023 · 0 comments
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RE(T) Relation Extraction Task

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Summary:

先行研究已经显示预训练模型里的knowledge augmentation methods是有效的。但是这些方法在不同domain,不同downstream task上的表现是不同的。本研究调查了基于预训练模型和 knowledge graph data在cause-effect relation classification 和 commonsense causal reasoning tasks上的表现。

Resource:

  • pdf
  • phosseini/causal-reasoning

Paper information:

Notes:

Model Graph:

Result:

Thoughts:

Next Reading:

@BrambleXu BrambleXu added the RE(T) Relation Extraction Task label Jan 26, 2023
@BrambleXu BrambleXu self-assigned this Jan 26, 2023
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