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Contextualizing Argument Quality Assessment with Relevant Knowledge (2305.12280v3)

Published 20 May 2023 in cs.CL

Abstract: Automatic assessment of the quality of arguments has been recognized as a challenging task with significant implications for misinformation and targeted speech. While real-world arguments are tightly anchored in context, existing computational methods analyze their quality in isolation, which affects their accuracy and generalizability. We propose SPARK: a novel method for scoring argument quality based on contextualization via relevant knowledge. We devise four augmentations that leverage LLMs to provide feedback, infer hidden assumptions, supply a similar-quality argument, or give a counter-argument. SPARK uses a dual-encoder Transformer architecture to enable the original argument and its augmentation to be considered jointly. Our experiments in both in-domain and zero-shot setups show that SPARK consistently outperforms existing techniques across multiple metrics.

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Authors (4)
  1. Darshan Deshpande (8 papers)
  2. Zhivar Sourati (12 papers)
  3. Filip Ilievski (53 papers)
  4. Fred Morstatter (64 papers)
Citations (1)
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