The Role of Pragmatic and Discourse Context in Determining Argument
Impact
- URL: http://arxiv.org/abs/2004.03034v1
- Date: Mon, 6 Apr 2020 23:00:37 GMT
- Title: The Role of Pragmatic and Discourse Context in Determining Argument
Impact
- Authors: Esin Durmus, Faisal Ladhak, Claire Cardie
- Abstract summary: This paper presents a new dataset to initiate the study of this aspect of argumentation.
It consists of a diverse collection of arguments covering 741 controversial topics and comprising over 47,000 claims.
We propose predictive models that incorporate the pragmatic and discourse context of argumentative claims and show that they outperform models that rely on claim-specific linguistic features for predicting the perceived impact of individual claims within a particular line of argument.
- Score: 39.70446357000737
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Research in the social sciences and psychology has shown that the
persuasiveness of an argument depends not only the language employed, but also
on attributes of the source/communicator, the audience, and the appropriateness
and strength of the argument's claims given the pragmatic and discourse context
of the argument. Among these characteristics of persuasive arguments, prior
work in NLP does not explicitly investigate the effect of the pragmatic and
discourse context when determining argument quality. This paper presents a new
dataset to initiate the study of this aspect of argumentation: it consists of a
diverse collection of arguments covering 741 controversial topics and
comprising over 47,000 claims. We further propose predictive models that
incorporate the pragmatic and discourse context of argumentative claims and
show that they outperform models that rely only on claim-specific linguistic
features for predicting the perceived impact of individual claims within a
particular line of argument.
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