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Team Solomon at SemEval-2020 Task 4: Be Reasonable: Exploiting large-scale language models for commonsense reasoning

机译:Solomon Semeval-2020的团队 - 2020任务4:合理:利用大规模语言模型进行致料

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In this paper, we present our submission for SemEval 2020 Task 4 - Commonsense Validation and Explanation (ComVE). The objective of this task was to develop a system that can differentiate statements that make sense from the ones that don't. ComVE comprises of three subtasks to challenge and test a system's capability in understanding commonsense knowledge from various dimensions. Commonsense reasoning is a challenging task in the domain of natural language understanding and systems augmented with it can improve performance in various other tasks such as reading comprehension, and inferencing.We have developed a system that leverages commonsense knowledge from pretrained language models trained on huge corpus such as RoBERTa, GPT2, etc. Our proposed system validates the reasonability of a given statement against the backdrop of commonsense knowledge acquired by these models and generates a logical reason to support its decision. Our system ranked 2nd in subtask C with a BLEU score of 19.3, which by far is the most challenging subtask as it required systems to generate the rationale behind the choice of an unreasonable statement. In subtask A and B, we achieved 96% and 94% accuracy respectively standing at 4th position in both the subtasks.
机译:在本文中,我们介绍了我们的Semeval 2020任务4 - 致辞验证和解释(COMVE)。这项任务的目标是开发一个可以区分从没有的陈述的系统。包括三个子组织来挑战和测试系统的能力,以了解来自各种维度的致辞知识。致辞原理是在自然语言理解和系统的领域中的一个具有挑战性的任务,可以增强它可以提高各种其他任务的性能,如阅读理解,推理。我们开发了一个系统,利用巨大的语料库培训的预训练语言模型来实现较常规知识的系统如Roberta,GPT2等。我们所提出的系统验证了对这些模型收购的勤杂朗语知识的背景下的给定陈述的合理性,并产生了支持其决定的逻辑理由。我们的系统在SubTask C中排名第2,Bleu得分为19.3,到目前为止,这是最具挑战性的子任务,因为它是必要的系统,以产生不合理的陈述选择背后的理由。在SubTask A和B中,我们在子任务中分别实现了96%和94%的准确性。

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