Conventional event detection models under supervised learning settings suffer from the inability of transfer to newly-emerged event types owing to lack of sufficient annotations. A commonly-adapted solution is to follow a identify-then-classify manner, which first identifies the triggers and then converts the classification task via a few-shot learning paradigm. However, these methods still fall far short of expectations due to: (i) insufficient learning of discriminative representations in low-resource scenarios, and (ii) trigger misidentification caused by the overlap of the learned representations of triggers and non-triggers. To address the problems, in this paper, we propose a novel Hybrid Contrastive Learning method with a Task-Adaptive Threshold (abbreviated as HCLTAT), which enables discriminative representation learning with a two-view contrastive loss (support-support and prototype-query), and devises a easily-adapted threshold to alleviate misidentification of triggers. Extensive experiments on the benchmark dataset FewEvent demonstrate the superiority of our method to achieve better results compared to the state-of-the-arts. All the code and data of this paper will be available for online public access.
翻译:由于缺乏足够的说明,在受监督的学习环境中,常规事件探测模型无法向新出现事件类型转移,因此无法向新出现事件类型转移,因此,通常采用的解决办法是采用识别式分类方法,首先确定触发因素,然后通过几个镜头的学习模式转换分类任务,然而,这些方法仍然远远没有达到预期,原因是:(一) 对低资源情景中歧视性表现的学习不够充分,以及(二) 触发因素和非触发因素的学术表现重叠导致错误识别。为了解决本文件中的问题,我们建议采用一种新型的混合反向学习方法,采用任务偏重阈值(作为HCLTAT的缩写),使歧视性表述学习能够有两种观点的对比损失(支持-支持和原型查询),并设计一个容易调整的门槛,以缓解触发因素的错误识别。关于基准数据集很少Event的广泛实验表明,我们的方法优于现状,我们的方法取得了更好的结果。所有代码和数据都将可供公众在线查阅。