Few-Shot Sequence Labeling (FSSL) is a canonical paradigm for the tagging models, e.g., named entity recognition and slot filling, to generalize on an emerging, resource-scarce domain. Recently, the metric-based meta-learning framework has been recognized as a promising approach for FSSL. However, most prior works assign a label to each token based on the token-level similarities, which ignores the integrality of named entities or slots. To this end, in this paper, we propose ESD, an Enhanced Span-based Decomposition method for FSSL. ESD formulates FSSL as a span-level matching problem between test query and supporting instances. Specifically, ESD decomposes the span matching problem into a series of span-level procedures, mainly including enhanced span representation, class prototype aggregation and span conflicts resolution. Extensive experiments show that ESD achieves the new state-of-the-art results on two popular FSSL benchmarks, FewNERD and SNIPS, and is proven to be more robust in the nested and noisy tagging scenarios. Our code is available at https://github.com/Wangpeiyi9979/ESD.
翻译:微小序列标签标签(FSSL)是标记模型的典型范例,例如名称实体识别和空缺填充,以概括新出现的资源稀缺域。最近,基于标准的元学习框架被公认为FSSL的一个很有希望的方法。然而,大多数先前的著作根据象征性的相似点为每个标志指定标签,忽视了指定实体或空格的整体性。为此,我们提议ESD为FSSL提出一个基于增强的Span拆解方法。ESD将FSL作为测试查询和支持实例之间的一个跨级匹配问题。具体地说,ESD将宽度匹配问题纳入一系列跨级程序,主要包括强化的跨度代表、分类原型汇总和宽度冲突解析。广泛的实验表明,ESDD在两个流行的FSLS基准(小NERD和SNIPS)上实现了新的状态-艺术成果,并且证明在嵌巢式和响亮的标签假设中更为稳健。我们的代码可在 https://peam/ws.mang/s。