Litcius/Paper detail

Taxonomy-aware Learning for Few-Shot Event Detection

Jianming Zheng, Fei Cai, Wanyu Chen, Wengqiang Lei, Honghui Chen

202115 citationsDOIOpen Access PDF

Abstract

Event detection classifies unlabeled sentences into event labels, which can benefit numerous applications, including information retrieval, question answering and script learning. One of the major obstacles to event detection in reality is insufficient training data. To deal with the low-resources problem, we investigate few-shot event detection in this paper and propose TaLeM, a novel taxonomy-aware learning model, consisting of two components, i.e., the taxonomy-aware self-supervised learning framework (TaSeLF) and the taxonomy-aware prototypical networks (TaPN). Specifically, TaSeLF mines the taxonomy-aware distance relations to increases the training examples, which alleviates the generalization bottleneck brought by the insufficient data. TaPN introduces the Poincaré embeddings to represent the label taxonomy, and integrates them into a task-adaptive projection networks, which tackles problems of the class centroids distribution and the taxonomy-aware embedding distribution in the vanilla prototypical networks.

Topics & Concepts

Computer scienceTaxonomy (biology)Artificial intelligenceEvent (particle physics)Machine learningClass (philosophy)Natural language processingInformation retrievalBiologyPhysicsQuantum mechanicsBotanyTopic ModelingText and Document Classification TechnologiesNatural Language Processing Techniques
Taxonomy-aware Learning for Few-Shot Event Detection | Litcius