Trigger-free Event Detection via Derangement Reading Comprehension

08/20/2022
by   Jiachen Zhao, et al.
0

Event detection (ED), aiming to detect events from texts and categorize them, is vital to understanding actual happenings in real life. However, mainstream event detection models require high-quality expert human annotations of triggers, which are often costly and thus deter the application of ED to new domains. Therefore, in this paper, we focus on low-resource ED without triggers and aim to tackle the following formidable challenges: multi-label classification, insufficient clues, and imbalanced events distribution. We propose a novel trigger-free ED method via Derangement mechanism on a machine Reading Comprehension (DRC) framework. More specifically, we treat the input text as Context and concatenate it with all event type tokens that are deemed as Answers with an omitted default question. So we can leverage the self-attention in pre-trained language models to absorb semantic relations between input text and the event types. Moreover, we design a simple yet effective event derangement module (EDM) to prevent major events from being excessively learned so as to yield a more balanced training process. The experiment results show that our proposed trigger-free ED model is remarkably competitive to mainstream trigger-based models, showing its strong performance on low-source event detection.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/16/2021

ESTER: A Machine Reading Comprehension Dataset for Event Semantic Relation Reasoning

Stories and narratives are composed based on a variety of events. Unders...
research
06/25/2023

Sentence-level Event Detection without Triggers via Prompt Learning and Machine Reading Comprehension

The traditional way of sentence-level event detection involves two impor...
research
10/21/2020

Probing and Fine-tuning Reading Comprehension Models for Few-shot Event Extraction

We study the problem of event extraction from text data, which requires ...
research
01/26/2020

Dual Multi-head Co-attention for Multi-choice Reading Comprehension

Multi-choice Machine Reading Comprehension (MRC) requires model to decid...
research
08/28/2019

Discourse-Aware Semantic Self-Attention for Narrative Reading Comprehension

In this work, we propose to use linguistic annotations as a basis for a ...
research
08/26/2021

Understanding Attention in Machine Reading Comprehension

Achieving human-level performance on some of Machine Reading Comprehensi...
research
12/30/2020

DEER: A Data Efficient Language Model for Event Temporal Reasoning

Pretrained language models (LMs) such as BERT, RoBERTa, and ELECTRA are ...

Please sign up or login with your details

Forgot password? Click here to reset