Learning Constraints and Descriptive Segmentation for Subevent Detection
- URL: http://arxiv.org/abs/2109.06316v1
- Date: Mon, 13 Sep 2021 20:50:37 GMT
- Title: Learning Constraints and Descriptive Segmentation for Subevent Detection
- Authors: Haoyu Wang, Hongming Zhang, Muhao Chen, Dan Roth
- Abstract summary: We propose an approach to learning and enforcing constraints that capture dependencies between subevent detection and EventSeg prediction.
We adopt Rectifier Networks for constraint learning and then convert the learned constraints to a regularization term in the loss function of the neural model.
- Score: 74.48201657623218
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Event mentions in text correspond to real-world events of varying degrees of
granularity. The task of subevent detection aims to resolve this granularity
issue, recognizing the membership of multi-granular events in event complexes.
Since knowing the span of descriptive contexts of event complexes helps infer
the membership of events, we propose the task of event-based text segmentation
(EventSeg) as an auxiliary task to improve the learning for subevent detection.
To bridge the two tasks together, we propose an approach to learning and
enforcing constraints that capture dependencies between subevent detection and
EventSeg prediction, as well as guiding the model to make globally consistent
inference. Specifically, we adopt Rectifier Networks for constraint learning
and then convert the learned constraints to a regularization term in the loss
function of the neural model. Experimental results show that the proposed
method outperforms baseline methods by 2.3% and 2.5% on benchmark datasets for
subevent detection, HiEve and IC, respectively, while achieving a decent
performance on EventSeg prediction.
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