Adaptive Knowledge-Enhanced Bayesian Meta-Learning for Few-shot Event
Detection
- URL: http://arxiv.org/abs/2105.09509v1
- Date: Thu, 20 May 2021 04:26:26 GMT
- Title: Adaptive Knowledge-Enhanced Bayesian Meta-Learning for Few-shot Event
Detection
- Authors: Shirong Shen and Tongtong Wu and Guilin Qi and Yuan-Fang Li and
Gholamreza Haffari and Sheng Bi
- Abstract summary: Event detection (ED) aims at detecting event trigger words in sentences and classifying them into specific event types.
We propose a knowledge-based few-shot event detection method which uses a definition-based encoder to introduce external event knowledge.
Experiments show our method consistently and substantially outperforms a number of baselines by at least 15 absolute F1 points.
- Score: 34.0901494858203
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Event detection (ED) aims at detecting event trigger words in sentences and
classifying them into specific event types. In real-world applications, ED
typically does not have sufficient labelled data, thus can be formulated as a
few-shot learning problem. To tackle the issue of low sample diversity in
few-shot ED, we propose a novel knowledge-based few-shot event detection method
which uses a definition-based encoder to introduce external event knowledge as
the knowledge prior of event types. Furthermore, as external knowledge
typically provides limited and imperfect coverage of event types, we introduce
an adaptive knowledge-enhanced Bayesian meta-learning method to dynamically
adjust the knowledge prior of event types. Experiments show our method
consistently and substantially outperforms a number of baselines by at least 15
absolute F1 points under the same few-shot settings.
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