MTLB-STRUCT @PARSEME 2020: Capturing Unseen Multiword Expressions Using Multi-task Learning and Pre-trained Masked Language Models

11/04/2020
by   Shiva Taslimipoor, et al.
0

This paper describes a semi-supervised system that jointly learns verbal multiword expressions (VMWEs) and dependency parse trees as an auxiliary task. The model benefits from pre-trained multilingual BERT. BERT hidden layers are shared among the two tasks and we introduce an additional linear layer to retrieve VMWE tags. The dependency parse tree prediction is modelled by a linear layer and a bilinear one plus a tree CRF on top of BERT. The system has participated in the open track of the PARSEME shared task 2020 and ranked first in terms of F1-score in identifying unseen VMWEs as well as VMWEs in general, averaged across all 14 languages.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/26/2020

KUISAIL at SemEval-2020 Task 12: BERT-CNN for Offensive Speech Identification in Social Media

In this paper, we describe our approach to utilize pre-trained BERT mode...
research
09/12/2020

CIA_NITT at WNUT-2020 Task 2: Classification of COVID-19 Tweets Using Pre-trained Language Models

This paper presents our models for WNUT 2020 shared task2. The shared ta...
research
09/09/2018

SHOMA at Parseme Shared Task on Automatic Identification of VMWEs: Neural Multiword Expression Tagging with High Generalisation

This paper presents a language-independent deep learning architecture ad...
research
04/06/2019

ThisIsCompetition at SemEval-2019 Task 9: BERT is unstable for out-of-domain samples

This paper describes our system, Joint Encoders for Stable Suggestion In...
research
04/22/2023

Romanian Multiword Expression Detection Using Multilingual Adversarial Training and Lateral Inhibition

Multiword expressions are a key ingredient for developing large-scale an...
research
11/27/2021

Tapping BERT for Preposition Sense Disambiguation

Prepositions are frequently occurring polysemous words. Disambiguation o...

Please sign up or login with your details

Forgot password? Click here to reset