SOTAVerified

E-BERT: Efficient-Yet-Effective Entity Embeddings for BERT

2019-11-09Findings of the Association for Computational LinguisticsCode Available0· sign in to hype

Nina Poerner, Ulli Waltinger, Hinrich Schütze

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

We present a novel way of injecting factual knowledge about entities into the pretrained BERT model (Devlin et al., 2019): We align Wikipedia2Vec entity vectors (Yamada et al., 2016) with BERT's native wordpiece vector space and use the aligned entity vectors as if they were wordpiece vectors. The resulting entity-enhanced version of BERT (called E-BERT) is similar in spirit to ERNIE (Zhang et al., 2019) and KnowBert (Peters et al., 2019), but it requires no expensive further pretraining of the BERT encoder. We evaluate E-BERT on unsupervised question answering (QA), supervised relation classification (RC) and entity linking (EL). On all three tasks, E-BERT outperforms BERT and other baselines. We also show quantitatively that the original BERT model is overly reliant on the surface form of entity names (e.g., guessing that someone with an Italian-sounding name speaks Italian), and that E-BERT mitigates this problem.

Tasks

Reproductions