SOTAVerified

AIN: Fast and Accurate Sequence Labeling with Approximate Inference Network

2020-09-17EMNLP 2020Code Available1· sign in to hype

Xinyu Wang, Yong Jiang, Nguyen Bach, Tao Wang, Zhongqiang Huang, Fei Huang, Kewei Tu

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

The linear-chain Conditional Random Field (CRF) model is one of the most widely-used neural sequence labeling approaches. Exact probabilistic inference algorithms such as the forward-backward and Viterbi algorithms are typically applied in training and prediction stages of the CRF model. However, these algorithms require sequential computation that makes parallelization impossible. In this paper, we propose to employ a parallelizable approximate variational inference algorithm for the CRF model. Based on this algorithm, we design an approximate inference network that can be connected with the encoder of the neural CRF model to form an end-to-end network, which is amenable to parallelization for faster training and prediction. The empirical results show that our proposed approaches achieve a 12.7-fold improvement in decoding speed with long sentences and a competitive accuracy compared with the traditional CRF approach.

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
CoNLL 2003 (English)AINF191.71Unverified
CoNLL 2003 (German)AINF194.04Unverified

Reproductions