Masked Language Model Scoring | Awesome LLM Papers Add your paper to Awesome LLM Papers

Masked Language Model Scoring

Julian Salazar, Davis Liang, Toan Q. Nguyen, Katrin Kirchhoff . Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics 2020 – 335 citations

[Code] [Paper]   Search on Google Scholar   Search on Semantic Scholar
ACL Compositional Generalization Ethics & Fairness Fine Tuning Has Code Interdisciplinary Approaches Model Architecture Multimodal Semantic Representation Tools

Pretrained masked language models (MLMs) require finetuning for most NLP tasks. Instead, we evaluate MLMs out of the box via their pseudo-log-likelihood scores (PLLs), which are computed by masking tokens one by one. We show that PLLs outperform scores from autoregressive language models like GPT-2 in a variety of tasks. By rescoring ASR and NMT hypotheses, RoBERTa reduces an end-to-end LibriSpeech model’s WER by 30% relative and adds up to +1.7 BLEU on state-of-the-art baselines for low-resource translation pairs, with further gains from domain adaptation. We attribute this success to PLL’s unsupervised expression of linguistic acceptability without a left-to-right bias, greatly improving on scores from GPT-2 (+10 points on island effects, NPI licensing in BLiMP). One can finetune MLMs to give scores without masking, enabling computation in a single inference pass. In all, PLLs and their associated pseudo-perplexities (PPPLs) enable plug-and-play use of the growing number of pretrained MLMs; e.g., we use a single cross-lingual model to rescore translations in multiple languages. We release our library for language model scoring at https://github.com/awslabs/mlm-scoring.

Similar Work