NPM-single
NPM-single is a nonparametric masked language model, pretrained on English text data. It was introduced by "Nonparametric Masked Language Modeling" and first released in facebookresearch/NPM.
Model description
NPM consists of an encoder and a reference corpus, and models a nonparametric distribution over a reference corpus. The key idea is to map all the phrases in the corpus into a dense vector space using the encoder and, when given a query with a MASK at inference, use the encoder to locate the nearest phrase from the corpus and fill in the MASK.
NPM-single is a variant of NPM that retrieves a token from the corpus, instead of a phrase.
Intended uses & limitations
While this repo includes the encoder weights, NPM-single has to be used together with a datstore. For more details on how to use NPM-single, please refer to the original repo.
Note that this model is primarily for filling in a MASK token. Future work can investigate how to use NPM-single for text generation.
Training procedure
NPM-single was trained on English Wikipedia (August 2019) and an English portion of CC-News (Mackenzie et al. (2020), February 2019), which contains 13B tokens in total. NPM-single used the model architecture and initial weights of RoBERTa large (Liu et al., 2019), consisting of 354M parameters. Training is done for 100,000 steps, using thirty-two 32GB GPUs.
More details about training can be found in the paper. Code for training NPM-single can be found in the original repo.
Evaluation results
NPM-single is evaluated on nine closed-set tasks (tasks with a small set of options given). NPM-single consistently outperforms significantly larger models such as GPT-3 and T5. Detailed results can be found from the paper.
BibTeX entry and citation info
@article{ min2022nonparametric,
title={ Nonparametric Masked Language Modeling },
author={ Min, Sewon and Shi, Weijia and Lewis, Mike and Chen, Xilun and Yih, Wen-tau and Hajishirzi, Hannaneh and Zettlemoyer, Luke },
year={ 2022 }
}
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