ScholarBERT_100_WB Model
This is the ScholarBERT_100_WB variant of the ScholarBERT model family.
The model is pretrained on a large collection of scientific research articles (221B tokens). Additionally, the pretraining data also includes the Wikipedia+BookCorpus, which are used to pretrain the BERT-base and BERT-large models.
This is a cased (case-sensitive) model. The tokenizer will not convert all inputs to lower-case by default.
The model is based on the same architecture as BERT-large and has a total of 340M parameters.
Model Architecture
Hyperparameter | Value |
---|---|
Layers | 24 |
Hidden Size | 1024 |
Attention Heads | 16 |
Total Parameters | 340M |
Training Dataset
The vocab and the model are pertrained on 100% of the PRD scientific literature dataset and the Wikipedia+BookCorpus.
The PRD dataset is provided by Public.Resource.Org, Inc. (“Public Resource”), a nonprofit organization based in California. This dataset was constructed from a corpus of journal article files, from which We successfully extracted text from 75,496,055 articles from 178,928 journals. The articles span across Arts & Humanities, Life Sciences & Biomedicine, Physical Sciences, Social Sciences, and Technology. The distribution of articles is shown below.
BibTeX entry and citation info
If using this model, please cite this paper:
@misc{hong2023diminishing,
title={The Diminishing Returns of Masked Language Models to Science},
author={Zhi Hong and Aswathy Ajith and Gregory Pauloski and Eamon Duede and Kyle Chard and Ian Foster},
year={2023},
eprint={2205.11342},
archivePrefix={arXiv},
primaryClass={cs.CL}
}
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