par allenai
Open source · 466k downloads · 44 likes
SPECTER2 Base est un modèle de langage spécialisé dans la génération d'embeddings adaptés aux documents scientifiques. Il permet de transformer des titres et résumés de publications ou des requêtes textuelles en représentations vectorielles efficaces pour des applications en aval. Conçu comme une amélioration de son prédécesseur SPECTER, il s'appuie sur des millions de triplets de citations et des tâches d'évaluation spécifiques pour produire des embeddings de haute qualité. Le modèle se distingue par sa capacité à s'adapter à différents formats de tâches (classification, régression, recherche de proximité ou recherche ad hoc) grâce à des modules d'adaptation dédiés. Idéal pour les systèmes de recommandation, la recherche d'informations ou l'analyse de similarité dans le domaine scientifique, il offre une solution robuste pour exploiter les données textuelles académiques.
SPECTER2 is the successor to SPECTER and is capable of generating task specific embeddings for scientific tasks when paired with adapters. This is the base model to be used along with the adapters. Given the combination of title and abstract of a scientific paper or a short texual query, the model can be used to generate effective embeddings to be used in downstream applications.
Note:For general embedding purposes, please use allenai/specter2.
To get the best performance on a downstream task type please load the associated adapter with the base model as in the example below.
Dec 2023 Update:
Model usage updated to be compatible with latest versions of transformers and adapters (newly released update to adapter-transformers) libraries.
Aug 2023 Update:
| Old Name | New Name |
|---|---|
| allenai/specter2 | allenai/specter2_base |
| allenai/specter2_proximity | allenai/specter2 |
An adapter for the allenai/specter2_base model that was trained on the allenai/scirepeval dataset.
This adapter was created for usage with the adapters library.
SPECTER2 has been trained on over 6M triplets of scientific paper citations, which are available here. Post that it is trained with additionally attached task format specific adapter modules on all the SciRepEval training tasks.
Task Formats trained on:
It builds on the work done in SciRepEval: A Multi-Format Benchmark for Scientific Document Representations and we evaluate the trained model on this benchmark as well.
| Model | Name and HF link | Description |
|---|---|---|
| Proximity* | allenai/specter2 | Encode papers as queries and candidates eg. Link Prediction, Nearest Neighbor Search |
| Adhoc Query | allenai/specter2_adhoc_query | Encode short raw text queries for search tasks. (Candidate papers can be encoded with the proximity adapter) |
| Classification | allenai/specter2_classification | Encode papers to feed into linear classifiers as features |
| Regression | allenai/specter2_regression | Encode papers to feed into linear regressors as features |
*Proximity model should suffice for downstream task types not mentioned above
from transformers import AutoTokenizer
from adapters import AutoAdapterModel
# load model and tokenizer
tokenizer = AutoTokenizer.from_pretrained('allenai/specter2_base')
#load base model
model = AutoAdapterModel.from_pretrained('allenai/specter2_base')
#load the adapter(s) as per the required task, provide an identifier for the adapter in load_as argument and activate it
model.load_adapter("allenai/specter2", source="hf", load_as="proximity", set_active=True)
#other possibilities: allenai/specter2_<classification|regression|adhoc_query>
papers = [{'title': 'BERT', 'abstract': 'We introduce a new language representation model called BERT'},
{'title': 'Attention is all you need', 'abstract': ' The dominant sequence transduction models are based on complex recurrent or convolutional neural networks'}]
# concatenate title and abstract
text_batch = [d['title'] + tokenizer.sep_token + (d.get('abstract') or '') for d in papers]
# preprocess the input
inputs = self.tokenizer(text_batch, padding=True, truncation=True,
return_tensors="pt", return_token_type_ids=False, max_length=512)
output = model(**inputs)
# take the first token in the batch as the embedding
embeddings = output.last_hidden_state[:, 0, :]
For evaluation and downstream usage, please refer to https://github.com/allenai/scirepeval/blob/main/evaluation/INFERENCE.md.
The base model is trained on citation links between papers and the adapters are trained on 8 large scale tasks across the four formats. All the data is a part of SciRepEval benchmark and is available here.
The citation link are triplets in the form
{"query": {"title": ..., "abstract": ...}, "pos": {"title": ..., "abstract": ...}, "neg": {"title": ..., "abstract": ...}}
consisting of a query paper, a positive citation and a negative which can be from the same/different field of study as the query or citation of a citation.
Please refer to the SPECTER paper.
The model is trained in two stages using SciRepEval:
batch size = 1024, max input length = 512, learning rate = 2e-5, epochs = 2 warmup steps = 10% fp16 batch size = 256, max input length = 512, learning rate = 1e-4, epochs = 6 warmup = 1000 steps fp16We evaluate the model on SciRepEval, a large scale eval benchmark for scientific embedding tasks which which has [SciDocs] as a subset. We also evaluate and establish a new SoTA on MDCR, a large scale citation recommendation benchmark.
| Model | SciRepEval In-Train | SciRepEval Out-of-Train | SciRepEval Avg | MDCR(MAP, Recall@5) |
|---|---|---|---|---|
| BM-25 | n/a | n/a | n/a | (33.7, 28.5) |
| SPECTER | 54.7 | 72.0 | 67.5 | (30.6, 25.5) |
| SciNCL | 55.6 | 73.4 | 68.8 | (32.6, 27.3) |
| SciRepEval-Adapters | 61.9 | 73.8 | 70.7 | (35.3, 29.6) |
| SPECTER2 Base | 56.3 | 73.6 | 69.1 | (38.0, 32.4) |
| SPECTER2-Adapters | 62.3 | 74.1 | 71.1 | (38.4, 33.0) |
Please cite the following works if you end up using SPECTER2:
[SciRepEval paper](https://api.semanticscholar.org/CorpusID:254018137)
```bibtex
@inproceedings{Singh2022SciRepEvalAM,
title={SciRepEval: A Multi-Format Benchmark for Scientific Document Representations},
author={Amanpreet Singh and Mike D'Arcy and Arman Cohan and Doug Downey and Sergey Feldman},
booktitle={Conference on Empirical Methods in Natural Language Processing},
year={2022},
url={https://api.semanticscholar.org/CorpusID:254018137}
}