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Poster
in
Workshop: NeurIPS 2024 Workshop: Machine Learning and the Physical Sciences

PhysBERT: A Text Embedding Model for Physics Scientific Literature

Thorsten Hellert · Andrea Pollastro · João Montenegro


Abstract:

The specialized language and complex concepts in physics pose significant challenges for information extraction through Natural Language Processing (NLP). Central to effective NLP applications is the text embedding model, which converts text into dense vector representations for efficient information retrieval and semantic analysis. In this work, we introduce PhysBERT, the first physics-specific text embedding model. Pre-trained on a curated corpus of 1.2 million arXiv physics papers and fine-tuned with supervised data, PhysBERT outperforms leading general-purpose models on physics-specific tasks including the effectiveness in fine-tuning for specific physics subdomains.

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