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Roberta Base Finetuned Abbr

Developed by surrey-nlp
A named entity recognition model fine-tuned on the PLOD-filtered dataset based on RoBERTa-base, specifically designed for detecting abbreviated entities in text.
Downloads 85
Release Time : 4/23/2022

Model Overview

This model is implemented by fine-tuning RoBERTa-base, focusing on recognizing named entities in text, especially in abbreviated forms. It demonstrates high precision (0.9645) and recall (0.9583) on the evaluation set.

Model Features

High-precision Abbreviation Detection
Fine-tuned on the PLOD-filtered dataset, specifically optimized for recognizing abbreviated entities in text.
Powerful Representations Based on RoBERTa
Utilizes the bidirectional text understanding capabilities of the RoBERTa-base pre-trained model.
Comprehensive Evaluation Metrics
Provides multi-dimensional performance evaluations including precision, recall, F1-score, and accuracy.

Model Capabilities

Text entity recognition
Abbreviation detection
Scientific literature analysis

Use Cases

Academic Research
Scientific Literature Processing
Automatically identifies specialized term abbreviations in research papers.
High-accuracy recognition with an F1-score of 0.9614.
Text Analysis
Technical Document Processing
Extracts specialized terms and abbreviations from technical documents.
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