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Roberta Base Tweetner7 All

Developed by tner
A named entity recognition model fine-tuned on the tweetner7 dataset based on roberta-base, specifically designed for entity recognition in Twitter text.
Downloads 30
Release Time : 7/11/2022

Model Overview

This model is a named entity recognition model based on the RoBERTa architecture, optimized specifically for Twitter text, capable of identifying various named entities in tweets.

Model Features

Twitter Text Optimization
Fine-tuned specifically for Twitter text, effectively handling informal language and special formats in tweets.
Multi-Entity Recognition
Capable of identifying multiple entity types in tweets, including person names, organization names, URLs, etc.
High Precision Entity Span Recognition
Excellent performance in entity span recognition tasks, achieving an F1 score of 0.789.

Model Capabilities

Twitter Text Processing
Named Entity Recognition
Multi-category Entity Classification

Use Cases

Social Media Analysis
Twitter User Analysis
Identify people and organizations mentioned in Twitter text for user behavior analysis.
F1 score 0.652
Brand Monitoring
Monitor brand and organization names mentioned in tweets.
Entity span F1 score 0.789
Information Extraction
URL Extraction
Extract shared links from tweets.
Included within the scope of entity recognition
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