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Nerkor Cars Onpp Hubert

Developed by novakat
A Hungarian named entity recognition model fine-tuned on the NerKor+CARS-ONPP corpus, based on the SZTAKI-HLT/hubert-base-cc pre-trained model, supporting over 30 entity types.
Downloads 6,780
Release Time : 3/2/2022

Model Overview

This model is a Hungarian named entity recognition (NER) model capable of identifying various entity types including persons, locations, organizations, times, quantities, etc., suitable for entity annotation tasks in Hungarian texts.

Model Features

Broad Entity Type Support
Supports over 30 entity types, including OntoNotes 5.0 standard types and additional Hungarian-specific types.
Large-Scale Training Data
Trained on the NerKor+CARS-ONPP corpus, containing approximately 1 million labeled Hungarian gold-standard annotations.
Specialized Domain Expansion
Includes 12,000 labeled texts from the motor vehicle domain, enhancing recognition capabilities in specific fields.

Model Capabilities

Identify named entities in Hungarian texts
Classify over 30 entity types
Process news domain texts
Recognize motor vehicle-related entities

Use Cases

Information Extraction
News Text Analysis
Extract key information such as persons, organizations, and locations from Hungarian news articles
Can be used for knowledge graph construction or event analysis
Automotive Domain Entity Recognition
Identify specific entities like vehicle models and brands in automotive-related articles
Supports market analysis in the automotive industry
Text Annotation
Corpus Construction
Provide pre-annotated data for Hungarian NLP research
Accelerates research processes
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