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Gliclass Small V1.0

Developed by knowledgator
An efficient zero-shot classifier trained on synthetic data, suitable for topic classification, sentiment analysis, and reranking tasks in RAG workflows
Downloads 416
Release Time : 7/3/2024

Model Overview

A lightweight text classification model inspired by GLiNER, capable of multi-label classification in a single forward pass, maintaining comparable performance to cross-encoders while being more computationally efficient

Model Features

Efficient Zero-shot Classification
Performs multi-label classification in a single forward pass with better computational efficiency than traditional cross-encoders
Multi-task Applicability
Supports various text classification tasks including topic classification and sentiment analysis
RAG Integration
Can be used as an efficient reranker in Retrieval-Augmented Generation workflows
Business-friendly
Trained on synthetic data, safe for commercial applications

Model Capabilities

Zero-shot text classification
Multi-label classification
Sentiment analysis
Topic recognition
Retrieval result reranking

Use Cases

Content classification
News topic classification
Automatically identifies the topic categories of news articles
Achieves 0.7252 F1 score on AG News dataset
Movie review sentiment analysis
Analyzes sentiment tendencies in movie reviews
Achieves 0.9048 F1 score on IMDB dataset
Enterprise applications
Customer service ticket classification
Automatically routes customer inquiries to relevant business departments
Achieves 0.1768 F1 score on bank customer service dataset
Product feedback analysis
Extracts key themes and sentiments from user feedback
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