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Multilingual E5 Large Instruct Xnli Anli

Developed by mjwong
A multilingual text embedding model fine-tuned on XNLI and ANLI datasets based on intfloat/multilingual-e5-large-instruct, supporting zero-shot classification tasks in 15 languages
Downloads 70
Release Time : 6/11/2024

Model Overview

This model is a text embedding model obtained through weakly-supervised contrastive pre-training, specifically optimized for Natural Language Inference (NLI) tasks and supports multilingual zero-shot classification

Model Features

Multilingual Support
Supports zero-shot classification tasks in 15 languages
High Performance
Performs excellently on XNLI and ANLI datasets, especially in major languages like English and Chinese
Zero-shot Classification Capability
Can classify new categories without task-specific training

Model Capabilities

Multilingual Text Classification
Natural Language Inference
Zero-shot Learning
Text Embedding

Use Cases

Content Classification
News Classification
Automatically classify news articles into categories such as politics, economy, entertainment, etc.
Achieved an accuracy of 0.795 on the Chinese XNLI test set
Semantic Analysis
Textual Entailment Judgment
Determine the logical relationship between two texts (entailment, neutral, or contradiction)
Achieved a matching accuracy of 0.862 on the MultiNLI development set
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