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Sentence Transformers Distiluse Base Multilingual Cased V2 50 50 All V2 Sequence Oaei Final

Developed by javiervela
This is a multilingual sentence embedding model based on sentence-transformers, capable of mapping sentences and paragraphs into a 512-dimensional dense vector space, suitable for tasks such as sentence similarity computation and semantic search.
Downloads 30
Release Time : 10/14/2022

Model Overview

This model is a fine-tuned version of distiluse-base-multilingual-cased-v2, specifically designed for the CIDER-LM ontology matching system. It can process multilingual texts and generate high-quality sentence embeddings.

Model Features

Multilingual support
Capable of processing texts in multiple languages and generating unified semantic representations.
Efficient distillation
Based on distillation technology, it reduces the model size while maintaining performance.
High-quality embeddings
The generated 512-dimensional vectors effectively capture the semantic information of sentences.

Model Capabilities

Sentence similarity computation
Semantic search
Text clustering
Feature extraction

Use Cases

Information retrieval
Semantic search
Using sentence embeddings for document or paragraph-level semantic search
Compared to traditional keyword search, it better understands query intent.
Natural language processing
Ontology matching
Used in the CIDER-LM system for aligning and matching ontology concepts
Improves the accuracy and efficiency of ontology matching.
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