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Biencoder Mminilmv2 L12 Mmarcofr

Developed by antoinelouis
This is a dense single-vector dual-encoder model for French, suitable for semantic search. The model maps queries and passages to 384-dimensional dense vectors and calculates relevance through cosine similarity.
Downloads 346
Release Time : 5/22/2023

Model Overview

This model is a dual-encoder model based on the mMiniLMv2 architecture, specifically optimized for French text semantic search tasks. It encodes queries and passages into 384-dimensional dense vectors and measures their relevance by calculating cosine similarity.

Model Features

French optimization
Specially trained and optimized for French text, excelling in French semantic search tasks
Efficient retrieval
Uses dense vector representations for efficient semantic similarity calculation and passage retrieval
High-quality negative samples
Utilizes hard negative samples mined from 12 different dense retrievers during training, enhancing the model's discrimination capability

Model Capabilities

French text embedding
Semantic similarity calculation
Passage retrieval
Information retrieval

Use Cases

Information retrieval
French document retrieval
Retrieve the most relevant passages from a collection of French documents based on queries
Achieves 84.4% Recall@500 on the mMARCO-fr validation set
Question-answering system
Build the retrieval component for a French question-answering system
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