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ARA Reranker V1

Developed by Omartificial-Intelligence-Space
A model specifically designed for Arabic reranking tasks, capable of accurately processing the relationship between queries and passages, directly evaluating the similarity between questions and documents, and outputting relevance scores.
Downloads 795
Release Time : 11/26/2024

Model Overview

This model is trained with positive and hard-negative query-passage pairs, excelling in identifying the most relevant results. The output scores can be converted to a [0, 1] range via the Sigmoid function, providing clear and interpretable relevance metrics.

Model Features

Arabic Optimization
Designed specifically for Arabic, it accurately processes the relationship between Arabic queries and passages.
Direct Relevance Assessment
Unlike embedding models that generate vector representations, it directly evaluates the similarity between questions and documents, outputting relevance scores.
High-Quality Training Data
Trained with positive and hard-negative query-passage pairs, the model excels in identifying the most relevant results.
Interpretability
Output scores can be converted to a [0, 1] range via the Sigmoid function, providing clear and interpretable relevance metrics.

Model Capabilities

Arabic Text Reranking
Query-Document Relevance Assessment
RAG Process Optimization

Use Cases

Information Retrieval
Search Engine Result Optimization
Rerank Arabic search engine results to improve the ranking of the most relevant results.
Significantly enhances the relevance of search results
Question-Answering Systems
Rerank candidate answers in Arabic QA systems to select the most relevant answer.
Improves the accuracy of QA systems
RAG Process
Retrieval-Augmented Generation
Rerank retrieved documents in RAG workflows to provide the most relevant context for the generation phase.
Enhances the quality and relevance of generated content
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