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Ms Marco MiniLM L12 V2

Developed by cross-encoder
A cross-encoder model trained on the MS Marco passage ranking task for relevance ranking in information retrieval.
Downloads 469.35k
Release Time : 3/2/2022

Model Overview

This model is designed for information retrieval tasks, capable of encoding query statements and relevant passages and ranking them by relevance. Suitable for reranking results in retrieval systems like ElasticSearch.

Model Features

Efficient Reranking
Capable of quickly reranking retrieval results by relevance to improve information retrieval quality.
Multi-Level Performance Options
Offers model choices from L2 to L12 scales to balance performance and speed.
Compatible with Mainstream Frameworks
Supports direct usage via SentenceTransformers and Transformers libraries.

Model Capabilities

Text relevance scoring
Information retrieval result reranking
Query-passage matching evaluation

Use Cases

Information Retrieval Systems
Search Engine Result Optimization
Reranks preliminary search engine results by relevance
Achieves 39.02 MRR@10 on the MS Marco development set
Question Answering Systems
Evaluates the relevance between candidate answers and questions
Achieves 74.31 NDCG@10 on the TREC 2019 DL track
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