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Ms Marco MiniLM L4 V2

Developed by cross-encoder
A cross-encoder model trained on the MS Marco passage ranking task for scoring query-passage relevance in information retrieval
Downloads 234.18k
Release Time : 3/2/2022

Model Overview

This model is specifically designed for information retrieval tasks, capable of scoring the relevance between queries and passages, suitable for search engine result reranking

Model Features

Efficient Reranking
Capable of quickly reranking search results by relevance to improve search quality
High Performance
Outstanding performance on TREC DL 2019 and MS Marco datasets
Multiple Size Options
Offers model versions ranging from TinyBERT to MiniLM-L12 to balance performance and speed

Model Capabilities

Query-Passage Relevance Scoring
Information Retrieval Result Reranking
Text Pair Classification

Use Cases

Search Engine Optimization
Search Result Reranking
Rerank initial search results by relevance to improve search quality
Achieved MRR@10 of 39.02 on MS Marco development set
Question Answering Systems
Answer Passage Ranking
Rank candidate answer passages by relevance to select the most relevant answer
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