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Ms Marco Electra Base

Developed by cross-encoder
A cross-encoder trained on the ELECTRA-base architecture, specifically optimized for the MS Marco passage ranking task, used for query-passage relevance scoring in information retrieval.
Downloads 118.93k
Release Time : 3/2/2022

Model Overview

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

Model Features

Efficient Reranking
Designed for information retrieval scenarios, capable of precisely reranking initial search results.
ELECTRA Architecture Advantage
Utilizes ELECTRA's replaced token detection pre-training method, more efficient compared to traditional BERT.
MS Marco Optimization
Specially trained on the MS Marco passage ranking dataset, adapted to real-world search scenarios.

Model Capabilities

Query-passage relevance scoring
Search result reranking
Information retrieval optimization

Use Cases

Search Engine Optimization
Search Result Reranking
Reranking initial results from search engines like ElasticSearch based on relevance.
Achieved 36.41 MRR@10 on the MS Marco development set.
Question Answering Systems
Answer Passage Ranking
Ranking candidate answer passages by relevance in QA systems.
Achieved 71.99 NDCG@10 on TREC DL 2019.
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