Master Thesis with the L3S at Lebniz University Hannover
Project description
Efficient First Stage Retrieval using Dense Representations and KNN
Summary description here.
This file will become your README and also the index of your documentation.
test
Install
pip install efficient_first_stage_retrieval
How to use
Use calculate_score to calculate MAP and MRR from actual qrels in fn_qrels and from predictions in prediction
calculate_score(fn_qrels='data/robust/qrels.robust2004.txt', prediction="score.txt")
Use do_run to calculate predictions from 'searcher' and queries 'topic' and used time and store it in file and 'time-' + file
do_run(file, topics, searcher)
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