2023
DOI: 10.48550/arxiv.2302.09947
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Query Performance Prediction for Neural IR: Are We There Yet?

Abstract: Evaluation in Information Retrieval (IR) relies on post-hoc empirical procedures, which are time-consuming and expensive operations. To alleviate this, Query Performance Prediction (QPP) models have been developed to estimate the performance of a system without the need for human-made relevance judgements. Such models, usually relying on lexical features from queries and corpora, have been applied to traditional sparse IR methods -with various degrees of success. With the advent of neural IR and large Pre-trai… Show more

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