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Robust query performance prediction for dense retrievers via adaptive disturbance generation
by
Bagheri, Ebrahim
, Rad, Radin Hamidi
, Saleminezhad, Abbas
, Arabzadeh, Negar
, Beheshti, Soosan
in
Artificial Intelligence
/ Computer Science
/ Connectivity
/ Control
/ Datasets
/ Information retrieval
/ Machine Learning
/ Mechatronics
/ Methods
/ Natural Language Processing (NLP)
/ Performance prediction
/ Perturbation
/ Queries
/ Retrieval performance measures
/ Robotics
/ Search engines
/ Semantics
/ Simulation and Modeling
/ User needs
2025
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Robust query performance prediction for dense retrievers via adaptive disturbance generation
by
Bagheri, Ebrahim
, Rad, Radin Hamidi
, Saleminezhad, Abbas
, Arabzadeh, Negar
, Beheshti, Soosan
in
Artificial Intelligence
/ Computer Science
/ Connectivity
/ Control
/ Datasets
/ Information retrieval
/ Machine Learning
/ Mechatronics
/ Methods
/ Natural Language Processing (NLP)
/ Performance prediction
/ Perturbation
/ Queries
/ Retrieval performance measures
/ Robotics
/ Search engines
/ Semantics
/ Simulation and Modeling
/ User needs
2025
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Robust query performance prediction for dense retrievers via adaptive disturbance generation
by
Bagheri, Ebrahim
, Rad, Radin Hamidi
, Saleminezhad, Abbas
, Arabzadeh, Negar
, Beheshti, Soosan
in
Artificial Intelligence
/ Computer Science
/ Connectivity
/ Control
/ Datasets
/ Information retrieval
/ Machine Learning
/ Mechatronics
/ Methods
/ Natural Language Processing (NLP)
/ Performance prediction
/ Perturbation
/ Queries
/ Retrieval performance measures
/ Robotics
/ Search engines
/ Semantics
/ Simulation and Modeling
/ User needs
2025
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Robust query performance prediction for dense retrievers via adaptive disturbance generation
Journal Article
Robust query performance prediction for dense retrievers via adaptive disturbance generation
2025
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Overview
This paper introduces
ADG-QPP
(Adaptive Disturbance Generation), an unsupervised Query Performance Prediction (QPP) method designed specifically for dense neural retrievers. The underlying foundation of
ADG-QPP
is to measure query performance based on its degree of robustness towards perturbations. Traditional QPP methods rely on predefined lexical perturbations on the query, which only apply to sparse retrieval methods and fail to maintain consistent performance across different datasets. In our work, we address these limitations by perturbing the query by injecting disturbance leveraged by the focal network-based measurements including node-based, edge-based, and cluster-based metrics, into its neural embedding representation. Rather than applying the same perturbation across all queries, our approach develops an instance-wise disturbance for each query that is then used for its perturbation. Through extensive experiments on three benchmark datasets, we demonstrate that
ADG-QPP
outperforms state-of-the-art baselines in terms of Kendall
τ
, Spearman
ρ
, and Pearson’s
ρ
correlations.
Publisher
Springer US,Springer Nature B.V
Subject
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