Beyond Correlations: A Downstream Evaluation Framework forQuery Performance Prediction

This abstract has open access
Abstract Summary
The standard practice of query performance prediction (QPP) evaluation is to measure a set-level correlation between the estimated retrieval qualities and the true ones. However, this correlation-based evaluation measure quantifies QPP effectiveness at the level of individual queries, nor does this connect to a downstream application, meaning that QPP methods yielding high correlation values may not find a practical application in query-specific decisions in an IR pipeline. In this paper, we propose a downstream-focussed evaluation framework where a distribution of QPP estimates across a list of top-documents retrieved with several rankers is used as priors for IR fusion. While on the one hand, a distribution of these estimates closely matching that of the true retrieval qualities indicates the quality of the predictor, their usage as priors on the other hand indicates a predictor's ability to make informed choices in an IR pipeline. Our experiments firstly establish the importance of QPP estimates in weighted IR fusion, yielding significant improvements of over 4.5% over unweighted CombSUM and RRF fusion strategies, and secondly, reveal new insights that the downstream effectiveness of QPP does not correlate well with the standard correlation-based QPP evaluation.
Abstract ID :
NKDR108
Submission Type

Associated Sessions

Ph.D student
,
Indian Association For The Cultivation Of Science, Kolkata

Abstracts With Same Type

Abstract ID
Abstract Title
Abstract Topic
Submission Type
Primary Author
NKDR99
Machine learning Search and ranking
Short papers
Mr. Amir Khosrojerdi
NKDR115
IR applications Large Language Models
Short papers
Omar Adjali
NKDR112
Machine learning Search and ranking
Short papers
Amirabbas Afzali
NKDR82
Generative IRIR applicationsLarge Language ModelsRetrieval-Augmented GenerationSystem aspects
Short papers
Saisab Sadhu
NKDR102
Short papers
Mehmet Erdeniz Aydo?du
1 visits