2018
Conferences

Adrian-Gabriel Chifu; Léa Laporte; Josiane Mothe; Md Zia Ullah
Query performance prediction focused on summarized letor features Conference
The 41st International ACM SIGIR Conference on Research & Development in Information Retrieval, SIGIR2018 2018.
Abstract | Links | BibTeX | Tags: Letor Features, Post Retrieval Features, Query Difficulty Prediction, Query Features, Query Performance Prediction
@conference{chifu2018query,
title = {Query performance prediction focused on summarized letor features},
author = {Adrian-Gabriel Chifu and Léa Laporte and Josiane Mothe and Md Zia Ullah},
url = {ftp://ftp.irit.fr/IRIT/SIG/2018_SIGIR_CLMU.pdf},
year = {2018},
date = {2018-07-01},
urldate = {2018-01-01},
booktitle = {The 41st International ACM SIGIR Conference on Research & Development in Information Retrieval},
pages = {1177--1180},
series = {SIGIR2018},
abstract = {Query performance prediction (QPP) aims at automatically estimating the information retrieval system effectiveness for any user's query. Previous work has investigated several types of pre- and post-retrieval query performance predictors; the latter has been shown to be more effective. In this paper we investigate the use of features that were initially defined for learning to rank in the task of QPP. While these features have been shown to be useful for learning to rank documents, they have never been studied as query performance predictors. We developed more than 350 variants of them based on summary functions. Conducting experiments on four TREC standard collections, we found that Letor-based features appear to be better QPP than predictors from the literature. Moreover, we show that combining the best Letor features outperforms the state of the art query performance predictors. This is the first study that considers such an amount and variety of Letor features for QPP and that demonstrates they are appropriate for this task.},
keywords = {Letor Features, Post Retrieval Features, Query Difficulty Prediction, Query Features, Query Performance Prediction},
pubstate = {published},
tppubtype = {conference}
}
Query performance prediction (QPP) aims at automatically estimating the information retrieval system effectiveness for any user's query. Previous work has investigated several types of pre- and post-retrieval query performance predictors; the latter has been shown to be more effective. In this paper we investigate the use of features that were initially defined for learning to rank in the task of QPP. While these features have been shown to be useful for learning to rank documents, they have never been studied as query performance predictors. We developed more than 350 variants of them based on summary functions. Conducting experiments on four TREC standard collections, we found that Letor-based features appear to be better QPP than predictors from the literature. Moreover, we show that combining the best Letor features outperforms the state of the art query performance predictors. This is the first study that considers such an amount and variety of Letor features for QPP and that demonstrates they are appropriate for this task.
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