Crowdsourcing methodologies have recently emerged as a cheap and fast alternative to the traditional document assessment process for ground truth creation. Early approaches make use of voting and/or classification methodologies to combine crowd judgements into a merged pool, used as reference in the evaluation process. A measure-based approach has instead been used in Assessor-driven Weighted Averages for Retrieval Evaluation (AWARE) [3], focusing in optimizing the final evaluation measure without merging judgements at pool level. s-AWARE extends AWARE with a set of supervised methods. We rely on several TREC collections to evaluate s-AWARE and we show that it outperforms state-of-the-art methods. Moreover, our results show that when moving to the real case scenario where a crowd-assessor only judges a portion of the dataset, s-AWARE is quite an effective approach.

s-AWARE: Using crowd judgements in supervised measure-based methods for IR evaluation

Ferrante M.;Ferro N.;Piazzon L.
2021

Abstract

Crowdsourcing methodologies have recently emerged as a cheap and fast alternative to the traditional document assessment process for ground truth creation. Early approaches make use of voting and/or classification methodologies to combine crowd judgements into a merged pool, used as reference in the evaluation process. A measure-based approach has instead been used in Assessor-driven Weighted Averages for Retrieval Evaluation (AWARE) [3], focusing in optimizing the final evaluation measure without merging judgements at pool level. s-AWARE extends AWARE with a set of supervised methods. We rely on several TREC collections to evaluate s-AWARE and we show that it outperforms state-of-the-art methods. Moreover, our results show that when moving to the real case scenario where a crowd-assessor only judges a portion of the dataset, s-AWARE is quite an effective approach.
2021
Electronic
Inglese
roc. 17th Italian Research Conference on Digital Libraries (IRCDL 2021)
2816
162
168
7
CEUR-WS
anonymous
17th Italian Research Conference on Digital Libraries, IRCDL 2021
2021
ita
Nazionale
contributo
Computer Science & Engineering
ITALIA
no
273
Ferrante, M.; Ferro, N.; Piazzon, L.
3
none
info:eu-repo/semantics/conferenceObject
04 CONTRIBUTO IN ATTO DI CONVEGNO::04.01 - Contributo in atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3386172
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