Litcius/Paper detail

TripJudge

Sophia Althammer, Sebastian Hofstätter, Suzan Verberne, Allan Hanbury

2022Proceedings of the 31st ACM International Conference on Information & Knowledge Management25 citationsDOIOpen Access PDF

Abstract

Robust test collections are crucial for Information Retrieval research. Recently there is a growing interest in evaluating retrieval systems for domain-specific retrieval tasks, however these tasks often lack a reliable test collection with human-annotated relevance assessments following the Cranfield paradigm. In the medical domain, the TripClick collection was recently proposed, which contains click log data from the Trip search engine and includes two click-based test sets. However the clicks are biased to the retrieval model used, which remains unknown, and a previous study shows that the test sets have a low judgement coverage for the Top-10 results of lexical and neural retrieval models. In this paper we present the novel, relevance judgement test collection TripJudge for TripClick health retrieval. We collect relevance judgements in an annotation campaign and ensure the quality and reusability of TripJudge by a variety of ranking methods for pool creation, by multiple judgements per query-document pair and by an at least moderate inter-annotator agreement. We compare system evaluation with TripJudge and TripClick and find that that click and judgement-based evaluation can lead to substantially different system rankings.

Topics & Concepts

Computer scienceInformation retrievalRanking (information retrieval)Relevance (law)JudgementTest (biology)AnnotationDomain (mathematical analysis)Variety (cybernetics)Data collectionArtificial intelligenceData miningStatisticsMathematicsBiologyPolitical scienceMathematical analysisLawPaleontologyInformation Retrieval and Search BehaviorTopic ModelingExpert finding and Q&A systems