A Retrievability Analysis: Exploring the Relationship Between Retrieval Bias and Retrieval Performance

Wilkie, C. and Azzopardi, L. (2014) A Retrievability Analysis: Exploring the Relationship Between Retrieval Bias and Retrieval Performance. In: CIKM '14: 23rd ACM International Conference on Conference on Information and Knowledge Management, Shanghai, China, 3-7 Nov 2014, pp. 81-90. ISBN 9781450325981 (doi: 10.1145/2661829.2661948)

[img]
Preview
Text
112736.pdf - Accepted Version

305kB

Abstract

Retrievability provides an alternative way to assess an Information Retrieval (IR) system by measuring how easily documents can be retrieved. Retrievability can also be used to determine the level of retrieval bias a system exerts upon a collection of documents. It has been hypothesised that reducing the retrieval bias will lead to improved performance. To date, it has been shown that this hypothesis does not appear to hold on standard retrieval performance measures (MAP and P@10) when exploring the parameter space of a given retrieval model. However, the evidence is limited and confined to only a few models, collections and measures. In this paper, we perform a comprehensive empirical evaluation analysing the relationship between retrieval bias and retrieval performance using several well known retrieval models, five large TREC test collections and ten performance measures (including the recently proposed PRES, Time Biased Gain (TBG) and U-Measure). For traditional relevance based measures (MAP, P@10, MRR, Recall, etc) the correlation between retrieval bias and performance is moderate. However, for TBG and U-Measure, we find that there is strong and significant negative correlations between retrieval bias and performance (i.e as bias drops, performance increases). These findings suggest that for these more sophisticated, user oriented measures the retrievability bias hypothesis tends to hold. The implication is that for these measures, systems can then be tuned using retrieval bias, without recourse to relevance judgements.

Item Type:Conference Proceedings
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Azzopardi, Dr Leif and Wilkie, Mr Colin
Authors: Wilkie, C., and Azzopardi, L.
College/School:College of Science and Engineering > School of Computing Science
ISBN:9781450325981
Copyright Holders:Copyright © 2014 ACM
Publisher Policy:Reproduced in accordance with the copyright policy of the publisher

University Staff: Request a correction | Enlighten Editors: Update this record

Project CodeAward NoProject NamePrincipal InvestigatorFunder's NameFunder RefLead Dept
590131Models and Measure of FindabilityLeif AzzopardiEngineering & Physical Sciences Research Council (EPSRC)EP/K000330/1COM - COMPUTING SCIENCE