Notice
This item was automatically migrated from a legacy system. It's data has not been checked and might not meet the quality criteria of the present system.
Lipani, A., Lupu, M., Palotti, J., Zuccon, G., & Hanbury, A. (2017). Fixed budget pooling strategies based on fusion methods. In Proceedings of the Symposium on Applied Computing. ACM. https://doi.org/10.1145/3019612.3019692
E194-01 - Forschungsbereich Information und Software Engineering E194-04 - Forschungsbereich E-Commerce
-
Published in:
Proceedings of the Symposium on Applied Computing
-
Date (published):
2017
-
Number of Pages:
6
-
Publisher:
ACM, New York, NY, USA
-
Peer reviewed:
Yes
-
Abstract:
The empirical nature of Information Retrieval (IR) mandates strong experimental practices. The Cranfield/TREC evaluation paradigm represents a keystone of such experimental practices. Within this paradigm, the generation of relevance judgments has been the subject of intense scientific investigation. This is because, on one hand, consistent, precise and numerous judgements are key to reduce evalua...
The empirical nature of Information Retrieval (IR) mandates strong experimental practices. The Cranfield/TREC evaluation paradigm represents a keystone of such experimental practices. Within this paradigm, the generation of relevance judgments has been the subject of intense scientific investigation. This is because, on one hand, consistent, precise and numerous judgements are key to reduce evaluation uncertainty and test collection bias; on the other hand, however, relevance judgements are costly to collect. The selection of which documents to judge for relevance (known as pooling) has therefore great impact in IR evaluation. In this paper, we contribute a set of 8 novel pooling strategies based on retrieval fusion methods. We show that the choice of the pooling strategy has significant effects on the cost needed to obtain an unbiased test collection; we also identify the best performing pooling strategy according to three evaluation measure.
en
Research Areas:
Business Informatics: 10% Logic and Computation: 90%