Rank-biased precision for measurement of retrieval effectiveness

Author:

Moffat Alistair1,Zobel Justin2

Affiliation:

1. The University of Melbourne, Victoria, Australia

2. RMIT University and NICTA Victoria Research Laboratory, Victoria, Australia

Abstract

A range of methods for measuring the effectiveness of information retrieval systems has been proposed. These are typically intended to provide a quantitative single-value summary of a document ranking relative to a query. However, many of these measures have failings. For example, recall is not well founded as a measure of satisfaction, since the user of an actual system cannot judge recall. Average precision is derived from recall, and suffers from the same problem. In addition, average precision lacks key stability properties that are needed for robust experiments. In this article, we introduce a new effectiveness metric, rank-biased precision , that avoids these problems. Rank-biased pre-cision is derived from a simple model of user behavior, is robust if answer rankings are extended to greater depths, and allows accurate quantification of experimental uncertainty, even when only partial relevance judgments are available.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Science Applications,General Business, Management and Accounting,Information Systems

Reference39 articles.

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4. Borlund P. and Ingwersen P. 1998. Measures of relative relevance and ranked half-life: Performance indicators for interactive IR. In Proceedings of the Twenty-First Annual International ACM SIGIR Conference on Research and Development in Information Retrieval W. B. Croft A. Moffat C. J. van Rijsbergen R. Wilkinson and J. Zobel Eds. ACM Press New York NY 324--331. 10.1145/290941.291019 Borlund P. and Ingwersen P. 1998. Measures of relative relevance and ranked half-life: Performance indicators for interactive IR. In Proceedings of the Twenty-First Annual International ACM SIGIR Conference on Research and Development in Information Retrieval W. B. Croft A. Moffat C. J. van Rijsbergen R. Wilkinson and J. Zobel Eds. ACM Press New York NY 324--331. 10.1145/290941.291019

5. Retrieval evaluation with incomplete information

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