A Framework for the Evaluation of Adaptive IR Systems through Implicit Recommendation

Citation

Catherine Mulwa, Séamus Lawless, M. Rami Ghorab, Eileen O'Donnell, Mary Sharp and Vincent Wade, A Framework for the Evaluation of Adaptive IR Systems through Implicit Recommendation, International Workshop on Task Specific Information Retrieval, TSIR 2011, at the 19th International Conference on Conceptual Structures for Discovering Knowledge, University of Derby, England, 25th-29th July, Simon Andrews, Simon Polovina, Richard Hill and Babak Akhgar, 6828, 6828, Springer-Verlag LNCS, 2011, 366 - 374

Abstract

Personalised Information Retrieval (PIR) has gained considerable attention in recent literature. In PIR different stages of the retrieval process are adapted to the user, such as adapting the user?s query or the results. Personalised recommender frameworks are endowed with intelligent mechanisms to search for products, goods and services that users are interested in. The objective of such tools is to evaluate and filter the huge amount of information available within a specific scope to assist users in their information access processes. This paper presents a web-based adaptive framework for evaluating personalised information retrieval systems. The framework uses implicit recommendation to guide users in deciding which evaluation techniques, metrics and criteria to use. A task-based experiment was conducted to test the functionality and performance of the framework. A Review of evaluation techniques for personalised IR systems was conducted and the results of the analysed survey are presented.

Description

PUBLISHED
University of Derby, England

Endorsement

Review

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Referenced By

Sponsor: Science Foundation Ireland (SFI)
Grant Number: 07/CE/I1142

Other Titles: International Workshop on Task Specific Information Retrieval, TSIR 2011, at the 19th International Conference on Conceptual Structures for Discovering Knowledge
Publisher: Springer-Verlag LNCS
Type of material: Conference Paper