A Semantic Framework for Evaluating Topical Search Methods

The absence of reliable and efficient techniques to evaluate information retrieval systems has become a bottleneck in the development of novel retrieval methods. In traditional approaches users or hired evaluators provide manual assessments of relevance. However these approaches are neither e...

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Main Authors: Rocío L. Cecchini, Carlos M. Lorenzetti, Ana G. Maguitman, Filippo Menczer
Format: Article
Language:English
Published: Centro Latinoamericano de Estudios en Informática 2011-04-01
Series:CLEI Electronic Journal
Online Access:http://clei.org/cleiej-beta/index.php/cleiej/article/view/181
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spelling doaj-e1b920f711f24d58917dfd642bd38ad02020-11-24T21:04:31ZengCentro Latinoamericano de Estudios en InformáticaCLEI Electronic Journal0717-50002011-04-0114110.19153/cleiej.14.1.2A Semantic Framework for Evaluating Topical Search MethodsRocío L. CecchiniCarlos M. LorenzettiAna G. MaguitmanFilippo Menczer The absence of reliable and efficient techniques to evaluate information retrieval systems has become a bottleneck in the development of novel retrieval methods. In traditional approaches users or hired evaluators provide manual assessments of relevance. However these approaches are neither efficient nor reliable since they do not scale with the complexity and heterogeneity of available digital information. Automatic approaches, on the other hand, could be efficient but disregard semantic data, which is usually important to assess the actual performance of the evaluated methods. This article proposes to use topic ontologies and semantic similarity data derived from these ontologies to implement an automatic semantic evaluation framework for information retrieval systems. The use of semantic simi- larity data allows to capture the notion of partial relevance, generalizing traditional evaluation metrics, and giving rise to novel performance measures such as semantic precision and semantic harmonic mean. The validity of the approach is supported by user studies and the application of the proposed framework is illustrated with the evaluation of topical retrieval systems. The evaluated systems include a baseline, a supervised version of the Bo1 query refinement method and two multi-objective evolutionary algorithms for context-based retrieval. Finally, we discuss the advantages of ap- plying evaluation metrics that account for semantic similarity data and partial relevance over existing metrics based on the notion of total relevance. http://clei.org/cleiej-beta/index.php/cleiej/article/view/181
collection DOAJ
language English
format Article
sources DOAJ
author Rocío L. Cecchini
Carlos M. Lorenzetti
Ana G. Maguitman
Filippo Menczer
spellingShingle Rocío L. Cecchini
Carlos M. Lorenzetti
Ana G. Maguitman
Filippo Menczer
A Semantic Framework for Evaluating Topical Search Methods
CLEI Electronic Journal
author_facet Rocío L. Cecchini
Carlos M. Lorenzetti
Ana G. Maguitman
Filippo Menczer
author_sort Rocío L. Cecchini
title A Semantic Framework for Evaluating Topical Search Methods
title_short A Semantic Framework for Evaluating Topical Search Methods
title_full A Semantic Framework for Evaluating Topical Search Methods
title_fullStr A Semantic Framework for Evaluating Topical Search Methods
title_full_unstemmed A Semantic Framework for Evaluating Topical Search Methods
title_sort semantic framework for evaluating topical search methods
publisher Centro Latinoamericano de Estudios en Informática
series CLEI Electronic Journal
issn 0717-5000
publishDate 2011-04-01
description The absence of reliable and efficient techniques to evaluate information retrieval systems has become a bottleneck in the development of novel retrieval methods. In traditional approaches users or hired evaluators provide manual assessments of relevance. However these approaches are neither efficient nor reliable since they do not scale with the complexity and heterogeneity of available digital information. Automatic approaches, on the other hand, could be efficient but disregard semantic data, which is usually important to assess the actual performance of the evaluated methods. This article proposes to use topic ontologies and semantic similarity data derived from these ontologies to implement an automatic semantic evaluation framework for information retrieval systems. The use of semantic simi- larity data allows to capture the notion of partial relevance, generalizing traditional evaluation metrics, and giving rise to novel performance measures such as semantic precision and semantic harmonic mean. The validity of the approach is supported by user studies and the application of the proposed framework is illustrated with the evaluation of topical retrieval systems. The evaluated systems include a baseline, a supervised version of the Bo1 query refinement method and two multi-objective evolutionary algorithms for context-based retrieval. Finally, we discuss the advantages of ap- plying evaluation metrics that account for semantic similarity data and partial relevance over existing metrics based on the notion of total relevance.
url http://clei.org/cleiej-beta/index.php/cleiej/article/view/181
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