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1
MIRACLE at ImageCLEFphoto 2007: Evaluation of Merging Strategies for Multilingual and Multimedia Information Retrieval
In: http://clef.isti.cnr.it/2007/working_notes/villenaCLEF2007ImagePHOTO.pdf
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First Experiments on Multilingual Opinion Analysis
In: http://research.nii.ac.jp/ntcir/workshop/OnlineProceedings7/pdf/NTCIR7/C2/MOAT/17-NTCIR7-MOAT-Villena-RomanJ.pdf
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3
MIRACLE at VideoCLEF 2008: Classification of Multilingual Speech Transcripts
In: http://clef.isti.cnr.it/2008/working_notes/Villena2-paperCLEF2008_MIRACLE_Vid2RSS2008.pdf
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MIRACLE at ImageCLEFmed 2007: Merging Textual and Visual Strategies to Improve Medical Image Retrieval
In: http://www.clef-campaign.org/2007/working_notes/villenaCLEF2007ImageMED.pdf
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Universidad Carlos III de Madrid
In: http://clef.isti.cnr.it/2009/working_notes/Lana-paperCLEF2009_MIRACLE_ImageCLEFmed2009.pdf
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MIRACLE-GSI at ImageCLEFphoto 2009: Comparing Clustering vs. Classification for Result Reranking
In: http://clef.isti.cnr.it/2009/working_notes/Villena-paperCLEF2009_MIRACLE_ImageCLEFphoto2009.pdf
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MIRACLE-GSI at ImageCLEFphoto 2008: Experiments on Semantic and Statistical Topic Expansion
In: http://clef.isti.cnr.it/2008/working_notes/Villena1-paperCLEF2008_MIRACLE_ImageCLEFphoto2008.pdf
Abstract: This paper describes the participation of MIRACLE-GSI research consortium at the ImageCLEFphoto task of ImageCLEF 2008. For this campaign, the main purpose of our experiments was to evaluate different strategies for topic expansion in a pure textual retrieval context. Two approaches were used: methods based on linguistic information such as thesauri, and statistical methods that use term frequency. First a common baseline algorithm was used in all experiments to process the document collection: text extraction, tokenization, conversion to lowercase, filtering, stemming and finally, indexing and retrieval. Then this baseline algorithm is combined with different expansion techniques. For the semantic expansion, we used WordNet to expand topic terms with related terms. The statistical method consisted of expanding the topics using Agrawal’s apriori algorithm. Relevance-feedback techniques were also used. Last, the result list is reranked using an implementation of k-Medoids clustering algorithm with the target number of clusters set to 20. 14 fully-automatic runs were finally submitted. In general, results are on the average, comparing to other groups.
Keyword: 2008; Categories and Subject Descriptors H.3 [Information Storage and Retrieval; CLEF; domain-specific vocabulary; E.2 [Data Storage Representations]. Keywords Image retrieval; H.2.5 Heterogeneous Databases; H.3.1 Content Analysis and Indexing; H.3.2 Information Storage; H.3.3 Information Search and Retrieval; H.3.4 Systems and Software; H.3.7 Digital libraries. H.2 [Database Management; ImageCLEF; ImageCLEF Photographical Retrieval task; indexing; information retrieval; linguistic engineering; relevance feedback; thesaurus; topic expansion
URL: http://clef.isti.cnr.it/2008/working_notes/Villena1-paperCLEF2008_MIRACLE_ImageCLEFphoto2008.pdf
http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.487.856
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MIRACLE at ImageCLEFmed 2008: Evaluating Strategies for Automatic Topic Expansion
In: http://clef.isti.cnr.it/2008/working_notes/Lana1-paperCLEF2008_MIRACLE_ImageCLEFmed2008.pdf
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