ViewpointS: When social ranking meets the semantic web

Reconciling the ecosystem of semantic Web data with the ecosystem of social Web participation has been a major issue for the Web Science community. To answer this need, we propose an innovative approach called ViewpointS where the knowledge is topologically, rather than logically, explored and assessed. Both social contributions and linked data are represented by triples agent-resource-resource called “viewpoints”. A “viewpoint” is the subjective declaration by an agent (human or artificial) of some semantic proximity between two resources. Knowledge resources and viewpoints form a bipartite graph called “knowledge graph”. Information retrieval is processed on demand by choosing a user's “perspective” i.e., rules for quantifying and aggregating “viewpoints” which yield a “knowledge map”. This map is equipped with a topology: the more viewpoints between two given resources, the shorter the distance; moreover, the distances between resources evolve along time according to new viewpoints, in the metaphor of synapses' strengths. Our hypothesis is that these dynamics actualize an adaptive, actionable collective knowledge. We test our hypothesis with the MovieLens dataset by showing the ability of our formalism to unify the semantics issued from linked data e.g., movies' genres and the social Web e.g., users' ratings. Moreover, our results prove the relevance of the topological approach for assessing and comparing along the time the respective powers of 'genres' and 'ratings' for recommendation.

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Main Authors: Lemoisson, Philippe, Surroca, Guillaume, Jonquet, Clément, Cerri, Stefano A.
Format: conference_item biblioteca
Language:eng
Published: AAAI
Subjects:C30 - Documentation et information, 000 - Autres thèmes,
Online Access:http://agritrop.cirad.fr/584630/
http://agritrop.cirad.fr/584630/1/15432-68670-1-PB.pdf
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spelling dig-cirad-fr-5846302022-03-30T11:54:24Z http://agritrop.cirad.fr/584630/ http://agritrop.cirad.fr/584630/ ViewpointS: When social ranking meets the semantic web. Lemoisson Philippe, Surroca Guillaume, Jonquet Clément, Cerri Stefano A.. 2017. In : Proceedings of the Thirtieth International Florida Artificial Intelligence Research Society Conference. Rus Vasile (ed.), Markov Zdravko (ed.). AAAI. Palo Alto : AAAI, 329-334., 329 ISBN 978-1-57735-787-2 International Florida Artificial Intelligence Research Society Conference. 30, Marco Island, États-Unis, 22 Mai 2017/24 Mai 2017.http://www.aaai.org/Library/FLAIRS/flairs17contents.php <http://www.aaai.org/Library/FLAIRS/flairs17contents.php> Researchers ViewpointS: When social ranking meets the semantic web Lemoisson, Philippe Surroca, Guillaume Jonquet, Clément Cerri, Stefano A. eng 2017 AAAI Proceedings of the Thirtieth International Florida Artificial Intelligence Research Society Conference C30 - Documentation et information 000 - Autres thèmes Reconciling the ecosystem of semantic Web data with the ecosystem of social Web participation has been a major issue for the Web Science community. To answer this need, we propose an innovative approach called ViewpointS where the knowledge is topologically, rather than logically, explored and assessed. Both social contributions and linked data are represented by triples agent-resource-resource called “viewpoints”. A “viewpoint” is the subjective declaration by an agent (human or artificial) of some semantic proximity between two resources. Knowledge resources and viewpoints form a bipartite graph called “knowledge graph”. Information retrieval is processed on demand by choosing a user's “perspective” i.e., rules for quantifying and aggregating “viewpoints” which yield a “knowledge map”. This map is equipped with a topology: the more viewpoints between two given resources, the shorter the distance; moreover, the distances between resources evolve along time according to new viewpoints, in the metaphor of synapses' strengths. Our hypothesis is that these dynamics actualize an adaptive, actionable collective knowledge. We test our hypothesis with the MovieLens dataset by showing the ability of our formalism to unify the semantics issued from linked data e.g., movies' genres and the social Web e.g., users' ratings. Moreover, our results prove the relevance of the topological approach for assessing and comparing along the time the respective powers of 'genres' and 'ratings' for recommendation. conference_item info:eu-repo/semantics/conferenceObject Conference info:eu-repo/semantics/publishedVersion http://agritrop.cirad.fr/584630/1/15432-68670-1-PB.pdf text Cirad license info:eu-repo/semantics/openAccess https://agritrop.cirad.fr/mention_legale.html http://www.aaai.org/Library/FLAIRS/flairs17contents.php info:eu-repo/semantics/altIdentifier/purl/http://www.aaai.org/Library/FLAIRS/flairs17contents.php
institution CIRAD FR
collection DSpace
country Francia
countrycode FR
component Bibliográfico
access En linea
databasecode dig-cirad-fr
tag biblioteca
region Europa del Oeste
libraryname Biblioteca del CIRAD Francia
language eng
topic C30 - Documentation et information
000 - Autres thèmes
C30 - Documentation et information
000 - Autres thèmes
spellingShingle C30 - Documentation et information
000 - Autres thèmes
C30 - Documentation et information
000 - Autres thèmes
Lemoisson, Philippe
Surroca, Guillaume
Jonquet, Clément
Cerri, Stefano A.
ViewpointS: When social ranking meets the semantic web
description Reconciling the ecosystem of semantic Web data with the ecosystem of social Web participation has been a major issue for the Web Science community. To answer this need, we propose an innovative approach called ViewpointS where the knowledge is topologically, rather than logically, explored and assessed. Both social contributions and linked data are represented by triples agent-resource-resource called “viewpoints”. A “viewpoint” is the subjective declaration by an agent (human or artificial) of some semantic proximity between two resources. Knowledge resources and viewpoints form a bipartite graph called “knowledge graph”. Information retrieval is processed on demand by choosing a user's “perspective” i.e., rules for quantifying and aggregating “viewpoints” which yield a “knowledge map”. This map is equipped with a topology: the more viewpoints between two given resources, the shorter the distance; moreover, the distances between resources evolve along time according to new viewpoints, in the metaphor of synapses' strengths. Our hypothesis is that these dynamics actualize an adaptive, actionable collective knowledge. We test our hypothesis with the MovieLens dataset by showing the ability of our formalism to unify the semantics issued from linked data e.g., movies' genres and the social Web e.g., users' ratings. Moreover, our results prove the relevance of the topological approach for assessing and comparing along the time the respective powers of 'genres' and 'ratings' for recommendation.
format conference_item
topic_facet C30 - Documentation et information
000 - Autres thèmes
author Lemoisson, Philippe
Surroca, Guillaume
Jonquet, Clément
Cerri, Stefano A.
author_facet Lemoisson, Philippe
Surroca, Guillaume
Jonquet, Clément
Cerri, Stefano A.
author_sort Lemoisson, Philippe
title ViewpointS: When social ranking meets the semantic web
title_short ViewpointS: When social ranking meets the semantic web
title_full ViewpointS: When social ranking meets the semantic web
title_fullStr ViewpointS: When social ranking meets the semantic web
title_full_unstemmed ViewpointS: When social ranking meets the semantic web
title_sort viewpoints: when social ranking meets the semantic web
publisher AAAI
url http://agritrop.cirad.fr/584630/
http://agritrop.cirad.fr/584630/1/15432-68670-1-PB.pdf
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AT surrocaguillaume viewpointswhensocialrankingmeetsthesemanticweb
AT jonquetclement viewpointswhensocialrankingmeetsthesemanticweb
AT cerristefanoa viewpointswhensocialrankingmeetsthesemanticweb
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