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- Publication . Article . Other literature type . Conference object . 2020Open Access EnglishAuthors:Stefan Bornhofen; Marten Düring;Stefan Bornhofen; Marten Düring;Publisher: HAL CCSDCountry: FranceProject: ANR | BLIZAAR (ANR-15-CE23-0002)
AbstractThe paper presents Intergraph, a graph-based visual analytics technical demonstrator for the exploration and study of content in historical document collections. The designed prototype is motivated by a practical use case on a corpus of circa 15.000 digitized resources about European integration since 1945. The corpus allowed generating a dynamic multilayer network which represents different kinds of named entities appearing and co-appearing in the collections. To our knowledge, Intergraph is one of the first interactive tools to visualize dynamic multilayer graphs for collections of digitized historical sources. Graph visualization and interaction methods have been designed based on user requirements for content exploration by non-technical users without a strong background in network science, and to compensate for common flaws with the annotation of named entities. Users work with self-selected subsets of the overall data by interacting with a scene of small graphs which can be added, altered and compared. This allows an interest-driven navigation in the corpus and the discovery of the interconnections of its entities across time.
Average popularityAverage popularity In bottom 99%Average influencePopularity: Citation-based measure reflecting the current impact.Average influence In bottom 99%Influence: Citation-based measure reflecting the total impact.add Add to ORCIDPlease grant OpenAIRE to access and update your ORCID works.This Research product is the result of merged Research products in OpenAIRE.
You have already added works in your ORCID record related to the merged Research product. - Publication . Article . Preprint . 2019Open Access EnglishAuthors:Kolar, Jana; Cugmas, Marjan; Ferligoj, Anu��ka;Kolar, Jana; Cugmas, Marjan; Ferligoj, Anu��ka;Project: EC | ACCELERATE (731112)
In 2018, the European Strategic Forum for research infrastructures (ESFRI) was tasked by the Competitiveness Council, a configuration of the Council of the EU, to develop a common approach for monitoring of Research Infrastructures' performance. To this end, ESFRI established a working group, which has proposed 21 Key Performance Indicators (KPIs) to monitor the progress of the Research Infrastructures (RIs) addressed towards their objectives. The RIs were then asked to assess their relevance for their institution. The paper aims to identify the relevance of certain indicators for particular groups of RIs by using cluster and discriminant analysis. This could contribute to development of a monitoring system, tailored to particular RIs. To obtain a typology of the RIs, we first performed cluster analysis of the RIs according to their properties, which revealed clusters of RIs with similar characteristics, based on to the domain of operation, such as food, environment or engineering. Then, discriminant analysis was used to study how the relevance of the KPIs differs among the obtained clusters. This analysis revealed that the percentage of RIs correctly classified into five clusters, using the KPIs, is 80%. Such a high percentage indicates that there are significant differences in the relevance of certain indicators, depending on the ESFRI domain of the RI. The indicators therefore need to be adapted to the type of infrastructure. It is therefore proposed that the Strategic Working Groups of ESFRI addressing specific domains should be involved in the tailored development of the monitoring of pan-European RIs. 15 pages, 8 tables, 3 figures
Average popularityAverage popularity In bottom 99%Average influencePopularity: Citation-based measure reflecting the current impact.Average influence In bottom 99%Influence: Citation-based measure reflecting the total impact.add Add to ORCIDPlease grant OpenAIRE to access and update your ORCID works.This Research product is the result of merged Research products in OpenAIRE.
You have already added works in your ORCID record related to the merged Research product. - Publication . Other literature type . Conference object . 2018Open Access EnglishAuthors:Longhi, Julien;Longhi, Julien;Publisher: HAL CCSDCountry: France
International audience
- Other research product . Other ORP type . 2018Open AccessAuthors:Boschetti, Federico; Buzzoni, Marina;Boschetti, Federico; Buzzoni, Marina;Publisher: AlmaMaterCountry: Italy
- Publication . Conference object . 2020Open Access EnglishAuthors:Nicholas, Lionel; Lyding, Verena; Borg, Claudia; Forascu, Corina; Fort, Karen; Zdravkova, Katerina; Kosem, Iztok; Cibej, Jaka; Holdt, Spela Arhar; Millour, Alice; +9 moreNicholas, Lionel; Lyding, Verena; Borg, Claudia; Forascu, Corina; Fort, Karen; Zdravkova, Katerina; Kosem, Iztok; Cibej, Jaka; Holdt, Spela Arhar; Millour, Alice; Konig, Alexander; Rodosthenous, Christos; Sangati, Federico; Hassan, Umair ul; Katinskaia, Anisia; Barreiro, Anabela; Aparaschivei, Lavina; HaCohen-Kerner, Yaakov; 12th edition of the Language Resources and Evaluation Conference (LREC'20);Country: Malta
We introduce in this paper a generic approach to combine implicit crowdsourcing and language learning in order to mass-produce language resources (LRs) for any language for which a crowd of language learners can be involved. We present the approach by explaining its core paradigm that consists in pairing specific types of LRs with specific exercises, by detailing both its strengths and challenges, and by discussing how much these challenges have been addressed at present. Accordingly, we also report on on-going proof-of-concept efforts aiming at developing the first prototypical implementation of the approach in order to correct and extend an LR called ConceptNet based on the input crowdsourced from language learners. We then present an international network called the European Network for Combining Language Learning with Crowdsourcing Techniques (enetCollect) that provides the context to accelerate the implementation of the generic approach. Finally, we exemplify how it can be used in several language learning scenarios to produce a multitude of NLP resources and how it can therefore alleviate the long-standing NLP issue of the lack of LRs. peer-reviewed
- Publication . Book . 2019EnglishAuthors:Darhri, Anas Alaoui M.; Vincent Baillet; Bastien Bourineau; Alessio Calantropio; Gabriella Carpentiero; Medhi Chayani; Livio de Luca; Iwona Dudek; Bruno Dutailly; Hélène Gautier; +22 moreDarhri, Anas Alaoui M.; Vincent Baillet; Bastien Bourineau; Alessio Calantropio; Gabriella Carpentiero; Medhi Chayani; Livio de Luca; Iwona Dudek; Bruno Dutailly; Hélène Gautier; Eleonora Grilli; Valentin Grimaud; Christoph Hoffmann; Adeline Joffres; Nenad Jončić; Michel Jordan; Justin Kimball; Adeline Manuel; Patrick Mcinerney; Imanol Muñoz Pandiella; Ariane Néroulidis; Erica Nocerino; Anthony Pamart; Costas Papadopoulos; Marco Potenziani; Emilie Saubestre; Roberto Scopigno; Dorian Seillier; Sarah Tournon-Valiente; Martina Trognitz; Jean-Marc Vallet; Chiara Zuanni;Publisher: HAL CCSDCountry: FranceProject: EC | PARTHENOS (654119)
International audience; Through this White Paper, which gathers contributions from experts of 3D data as well as professionals concerned with the interoperability and sustainability of 3D research data, the PARTHENOS project aims at highlighting some of the current issues they have to face, with possible specific points according to the discipline, and potential practices and methodologies to deal with these issues.During the workshop, several tools to deal with these issues have been introduced and confronted with the participants experiences, this White Paper now intends to go further by also integrating participants feedbacks and suggestions of potential improvements.Therefore, even if the focus is put on specific tools, the main goal is to contribute to the development of standardized good practices related to the sharing, publication, storage and long-term preservation of 3D data.
6 Research products, page 1 of 1
Loading
- Publication . Article . Other literature type . Conference object . 2020Open Access EnglishAuthors:Stefan Bornhofen; Marten Düring;Stefan Bornhofen; Marten Düring;Publisher: HAL CCSDCountry: FranceProject: ANR | BLIZAAR (ANR-15-CE23-0002)
AbstractThe paper presents Intergraph, a graph-based visual analytics technical demonstrator for the exploration and study of content in historical document collections. The designed prototype is motivated by a practical use case on a corpus of circa 15.000 digitized resources about European integration since 1945. The corpus allowed generating a dynamic multilayer network which represents different kinds of named entities appearing and co-appearing in the collections. To our knowledge, Intergraph is one of the first interactive tools to visualize dynamic multilayer graphs for collections of digitized historical sources. Graph visualization and interaction methods have been designed based on user requirements for content exploration by non-technical users without a strong background in network science, and to compensate for common flaws with the annotation of named entities. Users work with self-selected subsets of the overall data by interacting with a scene of small graphs which can be added, altered and compared. This allows an interest-driven navigation in the corpus and the discovery of the interconnections of its entities across time.
Average popularityAverage popularity In bottom 99%Average influencePopularity: Citation-based measure reflecting the current impact.Average influence In bottom 99%Influence: Citation-based measure reflecting the total impact.add Add to ORCIDPlease grant OpenAIRE to access and update your ORCID works.This Research product is the result of merged Research products in OpenAIRE.
You have already added works in your ORCID record related to the merged Research product. - Publication . Article . Preprint . 2019Open Access EnglishAuthors:Kolar, Jana; Cugmas, Marjan; Ferligoj, Anu��ka;Kolar, Jana; Cugmas, Marjan; Ferligoj, Anu��ka;Project: EC | ACCELERATE (731112)
In 2018, the European Strategic Forum for research infrastructures (ESFRI) was tasked by the Competitiveness Council, a configuration of the Council of the EU, to develop a common approach for monitoring of Research Infrastructures' performance. To this end, ESFRI established a working group, which has proposed 21 Key Performance Indicators (KPIs) to monitor the progress of the Research Infrastructures (RIs) addressed towards their objectives. The RIs were then asked to assess their relevance for their institution. The paper aims to identify the relevance of certain indicators for particular groups of RIs by using cluster and discriminant analysis. This could contribute to development of a monitoring system, tailored to particular RIs. To obtain a typology of the RIs, we first performed cluster analysis of the RIs according to their properties, which revealed clusters of RIs with similar characteristics, based on to the domain of operation, such as food, environment or engineering. Then, discriminant analysis was used to study how the relevance of the KPIs differs among the obtained clusters. This analysis revealed that the percentage of RIs correctly classified into five clusters, using the KPIs, is 80%. Such a high percentage indicates that there are significant differences in the relevance of certain indicators, depending on the ESFRI domain of the RI. The indicators therefore need to be adapted to the type of infrastructure. It is therefore proposed that the Strategic Working Groups of ESFRI addressing specific domains should be involved in the tailored development of the monitoring of pan-European RIs. 15 pages, 8 tables, 3 figures
Average popularityAverage popularity In bottom 99%Average influencePopularity: Citation-based measure reflecting the current impact.Average influence In bottom 99%Influence: Citation-based measure reflecting the total impact.add Add to ORCIDPlease grant OpenAIRE to access and update your ORCID works.This Research product is the result of merged Research products in OpenAIRE.
You have already added works in your ORCID record related to the merged Research product. - Publication . Other literature type . Conference object . 2018Open Access EnglishAuthors:Longhi, Julien;Longhi, Julien;Publisher: HAL CCSDCountry: France
International audience
- Other research product . Other ORP type . 2018Open AccessAuthors:Boschetti, Federico; Buzzoni, Marina;Boschetti, Federico; Buzzoni, Marina;Publisher: AlmaMaterCountry: Italy
- Publication . Conference object . 2020Open Access EnglishAuthors:Nicholas, Lionel; Lyding, Verena; Borg, Claudia; Forascu, Corina; Fort, Karen; Zdravkova, Katerina; Kosem, Iztok; Cibej, Jaka; Holdt, Spela Arhar; Millour, Alice; +9 moreNicholas, Lionel; Lyding, Verena; Borg, Claudia; Forascu, Corina; Fort, Karen; Zdravkova, Katerina; Kosem, Iztok; Cibej, Jaka; Holdt, Spela Arhar; Millour, Alice; Konig, Alexander; Rodosthenous, Christos; Sangati, Federico; Hassan, Umair ul; Katinskaia, Anisia; Barreiro, Anabela; Aparaschivei, Lavina; HaCohen-Kerner, Yaakov; 12th edition of the Language Resources and Evaluation Conference (LREC'20);Country: Malta
We introduce in this paper a generic approach to combine implicit crowdsourcing and language learning in order to mass-produce language resources (LRs) for any language for which a crowd of language learners can be involved. We present the approach by explaining its core paradigm that consists in pairing specific types of LRs with specific exercises, by detailing both its strengths and challenges, and by discussing how much these challenges have been addressed at present. Accordingly, we also report on on-going proof-of-concept efforts aiming at developing the first prototypical implementation of the approach in order to correct and extend an LR called ConceptNet based on the input crowdsourced from language learners. We then present an international network called the European Network for Combining Language Learning with Crowdsourcing Techniques (enetCollect) that provides the context to accelerate the implementation of the generic approach. Finally, we exemplify how it can be used in several language learning scenarios to produce a multitude of NLP resources and how it can therefore alleviate the long-standing NLP issue of the lack of LRs. peer-reviewed
- Publication . Book . 2019EnglishAuthors:Darhri, Anas Alaoui M.; Vincent Baillet; Bastien Bourineau; Alessio Calantropio; Gabriella Carpentiero; Medhi Chayani; Livio de Luca; Iwona Dudek; Bruno Dutailly; Hélène Gautier; +22 moreDarhri, Anas Alaoui M.; Vincent Baillet; Bastien Bourineau; Alessio Calantropio; Gabriella Carpentiero; Medhi Chayani; Livio de Luca; Iwona Dudek; Bruno Dutailly; Hélène Gautier; Eleonora Grilli; Valentin Grimaud; Christoph Hoffmann; Adeline Joffres; Nenad Jončić; Michel Jordan; Justin Kimball; Adeline Manuel; Patrick Mcinerney; Imanol Muñoz Pandiella; Ariane Néroulidis; Erica Nocerino; Anthony Pamart; Costas Papadopoulos; Marco Potenziani; Emilie Saubestre; Roberto Scopigno; Dorian Seillier; Sarah Tournon-Valiente; Martina Trognitz; Jean-Marc Vallet; Chiara Zuanni;Publisher: HAL CCSDCountry: FranceProject: EC | PARTHENOS (654119)
International audience; Through this White Paper, which gathers contributions from experts of 3D data as well as professionals concerned with the interoperability and sustainability of 3D research data, the PARTHENOS project aims at highlighting some of the current issues they have to face, with possible specific points according to the discipline, and potential practices and methodologies to deal with these issues.During the workshop, several tools to deal with these issues have been introduced and confronted with the participants experiences, this White Paper now intends to go further by also integrating participants feedbacks and suggestions of potential improvements.Therefore, even if the focus is put on specific tools, the main goal is to contribute to the development of standardized good practices related to the sharing, publication, storage and long-term preservation of 3D data.