Livrables
As a result of task 5.3, this deliverable will consist of implemented algorithms that will be integrated within the data integration infrastructure developed within WP2 (T 2.3).
Time Series Operators for MonetDBThis deliverable will report the extended support for time series data processing in MonetDB, including integration with the software provided by D4.1. Corresponding software will be made available through the MonetDB open-source repository.
A set of aggregation algorithms and their experimental evaluationAs a result of task 3.2, this deliverable will consist of implemented algorithms that will be integrated within the data integration infrastructure developed within WP2 and will feed into WP5,6, and 7.
Data integration solutionA MonetDB data integration solution for modeling and storing i) the different available datasets from all partners, ii) the taxonomy, iii) the extracted named entities and links. The deliverable will also include the extension of MonetDB with JSON support to include the management of semi-structured data. The proposed solution will be used in WP4, WP5, and WP6.
A set of crowdsourcing interfacesThis deliverable will consist of a set of Human Intelligence Task design experimentally validated for object recognition in images, Validation of named entity extraction, image labeling. This will be available for tasks in WP5.
Named Entity Recognition and Linking methodsAs a result of task 1.1, this deliverable will consists of implemented algorithms for entity extraction from textual documents and linking to the ontology defined in WP1. The result will feed into WP 4, 5, and 6.
This report will describe our methodology for learning text joins and a robust entity recognizer for the fashion domain.
Surveys design and crowdsourcing tasksThe tangible result of task 3.3 will be models generated by means of crowdsourcing which will be used to address our use-cases in WP5 and WP6.
Communication planThis deliverable will contain a plan of communications relevant for the project dissemination and community building activities including planned activities to support standardisation and interoperability. Outcomes of these efforts will be reported in Periodic Activity Reports produced in WP7.
Project factsheetA brief project Fact Sheet suitable for Web publishing will be published within one month from the start of the project. The Fact Sheet will outline the project's rationale and objectives, specify its technical baseline and intended target groups and application domains, and detail intermediate and final outputs. The Fact Sheet can be used by the Commission for its own dissemination and awareness activities throughout the project lifecycle, and may be published on EC and EC sponsored Web sites. The factsheet has to be maintained and updated until the end of the project; this will be documented in the regular reporting.
Relation Extraction with Stacked Deep LearningThis report integrates relation extraction and stacked deep learning for selected relations of the Zalando FDWH. We will investigate, how much of the training should be executed in the database or how much may be shipped to a less expensive GPU-based architecture.
Software Requirements: SSM library for time series modelling and trend predictionMost modern algorithms of State Space Models (SSM) for time series analysis and probabilistic inference will be summarised in this deliverable and will be used as a basis for future software developments in the project. The output will be available for project internal and public use.
Showcase specification and dissemination summaryThis deliverable will present the produced promotion and dissemination material, demonstration workflows, and the fully functional data integration infrastructure ready to be demo-able to the public also including screencasts (as indicated in T7.2) . We will grant the Commission the right to use the Showcase for its own dissemination and awareness activities (including Web based and electronic publications) after the completion of the project. The Showcase will feature a meaningful subset (software, data, etc.) of the functionality characterizing the project demonstrator(s) arrived at, along with relevant copyright notices and contact information, and suitable installation aids and run-time interfaces. We will also report about project activities undertaken to support standardisation of project results and collaboration with other projects and relevant initiatives as well as the results of reaching-out by means of press, social media, open-source communities using demos, use cases, and benchmark results realized during the project. As planned in T7.1, we will report on our contribution to the Big Data Value PPP activities.
Showcase specificationThis deliverable will contain a specification of the FashionBrain data integration infrastructure including design of promotion material and requirements for software needed to run it.
Survey document of existing datasets and data integration solutions (M6)This deliverable will consist of an overview of existing state-of-the-art solutions for data integration including infrastructures, algorithms, and datasets covering both academic research as well as industry solutions. This will be the result of Task 1.1.
This demo presents fully functional and documented text joins for the example of the Zalando FDWH. Given a fashion data warehouse, we will demo executing text joins for common (and often idiosyncratic) fashion entities, such as brand or products.
Early Demo on textual image searchThis deliverable consists of a preliminary image search prototype based on textual entities. This is the basis for D 6.5, which will extend the textual component by NLP and multi-linguality.
Early Demo on Fashion Trend PredictionThis early demo will show how it will be possible to detect fashion trends (style) on fashion time series over time.
Demo on Relation Extraction with Stacked Deep LearningThis demo integrates methods for stacked deep learning on typical crowd-based workflows for trend detection and brand monitoring.
Demo on Fashion Trend PredictionThis demo will show how a particular fashion trend (style) is detected on fashion time series over time. The prediction will be implemented as an operator in MonetDB.
Scalable Crowdsourced Social Media AnnotationThis deliverable consists of a publicly available website with data visualization functionalities. We demonstrate that we analysed hundreds of fashion blogs, instagram profiles and that we are able to constantly update the profiles with recently published images.
Demo on textual image searchThis deliverable consists of a image search prototype system which uses all of the data collected and allows users to search by images, collects user feedback and is able to periodically improve its results based on this interaction data. It extends the textual component of D 6.3 by NLP and multi-linguality primarily targeting on German, English, French, and Italian.
Product Taxonomy LinkingThis deliverable extends D5.1 with a demo that integrates the products social media posts linking, that means that we recognise products from different social media channels.
Setting up the public, general audience targeted project Web site. The site will provide project overviews and highlights; up-to-date information on intermediate and final project results, including public reports and publications as well as synthesis reports drawn from selected confidential material in non-proprietary formats (e.g. PDF); project events, including e.g. user group meetings, conferences and workshops; contact details, etc. The project's Web site first point of access will describe the goals of the project in a simple jargon free language. The Web site will be maintained and updated until the end of the project. All open source components published will be extensively documented by means of textual documents and screencasts of professional quality illustrating how to download, install and operate the components in question. Documentation manuals and screencasts will be specifically identified as project deliverables and prominently published on the project's Web site.
Publications
Auteurs:
Schneider, Rudolf; Oberhauser, Tom; Klatt, Tobias; Gers, Felix A.; Löser, Alexander
Publié dans:
Conference on Empirical Methods on Natural Language Processing Workshop Proceedings, Numéro 3, 2017, Page(s) 8
Éditeur:
CEUR-WS.org
Auteurs:
Checco, Alessandro; Demartini, Gianluca; Loeser, Alexander; Arous, Ines; Khayati, Mourad; Dantone, Matthias; Koopmanschap, Richard; Stalinov, Svetlin; Kersten, Martin; Zhang, Ying
Publié dans:
Machine learning meets fashion' workshop at KDD 2017, Numéro 2, 2017
Éditeur:
arxiv
Auteurs:
Kilias, Torsten; Löser, Alexander; Gers, Felix A.; Koopmanschap, Richard; Zhang, Ying; Kersten, Martin
Publié dans:
IEEE BigComp2019, Numéro 1, 2018, Page(s) 12
Éditeur:
arxiv
Auteurs:
Alessandro Checco, Kevin Roitero, Eddy Maddalena, Stefano Mizzaro and Gianluca Demartini
Publié dans:
2017
Éditeur:
AAAI
Auteurs:
Alan Akbik, Duncan Blythe and Roland Vollgraf
Publié dans:
27th International Conference on Computational Linguistics, COLING 2018, 2018
Éditeur:
ICCL
Auteurs:
Rudolf Schneider, Sebastian Arnold, Tom Oberhauser, Tobias Klatt, Thomas Steffek, Alexander Löser
Publié dans:
Companion of the The Web Conference 2018 on The Web Conference 2018 - WWW '18, 2018, Page(s) 203-206, ISBN 9781-450356404
Éditeur:
ACM Press
DOI:
10.1145/3184558.3186979
Auteurs:
Rudolf Schneider, Tom Oberhauser, Tobias Klatt, Felix A. Gers, and
Alexander Löser
Publié dans:
International Semantic Web Conference (Posters, Demos & Industry Tracks) 2017, 2017
Éditeur:
Stanford University
Auteurs:
Alan Akbik and Roland Vollgraf
Publié dans:
11th Language Resources and Evaluation Conference, LREC 2018, 2018
Éditeur:
European Language Resources Association
Auteurs:
Ying Zhang, Richard Koopmanschap, Martin Kersten
Publié dans:
2018 IEEE 34th International Conference on Data Engineering (ICDE), 2018, Page(s) 1672-1672, ISBN 978-1-5386-5520-7
Éditeur:
IEEE
DOI:
10.1109/icde.2018.00208
Auteurs:
Leonidas Lefakis, Alan Akbik, Roland Vollgraf
Publié dans:
2018
Éditeur:
European Language Resources Association
Auteurs:
Alessandro Checco, Jo Bates and Gianluca Demartini
Publié dans:
The sixth AAAI Conference on Human Computation and Crowdsourcing, 2018
Éditeur:
AAAI
Auteurs:
Alan Akbik, Roland Vollgraf
Publié dans:
Proceedings of the 2017 Conference on Empirical Methods in Natural
Language Processing: System Demonstrations, 2017, Page(s) 43-48
Éditeur:
Association for Computational Linguistics
DOI:
10.18653/v1/D17-2008
Auteurs:
Torsten Kilias, Alexander Löpser, Felix A. Gers, Richard Koopmanschap, Ying Zhang, Martin Kersten, Mark Raasveldt, Pedro Holanda, Hannes Mühleisen and Stefan Manegold
Publié dans:
11TH EXTREMELY LARGE DATABASES CONFERENCE, 2018
Éditeur:
XLDB2018
Auteurs:
Jahna Otterbacher, Alessandro Checco, Gianluca Demartini, Paul Clough
Publié dans:
The 41st International ACM SIGIR Conference on Research & Development in Information Retrieval - SIGIR '18, 2018, Page(s) 933-936, ISBN 9781-450356572
Éditeur:
ACM Press
DOI:
10.1145/3209978.3210094
Auteurs:
Rehab K. Qarout, Alessandro Checco, Kalina Bontcheva
Publié dans:
CrowdBias 2018, 2018
Éditeur:
CEUR
Auteurs:
Lei Han, Kevin Roitero, Ujwal Gadiraju, Cristina Sarasua, Alessandro Checco, Eddy Maddalena, Gianluca Demartini
Publié dans:
Proceedings of the Twelfth ACM International Conference on Web Search and Data Mining - WSDM '19, 2019, Page(s) 321-329, ISBN 9781-450359405
Éditeur:
ACM Press
DOI:
10.1145/3289600.3291035
Auteurs:
Betty van Aken, Benjamin Winter, Alexander Löser, Felix A. Gers
Publié dans:
Proceedings of the 28th ACM International Conference on Information and Knowledge Management - CIKM '19, 2019, Page(s) 1823-1832, ISBN 9781-450369763
Éditeur:
ACM Press
DOI:
10.1145/3357384.3358028
Auteurs:
Ines Arous, Mourad Khayati, Philippe Cudre-Mauroux, Ying Zhang, Martin Kersten, Svetlin Stalinlov
Publié dans:
2019 IEEE 35th International Conference on Data Engineering (ICDE), 2019, Page(s) 1976-1979, ISBN 978-1-5386-7474-1
Éditeur:
IEEE
DOI:
10.1109/icde.2019.00218
Auteurs:
Alan Akbik, Tanja Bergmann and Roland Vollgraf
Publié dans:
NLDL 2019, 2019
Éditeur:
NLDL
Auteurs:
Alan Akbik, Tanja Bergmann, Duncan Blythe, Kashif Rasul, Stefan Schweter and Roland Vollgraf
Publié dans:
NAACL-HLT 2019, 2019
Éditeur:
NAACL-HLT 2019
Auteurs:
Rehab Qarout, Alessandro Checco, Gianluca Demartini and Kalina Bontcheva
Publié dans:
2019
Éditeur:
AAAI
Auteurs:
Ines Arous, Jie Yang, Mourad Khayati, Philippe Cudré-Mauroux
Publié dans:
Proceedings of The Web Conference 2020, 2020, Page(s) 1851-1862, ISBN 9781-450370233
Éditeur:
ACM
DOI:
10.1145/3366423.3380254
Auteurs:
Alan Akbik, Tanja Bergmann and Roland Vollgraf
Publié dans:
NAACL-HLT 2019, 2019
Éditeur:
NAACL-HLT
Auteurs:
Gianluca Demartini
Publié dans:
Companion Proceedings of The 2019 World Wide Web Conference on - WWW '19, 2019, Page(s) 624-630, ISBN 9781-450366755
Éditeur:
ACM Press
DOI:
10.1145/3308560.3317307
Auteurs:
Betty van Aken, Julian Risch, Ralf Krestel, Alexander Löser
Publié dans:
Proceedings of the 2nd Workshop on Abusive Language Online (ALW2), 2018, Page(s) 33-42
Éditeur:
Association for Computational Linguistics
DOI:
10.18653/v1/w18-5105
Auteurs:
Cristina Sarasua, Alessandro Checco, Gianluca Demartini, Djellel Difallah, Michael Feldman, Lydia Pintscher
Publié dans:
Computer Supported Cooperative Work (CSCW), Numéro 28/5, 2019, Page(s) 843-882, ISSN 0925-9724
Éditeur:
Kluwer Academic Publishers
DOI:
10.1007/s10606-018-9344-y
Auteurs:
Arnold, Sebastian; Schneider, Rudolf; Cudré-Mauroux, Philippe; Gers, Felix A.; Löser, Alexander
Publié dans:
Transactions of the Association for Computational Linguistics, Numéro 2, 2019, ISSN 2307-387X
Éditeur:
MIT press
Auteurs:
Mourad Khayati, Alberto Lerner, Zakhar Tymchenko, Philippe Cudré-Mauroux
Publié dans:
Proceedings of the VLDB Endowment, Numéro 13/5, 2020, Page(s) 768-782, ISSN 2150-8097
Éditeur:
VLDB Endowment
DOI:
10.14778/3377369.3377383
Auteurs:
Lei Han, Kevin Roitero, Ujwal Gadiraju, Cristina Sarasua, Alessandro Checco, Eddy Maddalena, Gianluca Demartini
Publié dans:
IEEE Transactions on Knowledge and Data Engineering, 2019, Page(s) 1-1, ISSN 1041-4347
Éditeur:
Institute of Electrical and Electronics Engineers
DOI:
10.1109/tkde.2019.2948168
Auteurs:
Alessandro Checco, Jo Bates, Gianluca Demartini
Publié dans:
Journal of Artificial Intelligence Research, Numéro 67, 2020, Page(s) 375-408, ISSN 1076-9757
Éditeur:
Morgan Kaufmann Publishers, Inc.
DOI:
10.1613/jair.1.11332
Auteurs:
Djellel Difallah, Alessandro Checco, Gianluca Demartini, Philippe Cudré-Mauroux
Publié dans:
ACM Transactions on Social Computing, Numéro 2/1, 2019, Page(s) 1-29, ISSN 2469-7818
Éditeur:
ACM
DOI:
10.1145/3301003
Auteurs:
Mourad Khayati, Philippe Cudré-Mauroux, Michael H. Böhlen
Publié dans:
Knowledge and Information Systems, 2019, ISSN 0219-1377
Éditeur:
Springer Verlag
DOI:
10.1007/s10115-019-01421-7
Auteurs:
Chernushenko, I.; Gers, F.A.; Löser, A.; Checco, A.
Publié dans:
arXiv, Numéro 2, 2018
Éditeur:
arxiv
Recherche de données OpenAIRE...
Une erreur s’est produite lors de la recherche de données OpenAIRE
Aucun résultat disponible