European Commission logo
italiano italiano
CORDIS - Risultati della ricerca dell’UE
CORDIS

Artificial Intelligence without Bias

Risultati finali

Research documentation on understanding bias in data [to be updated]

D11ab Research documentation on understanding bias in data Leader KULEUVEN participation of GESISDAS CERTH UNIPI LUHL3S M24 M42 Reports on research progress and results

Report on WP2 Integration and application [to be updated]

Report on WP2 Integration and application Leader CERTH participation of OU GESISCSS LUHIRI M24 M42 Reports on integration and application activities related to bias mitigation in algorithms in collaboration with WP4

Research documentation on mitigating bias in algorithms [to be updated]

D21ab Research documentation on mitigating bias in algorithms Leader OU participation of GESISCSS CERTH LUHIRI M24 M42 Reports on research progress and results

Research documentation on accounting for bias in results [to be updated]

Research documentation on accounting for bias in results Leader UNIPI participation of SCHUFA SOTONLS LUHL3S M24 M42 Reports on research progress and results

Report on WP1 integration and application [to be updated]

Report on WP1 integration and application Leader LUHL3S participation of GESISDAS CERTH UNIPI KULEUVEN M24 M42 Reports on integration and application activities related to understanding bias in data in collaboration with WP4

Training Report [to be updated]

Training Report Leader UNIKLU participation all M24 M48 Reports on planning and implementation of training activities and resources

Report on WP3 integration and application [to be updated]

Report on WP3 integration and application Leader SCHUFA participation of UNIPI SOTONLS LUHL3S M24 M42 Reports on integration and application activities related to accounting for bias in results in collaboration with WP4

Living Document on Bias

Living Document and Book on Bias SOTONECS There is to date no established resource that combines the interdisciplinary expertise necessary to address bias in AIdriven decision making NoBIAS will deliver this resource through the establishment of a living training document that will begin with core contributions from academic partners M6 and will be developed by the NoBIAS researchers as part of the interdisciplinary training stream and ultimately be published as a book M42 This process will develop substantive knowledge of interdisciplinary approaches and generic team working and collaborative writing skills

Dissemination report [to be updated]

Dissemination Report Leader LUHL3S participation all M24 M48 Reports on the setup of the project website and social media accounts implementation of the dissemination strategy planning and implementation of the projectrelated events and activities

Pubblicazioni

A Survey on Bias in Visual Datasets

Autori: Simone Fabbrizzi, Symeon Papadopoulos, Eirini Ntoutsi, Ioannis Kompatsiaris
Pubblicato in: Numero 1, 2021
Editore: Arxiv

Semantic Web Technologies and Bias in Artificial Intelligence: A Systematic Literature Review

Autori: Paula Reyero Lobo, Enrico Daga, Harith Alani, Miriam Fernandez
Pubblicato in: Semantic Web Journal, 2021
Editore: Semantic Web Journal

Data Privacy Issues in Big Biomedical Data

Autori: Maria-Esther Vidal, Mayra Russo, Philipp Rohde
Pubblicato in: 2021
Editore: Nomos Verlagsgese llschaft

Logic programming for XAI: A technical perspective

Autori: Laura State
Pubblicato in: ICLP Workshops, volume 2970 of CEUR Workshop Proceedings., Numero 1, 2021
Editore: CEUR-WS

Quantile Encoder: Tackling High Cardinality Categorical Features in Regression Problems

Autori: Carlos Mougan; David Masip; Jordi Nin; Oriol Pujol
Pubblicato in: Modeling Decisions for Artificial Intelligence, Numero 5, 2021
Editore: Springer
DOI: 10.1007/978-3-030-85529-1_14

Desiderata for Explainable AI in statistical production systems of the European Central Bank

Autori: Carlos Mougan, Georgios Kanellos, Thomas Gottron
Pubblicato in: Workshop on bias and fairness in AI at ECMLPKDD, Numero 1, 2021
Editore: Springer International Publishing
DOI: 10.1007/978-3-030-93736-2_42

Introducing explainable supervised machine learning into interactive feedback loops for statistical production system

Autori: Carlos Mougan, George Kanellos, Johannes Micheler, Jose Martinez, Thomas Gottron
Pubblicato in: Irving Fisher Committee (IFC) - Bank of Italy workshop on Data science in central banking: Applications and tools, 2021
Editore: Arxiv

Time to Question if We Should: Data-Driven and Algorithmic Tools in Public Employment Services

Autori: Pieter Delobelle, Kristen M. Scott, Sonja Mei Wang, Milagros Miceli, David Hartmann, Tianling Yang, Elena Murasso, Karolina Sztandar-Sztanderska, Bettina Berendt
Pubblicato in: International workshop on Fair, Effective And Sustainable Talent management using data science, 2021
Editore: FEAST Workshop

Measuring Shifts in Attitudes Towards COVID-19 Measures in Belgium

Autori: Kristen Scott, Pieter Delobelle, Bettina Berendt
Pubblicato in: Computational Linguistics in the Netherlands Journal, Numero 11, 2021, Pagina/e 161 - 171, ISSN 2211-4009
Editore: Computational Linguistics in the Netherlands

È in corso la ricerca di dati su OpenAIRE...

Si è verificato un errore durante la ricerca dei dati su OpenAIRE

Nessun risultato disponibile