Abstract
Despite the need for data in a time of general digitisation of organizations, many challenges are still hampering its shared use. Technical, organisational, legal and commercial issues remain to leverage data satisfactorily, specially when the data is distributed among different locations and confidentiality must be preserved. Data platforms can offer "ad hoc" solutions to tackle specific matters within a data space. MUSKETEER develops an Industrial Data Platform (IDP) including algorithms for federated and privacy-preserving machine learning techniques on a distributed setup, detection and mitigation of adversarial attacks and a rewarding model capable of monetizing datasets according to the real data value. The platform can offer an adequate response for organizations in demand of high security standards such as industrial companies with sensitive data or hospitals with personal data. architectural point of view, trust is enforced in such a way that data has never to leave out its provider's premises thanks to federated learning. This approach can help to better comply with the European regulation as confirmed from a legal perspective. Besides, MUSKETEER explores several rewarding models based on the availability of objective and quantitative data value estimations, which further increases the trust of the participants in the data space as a whole.
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CITATION STYLE
Bonura, S., Carbonare, D. dalle, Díaz-Morales, R., Navia-Vázquez, Á., Purcell, M., & Rossello, S. (2022). Increasing Trust for Data Spaces with Federated Learning. In Data Spaces (pp. 89–106). Springer International Publishing. https://doi.org/10.1007/978-3-030-98636-0_5
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