Project Abstract

-- Explainable AI (XAI) has recently emerged proposing a set of techniques attempting to explain machine learning (ML) models. The recipients (explainee) are intended to be humans or other intelligent virtual entities. Transparency, trust, and debuging are the underlying features calling for XAI. However, in real-world settings, systems are distributed, data are heterogeneous, the “system” knowledge is bounded, and privacy concerns are subject to variable constraints. Current XAI approaches cannot cope with such requirements.
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A proud team!

The team has multidisciplinary competences sharing the Multi-Agent Systems as common thread. HES-SO People (from Switzerland) Prof. Michael I. Schumacher Full Professor at HES-SO Personal Homepage Dr. Davide Calvaresi Senior researcher at HES-SO Personal Homepage Dr. Jean-Paul Calbimonte Senior researcher at HES-SO Personal Homepage Victor Hugo Contreras Ordonez PhD Student at HES-SO
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