no code implementations • 26 Jun 2024 • Diego Rojo, Houda Lamqaddam, Lucija Gosak, Katrien Verbert
Cardiovascular diseases (CVDs), the leading cause of death worldwide, can be prevented in most cases through behavioral interventions.
no code implementations • 17 May 2024 • Aditya Bhattacharya, Simone Stumpf, Katrien Verbert
To facilitate effective collaboration between domain experts and AI systems, we introduce an Explanatory Model Steering system that allows domain experts to steer prediction models using their domain knowledge.
1 code implementation • 1 Feb 2024 • Aditya Bhattacharya, Simone Stumpf, Lucija Gosak, Gregor Stiglic, Katrien Verbert
Explanations in interactive machine-learning systems facilitate debugging and improving prediction models.
no code implementations • 3 Oct 2023 • Aditya Bhattacharya, Simone Stumpf, Lucija Gosak, Gregor Stiglic, Katrien Verbert
Our research involved a comprehensive examination of the impact of global explanations rooted in both data-centric and model-centric perspectives within systems designed to support healthcare experts in optimising machine learning models through both automated and manual data configurations.
no code implementations • 31 Jul 2023 • Ivania Donoso-Guzmán, Jeroen Ooge, Denis Parra, Katrien Verbert
While research on explainable AI (XAI) is booming and explanation techniques have proven promising in many application domains, standardised human-centred evaluation procedures are still missing.
no code implementations • 21 Feb 2023 • Aditya Bhattacharya, Jeroen Ooge, Gregor Stiglic, Katrien Verbert
Results indicate that our participants preferred our representation of data-centric explanations that provide local explanations with a global overview over other methods.
no code implementations • 28 Jan 2021 • Diego Rojo, Nyi Nyi Htun, Denis Parra, Robin De Croon, Katrien Verbert
To validate AHMoSe, we describe a use case scenario in the viticulture domain, grape quality prediction, where the system enables users to diagnose and select prediction models that perform better.
no code implementations • 20 Feb 2020 • Gregor Stiglic, Primoz Kocbek, Nino Fijacko, Marinka Zitnik, Katrien Verbert, Leona Cilar
There is a need of ensuring machine learning models that are interpretable.