Flexible Heuristics for Supporting RecommendationsWithin an AI Platform Aimed at Non-expert Users

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Date

2023-05-01

Authors

Vázquez-Ingelmo, A.
García-Holgado, A.
García-Peñalvo, F. J.
Andrés-Fraile, E.
Pérez-Sánchez, P.
Antúnez-Muiños, P.
Sánchez-Puente, A.
Vicente-Palacios, V.
Dorado-Díaz, P. I.
Cruz-González, I.

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Springer

Abstract

The use of Machine Learning (ML) to resolve complex tasks has become popular in several contexts. While these approaches are very effective and have many related benefits, they are still very tricky for the general audi-ence. In this sense, expert knowledge is crucial to apply ML algorithms properly and to avoid potential issues. However, in some situations, it is not possible to rely on experts to guide the development of ML pipelines. To tackle this issue, we present an approach to provide customized heuristics and recommendations through a graphical platform to build ML pipelines, namely KoopaML, focused on the medical domain. With this approach, we aim not only at providing an easy way to apply ML for non-expert users, but also at providing a learning experience for them to understand how these methods work.

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Keywords

Information system, Medical data management, Medical imaging management, Artificial Intelligence, Health platform, HCI

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