Meta-learning in healthcare: A survey
Rafiei, Alireza, Moore, Ronald, Jahromi, Sina, Hajati, Farshid, Kamaleswaran, Rishikesan
–arXiv.org Artificial Intelligence
UELED by the surge in the collection of diverse data, coupled with advancements in computational models and models in the healthcare domain, they typically perform well algorithms, artificial intelligence (AI) techniques have been on a single task [16], [17]. Meta-learning models, however, striving to establish a strong foothold in healthcare over the prove beneficial both in multi-task scenarios, where taskagnostic past decade [1]-[3]. This burgeoning trend has fostered a knowledge is garnered from a suite of tasks to enhance growing interest in the deployment of innovative data analysis the learning of new tasks within that suite, and in singletask methods and machine learning (ML) techniques across a scenarios, where a single problem is continually solved range of healthcare applications [4]-[7]. As a specialized area and refined solutions for a single problem over numerous within ML, meta-learning, or learning-to-learn, has recently episodes [10], [18]. This multi-task learning capability can gained significant attention due to its impressive theoretical enable a more comprehensive understanding of the complex and practical advancements, making it a primary choice for interrelations and dependencies between various healthcare numerous applications [8]-[10].
arXiv.org Artificial Intelligence
Aug-5-2023
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