Journal ArticleOpen Access
Performance discrepancy mitigation in heart disease prediction for multisensory inter-datasets
Authors
Author Affiliations
Deakin University, Hajee Mohammad Danesh Science and Technology University, Lebanese American University, Middle East University, ...
Published InPeerJ Computer Science
Year2024
Citations20
Abstract
Heart disease is one of the primary causes of morbidity and death worldwide. Millions of people have had heart attacks every year, and only early-stage predictions can help to reduce the number. Researchers are working on designing and developing early-stage prediction systems using different advanced technologies, and machine learning (ML) is one of them. Almost all existing ML-based works consider the same dataset (intra-dataset) for the training and validation of their method. In particular, they do not consider inter-dataset performance checks, where different datasets are used in the training and testing phases. In inter-dataset setup, existing ML models show a poor performance named the inter-dataset discrepancy problem. This work focuses on mitigating the inter-dataset discrepancy problem by considering five available…
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