2023
DOI: 10.3390/app132413278
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Predicting Heart Disease Using Collaborative Clustering and Ensemble Learning Techniques

Amna Al-Sayed,
Mashael M. Khayyat,
Nuha Zamzami

Abstract: Different data types are frequently included in clinical data. Applying machine learning algorithms to mixed data can be difficult and impact the output accuracy and quality. This paper proposes a hybrid model of unsupervised and supervised learning techniques, which can be used in modelling and processing mixed data with an application in heart disease diagnosis. The model consists of two main components: collaborative clustering and combining decisions (the ensemble approach). The mixed data clustering probl… Show more

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Cited by 2 publications
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“…There are several ways to split the data, the most important of which are horizontal and vertical collaborative clustering. [31] Association rule-learning algorithms Association rule learning and correlation learning methods are used to find and weigh contextual relations between modeled context entities. In the presence of a training dataset, a unique classification strategy is introduced, which can effectively increase classification performance.…”
Section: Term Definitions Referencesmentioning
confidence: 99%
“…There are several ways to split the data, the most important of which are horizontal and vertical collaborative clustering. [31] Association rule-learning algorithms Association rule learning and correlation learning methods are used to find and weigh contextual relations between modeled context entities. In the presence of a training dataset, a unique classification strategy is introduced, which can effectively increase classification performance.…”
Section: Term Definitions Referencesmentioning
confidence: 99%