Litcius/Paper detail

An intelligent hybrid approach for hepatitis disease diagnosis: Combining enhanced <i>k</i>‐means clustering and improved ensemble learning

Aman Singh, Jaydip Chandrakant Mehta, Divya Anand, Pinku Nath, Babita Pandey, Aditya Khamparia

2020Expert Systems37 citationsDOI

Abstract

Abstract In real world, the automatic detection of liver disease is a challenging problem among medical practitioners. The intent of this work is to propose an intelligent hybrid approach for the diagnosis of hepatitis disease. The diagnosis is performed with the combination of k‐ means clustering and improved ensemble‐driven learning. To avoid clinical experience and to reduce the evaluation time, ensemble learning is deployed, which constructs a set of hypotheses by using multiple learners to solve a liver disease problem. The performance analysis of the proposed integrated hybrid system is compared in terms of accuracy, true positive rate, precision, f‐measure, kappa statistic, mean absolute error, and root mean squared error. Simulation results showed that the enhanced k‐ means clustering and improved ensemble learning with enhanced adaptive boosting, bagged decision tree, and J48 decision tree‐based intelligent hybrid approach achieved better prediction outcomes than other existing individual and integrated methods.

Topics & Concepts

Computer scienceC4.5 algorithmEnsemble learningBoosting (machine learning)Machine learningCluster analysisDecision treeArtificial intelligenceStatistick-means clusteringCohen's kappaData miningMean squared errorNaive Bayes classifierSupport vector machineStatisticsMathematicsArtificial Intelligence in HealthcareImbalanced Data Classification TechniquesDiverse Scientific Research Studies
An intelligent hybrid approach for hepatitis disease diagnosis: Combining enhanced <i>k</i>‐means clustering and improved ensemble learning | Litcius