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Cross-Validation and Validation Set Methods for Choosing K in KNN Algorithm for Healthcare Case Study

Robbi Rahim, Ansari Saleh Ahmar

2022JINAV Journal of Information and Visualization14 citationsDOIOpen Access PDF

Abstract

KNN categorization is simple and successful in healthcare. In this research's example case study, the KNN algorithm classified the new record as "Abnormal." The classification method began with choosing K, then calculating the Euclidean distance between the new record and the training set, finding the K nearest neighbors, then classifying the new record based on those K neighbors. The findings show that the KNN algorithm is effective in healthcare and highlight several shortcomings that should be addressed in future study. Weighting variables, choosing the best K value, and handling non-uniform data are these restrictions. The findings show the KNN algorithm's medical potential.

Topics & Concepts

WeightingComputer scienceCategorizationk-nearest neighbors algorithmEuclidean distanceSet (abstract data type)Data miningHealth careAlgorithmData setArtificial intelligenceMedicineEconomic growthEconomicsRadiologyProgramming languageArtificial Intelligence in Healthcare
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