Enhancement of student performance prediction using modified K-nearest neighbor

Volume: 18, Issue: 4, Pages: 1777 - 1777
Published: Aug 1, 2020
Abstract
The traditional K-nearest neighbor (KNN) algorithm uses an exhaustive search for a complete training set to predict a single test sample. This procedure can slow down the system to consume more time for huge datasets. The selection of classes for a new sample depends on a simple majority voting system that does not reflect the various significance of different samples (i.e. ignoring the similarities among samples). It also leads to a...
Paper Details
Title
Enhancement of student performance prediction using modified K-nearest neighbor
Published Date
Aug 1, 2020
Volume
18
Issue
4
Pages
1777 - 1777
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