
Instance Based Learning (IBL) results in classifying a new instance by examining and comparing it to the rest of the instances in the dataset. An example of this type of learning is the K-Nearest Neighbor algorithm which is based on examining an average Euclidian distance of the nearest k neighbors' parameters given a certain situation.
kowledge, Instance Based Learning, algorithm, K-NN, jel: jel:D80, jel: jel:C38
kowledge, Instance Based Learning, algorithm, K-NN, jel: jel:D80, jel: jel:C38
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