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[[Category:decision theory]]
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== Informal Comparison of KNN and NN in case of k = 1 ==
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= Informal Comparison of KNN and NN in case of k = 1 =
 
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This is an informal discussion about the Kn-Nearest-Neighbor (KNN) and Nearest Neighbor (NN) estimations in k = 1 case. My conclusion is that KNN and NN are essentially the same when k = 1.
 
This is an informal discussion about the Kn-Nearest-Neighbor (KNN) and Nearest Neighbor (NN) estimations in k = 1 case. My conclusion is that KNN and NN are essentially the same when k = 1.
  
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zge
 
zge
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*Answer/comment here.
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*Answer/comment here.
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[[ECE662|Back to ECE662]]

Latest revision as of 09:47, 22 March 2012


Informal Comparison of KNN and NN in case of k = 1

This is an informal discussion about the Kn-Nearest-Neighbor (KNN) and Nearest Neighbor (NN) estimations in k = 1 case. My conclusion is that KNN and NN are essentially the same when k = 1.

In any testing point, let us assume that this testing point is category-k dominant using NN (trainning point from category k will be firstly captured). Then, if we switch to use KNN instead, when enlarge the volume surrounding this testing point, the volume in category k should be the smallest (with largest discriminant value), so this point is still considered as category-k dominant using KNN.

Based on the above discussion, I conclude that the classification using KNN and NN when k = 1 should be the same.

zge

  • Answer/comment here.
  • Answer/comment here.

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