A Review on Advanced Decision Trees for Efficient & Effective k-NN Classification

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Ms. Madhavi Pujari, Mr. Chetan Awati, Ms. Sonam Kharade

Abstract

K Nearest Neighbor (KNN) strategy is a notable classification strategy in data mining and estimations in light of its direct execution and colossal arrangement execution. In any case, it is outlandish for ordinary KNN strategies to select settled k esteem to all tests. Past courses of action assign different k esteems to different test tests by the cross endorsement strategy however are typically tedious. This work proposes new KNN strategies, first is a KTree strategy to learn unique k esteems for different test or new cases, by including a training arrange in the KNN classification. This work additionally proposes a change rendition of KTree technique called K*Tree to speed its test organize by putting additional data of the training tests in the leaf node of KTree, for example, the training tests situated in the leaf node, their KNNs, and the closest neighbor of these KNNs. K*Tree, which empowers to lead KNN arrangement utilizing a subset of the training tests in the leaf node instead of all training tests utilized in the recently KNN techniques. This really reduces the cost of test organize.

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How to Cite
, M. M. P. M. C. A. M. S. K. (2018). A Review on Advanced Decision Trees for Efficient & Effective k-NN Classification. International Journal on Future Revolution in Computer Science &Amp; Communication Engineering, 4(2), 350–354. Retrieved from http://www.ijfrcsce.org/index.php/ijfrcsce/article/view/1223
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