Survey of Nearest Neighbor Techniques

07/01/2010
by   Nitin Bhatia, et al.
0

The nearest neighbor (NN) technique is very simple, highly efficient and effective in the field of pattern recognition, text categorization, object recognition etc. Its simplicity is its main advantage, but the disadvantages can't be ignored even. The memory requirement and computation complexity also matter. Many techniques are developed to overcome these limitations. NN techniques are broadly classified into structure less and structure based techniques. In this paper, we present the survey of such techniques. Weighted kNN, Model based kNN, Condensed NN, Reduced NN, Generalized NN are structure less techniques whereas k-d tree, ball tree, Principal Axis Tree, Nearest Feature Line, Tunable NN, Orthogonal Search Tree are structure based algorithms developed on the basis of kNN. The structure less method overcome memory limitation and structure based techniques reduce the computational complexity.

READ FULL TEXT
research
04/27/2019

Guarantees on Nearest-Neighbor Condensation heuristics

The problem of nearest-neighbor (NN) condensation aims to reduce the siz...
research
11/07/2019

Efficient Spatial Nearest Neighbor Queries Based on Multi-layer Voronoi Diagrams

Nearest neighbor (NN) problem is an important scientific problem. The NN...
research
03/26/2018

Efficient space virtualisation for Hoshen--Kopelman algorithm

In this paper the efficient space virtualisation for Hoshen--Kopelman al...
research
05/09/2023

On the Information Capacity of Nearest Neighbor Representations

The von Neumann Computer Architecture has a distinction between computat...
research
11/21/2017

Efficient Implementation of a Recognition System Using the Cortex Ventral Stream Model

In this paper, an efficient implementation for a recognition system base...
research
08/02/2019

On the Merge of k-NN Graph

K-nearest neighbor graph is the fundamental data structure in many disci...
research
07/01/2014

A Bayes consistent 1-NN classifier

We show that a simple modification of the 1-nearest neighbor classifier ...

Please sign up or login with your details

Forgot password? Click here to reset