Artificial neural networks for the nearest neighbor search problem

Author(s):  
De-Yuan Cheng ◽  
T.J. Terrell ◽  
M. Varley
Author(s):  
Michael Hund ◽  
Michael Behrisch ◽  
Ines Färber ◽  
Michael Sedlmair ◽  
Tobias Schreck ◽  
...  

Author(s):  
A. MITICHE ◽  
J. K. AGGARWAL

The purpose of this paper is two-fold: to give a synoptic description of favored neural networks and to characterize the potency of these neural networks as pattern classifiers, against the background of the familiar nearest neighbors classification. We limit the study to those neural network structures most commonly used for pattern classification: the multilayer perceptron, the Kohonen associative memory, and the Carpenter–Grossberg clustering network, for which we give a tutorial description with the aim of making the driving concepts apparent. The nearest neighbors rule is presented with improved nearest neighbor search and reference data sample pruning. To gain some familiarity with the classifiers, we expound the sequence of computations implicated in pattern category assignment by each classifier. A characterization of the classifiers is drawn from observed and expected properties and from experiments in automatic target recognition and optical character recognition as summarized in comparative tables of performance. This characterization supports the suggestion that nearest neighbors classification always be considered before endorsing alternative pattern classifiers such as neural networks.


2019 ◽  
Vol 10 (1) ◽  
pp. 19 ◽  
Author(s):  
Frank Zalkow ◽  
Meinard Müller

Cross-version music retrieval aims at identifying all versions of a given piece of music using a short query audio fragment. One previous approach, which is particularly suited for Western classical music, is based on a nearest neighbor search using short sequences of chroma features, also referred to as audio shingles. From the viewpoint of efficiency, indexing and dimensionality reduction are important aspects. In this paper, we extend previous work by adapting two embedding techniques; one is based on classical principle component analysis, and the other is based on neural networks with triplet loss. Furthermore, we report on systematically conducted experiments with Western classical music recordings and discuss the trade-off between retrieval quality and embedding dimensionality. As one main result, we show that, using neural networks, one can reduce the audio shingles from 240 to fewer than 8 dimensions with only a moderate loss in retrieval accuracy. In addition, we present extended experiments with databases of different sizes and different query lengths to test the scalability and generalizability of the dimensionality reduction methods. We also provide a more detailed view into the retrieval problem by analyzing the distances that appear in the nearest neighbor search.


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