Abstract

The article concerns the problem of classification based on independent data sets—local decision tables. The aim of the paper is to propose a classification model for dispersed data using a modified k-nearest neighbors algorithm and a neural network. A neural network, more specifically a multilayer perceptron, is used to combine the prediction results obtained based on local tables. Prediction results are stored in the measurement level and generated using a modified k-nearest neighbors algorithm. The task of neural networks is to combine these results and provide a common prediction. In the article various structures of neural networks (different number of neurons in the hidden layer) are studied and the results are compared with the results generated by other fusion methods, such as the majority voting, the Borda count method, the sum rule, the method that is based on decision templates and the method that is based on theory of evidence. Based on the obtained results, it was found that the neural network always generates unambiguous decisions, which is a great advantage as most of the other fusion methods generate ties. Moreover, if only unambiguous results were considered, the use of a neural network gives much better results than other fusion methods. If we allow ambiguity, some fusion methods are slightly better, but it is the result of this fact that it is possible to generate few decisions for the test object.

Highlights

  • This paper proposes the use of a neural network in conjunction with a modified k-nearest neighbors algorithm for classification problems based on dispersed data

  • The contribution of this paper is to propose a classification model for dispersed data using a modified k-nearest neighbors algorithm and a neural network

  • Using a modified k-nearest neighbors algorithm, predictions from the measurement level are designated

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. The article is devoted to the issue of classification based on dispersed data. Data collected in many local decision tables, which were provided by independent units, are considered. This approach is considered for example in federated learning [1,2]

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