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Construction of a Compact and High-Precision Classifier in the Inductive Learning Method for Prediction and Diagnostic Problems

The study is dictated by the need to make reasonable decisions in the classification of observations, for example, in the problems of medical prediction and diagnostics. Today, as part of the digitalization in healthcare, decision-making by a doctor is carried out using intelligent information syste...

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Published in:Information (Basel) 2022-12, Vol.13 (12), p.589
Main Authors: Kuzmich, Roman, Stupina, Alena, Yasinskiy, Andrey, Pokushko, Mariia, Tsarev, Roman, Boubriak, Ivan
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container_issue 12
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container_title Information (Basel)
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creator Kuzmich, Roman
Stupina, Alena
Yasinskiy, Andrey
Pokushko, Mariia
Tsarev, Roman
Boubriak, Ivan
description The study is dictated by the need to make reasonable decisions in the classification of observations, for example, in the problems of medical prediction and diagnostics. Today, as part of the digitalization in healthcare, decision-making by a doctor is carried out using intelligent information systems. The introduction of such systems contributes to the implementation of policies aimed at ensuring sustainable development in the health sector. The paper discusses the method of inductive learning, which can be the algorithmic basis of such systems. In order to build a compact and high-precision classifier for the studied method, it is necessary to obtain a set of informative patterns and to create a method for building a classifier with high generalizing ability from this set of patterns. Three optimization models for the building of informative patterns have been developed, which are based on different concepts. Additionally, two algorithmic procedures have been developed that are used to obtain a compact and high-precision classifier. Experimental studies were carried out on the problems of medical prediction and diagnostics, aimed at finding the best optimization model for the building of informative pattern and at proving the effectiveness of the developed algorithmic procedures.
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subjects Algorithms
boosting criterion
Classification
classifier
Classifiers
Decision making
Decision trees
Digitization
Information systems
Machine learning
optimization model
Optimization models
pattern
prediction and diagnostic problems
Sustainable development
title Construction of a Compact and High-Precision Classifier in the Inductive Learning Method for Prediction and Diagnostic Problems
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