An implementation of articial advisor for dynamic classication of objects release_353nejs4pzffzdefldpmjgazb4

by Barbara Łukawska, Grzegorz Łukawski, Krzysztof Sapiecha

Published in Annales UMCS Informatica by Uniwersytetu Marii Curie-Sklodowskiej w Lublinie.

Volume 16p40 (2016)

Abstract

The paper presents an original method of dynamic classication of objects from a new domain which lacks an expert knowledge. The method relies on analysis of attributes of objects being classied and their general quality Q, which is a combination of particular object's attributes. The method uses a test of normality as a basis for computing the reliability factor of the classication (rfc), which indicates whether the classication and the model of quality Q are reliable. There is no need to collect data about all objects before the classication starts and possibly the best objects ale selected dynamically (on-the-y) while data concerning consecutive objects are gathered. The method is implemented as a software tool called Articial Classication Adviser (ACA). Moreover, the paper presents a case study, where the best candidates for reghting mobile robot operators are selected.
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Date   2016-10-04
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