Comparison with Classification Algorithms in Data Mining of a Fuel Automation System's Sales Data
Author(s) -
İlhan Tarımer,
Buse Cennet Karadaǧ
Publication year - 2020
Publication title -
global economics review
Language(s) - English
Resource type - Journals
eISSN - 2707-0093
pISSN - 2521-2974
DOI - 10.31703/ger.2020(v-i).20
Subject(s) - c4.5 algorithm , naive bayes classifier , computer science , statistical classification , automation , random forest , data mining , algorithm , machine learning , engineering , support vector machine , mechanical engineering
This article deals with Otobil and pumps sales estimates at fuel stations. The fuel station data used in the study consists of 2384 data in total. Depending upon these data, classification procedures were performed on fuel station sales data using classification algorithms. In the study the classification algorithms that J48, Random Forest, KStar, Logistic Regression, IBk and Naive Bayes algorithms are used to compare the sales data estimations by using a software. The results obtained show that the accuracy rates of the J48 algorithm are more successful than others in general. It understands that these sales estimations shall encourage fuel station owners and association bodies to get more gainful.
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