Comparative analysis of classification algorithm: Random Forest, SPAARC, and MLP for airlines customer satisfaction

Safira Amalia, Irene Deborah, Intan Nurma Yulita

Abstract


The airline business is one of the businesses determined by the quality of its services. Every airline creates its best service so that customers feel satisfied and loyal to using their services. Therefore, customer satisfaction is an essential metric to measure features and services provided. By having a database on customer satisfaction, the company can utilize the data for machine learning modelling. The model generated can predict customer satisfaction by looking at the existing feature criteria and becoming a decision support system for management. This article compares machine learning between Split Point and Attribute Reduced Classifier (SPAARC), Multilayer Perceptron (MLP), and Random Fores (RF) in predicting customer satisfaction. Based on the data testing, the Random Forest algorithm provides better results with the lowest training time compared to SPAARC and MLP. It has an accuracy of 95.827%, an F-score of 0.958, and a training time of 84.53 seconds.


Keywords


Customer satisfaction; Multilayer Perceptron; Random Forest; Reduced Classifier; Split Point and Attribute;

Full Text:

PDF


DOI: http://dx.doi.org/10.22441/sinergi.2022.2.010

Refbacks

  • There are currently no refbacks.


SINERGI
Published by:
Fakultas Teknik Universitas Mercu Buana
Jl. Raya Meruya Selatan, Kembangan, Jakarta 11650
Tlp./Fax: +62215871335
p-ISSN: 1410-2331
e-ISSN: 2460-1217
Journal URL: http://publikasi.mercubuana.ac.id/index.php/sinergi
Journal DOI: 10.22441/sinergi

Creative Commons License

Journal by SINERGI is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License

Web
Analytics Made Easy - StatCounter
View My Stats

The Journal is Indexed and Journal List Title by: