Jurnal Ilmiah Informatika Komputer
Vol 29, No 1 (2024)

PREDIKSI KEPUASAN PELANGGAN HOTEL: STUDI PERBANDINGAN ALGORITMA DECISION TREE DAN KNEAREST NEIGHBOR

Dwi Ramti Asih (Universitas Siliwangi)
Rianto Rianto (Universitas Siliwangi)



Article Info

Publish Date
23 Apr 2024

Abstract

Customer satisfaction has become an important aspect for every business in today's competitive market. Understanding customer needs, wants, and expectations is critical for a business to provide outstanding customer service and retain customers. Therefore, this research represents a comparative study between two machine learning algorithms, Decision Tree and K-Nearest Neighbor, to predict hotel customer satisfaction. This study aims to identify which algorithm is more effective in predicting customer satisfaction by evaluating their performance using various metrics. The methodology used includes data preprocessing, feature selection, and machine learning model creation. The results show that the Decision Tree algorithm is superior to the K-Nearest Neighbor in terms of accuracy and precision. The findings from this study provide insights for businesses in the hospitality industry on how to predict customer satisfaction and improve their services.

Copyrights © 2024






Journal Info

Abbrev

infokom

Publisher

Subject

Computer Science & IT Decision Sciences, Operations Research & Management

Description

This journal is published periodically three times a year, April, August, and December. It publishes a broad range of research articles on Information Technology and Communication, whether in Indonesian Language or ...