KopiCulture: Unveiling Customer Loyalty in Malaysia's Coffee Market through Clustering Algorithms for Local Cafe Insights

Authors

  • Tuan Norhafizah Tuan Zakaria Universiti Teknologi MARA Cawangan Negeri Sembilan, Kampus Kuala Pilah, Kuala Pilah, Negeri Sembilan, Malaysia
  • Che Ku Nuraini Che Ku Mohd Universiti Teknikal Malaysia Melaka, Melaka, Malaysia

Keywords:

Customer loyalty, clustering algorithms, coffee market, machine learning, marketing strategies

Abstract

In recent years, the coffee market in Malaysia has expanded significantly, propelled by an expanding cafe culture and consumer demand for unique coffee experiences. It is crucial for coffee retailers, such as global chains and local cafes, to comprehend customer loyalty in this dynamic environment. This study aims to identify customer loyalty patterns in the Malaysian coffee market, focusing on the Malaysia Starbucks customer survey dataset. Using clustering algorithms such as KMeans, KMeans with Principal Component Analysis (PCA), single linkage, complete linkage, DBScan, and DBScan in conjunction with PCA, we identify distinct customer segments based on loyalty patterns. Our findings give Starbucks and local coffee shops valuable insights, allowing them to tailor their marketing strategies and improve customer retention efforts. Through this analysis, we contribute to the expanding body of knowledge on customer loyalty in the context of the Malaysian coffee market and offer implications for coffee retailers seeking to thrive in this competitive environment.

Published

2024-11-05

How to Cite

Tuan Zakaria, T. N., & Che Ku Mohd, C. K. N. (2024). KopiCulture: Unveiling Customer Loyalty in Malaysia’s Coffee Market through Clustering Algorithms for Local Cafe Insights. Journal of Data Science, 2024. Retrieved from https://iuojs.intimal.edu.my/index.php/jods/article/view/554