A Machine Learning Approach to Customers Segmentation Using the K-Nearest Neighbors (knn) Algorithm: an Evaluation of Accuracy and Performance
Student: Isma'il Anchau Suleiman (Project, 2025)
Department of Computer Science and Information Technology
Federal University, Dutsin-Ma, Katsina State
Abstract
In today’s data-driven economy, understanding customer behavior through effective segmentation has become a strategic priority for businesses. This study investigates the application of the KNearest (KNN) algorithm in customer segmentation and evaluates its performance in terms of accuracy and computational efficiency. KNN, a simple yet powerful supervised learning algorithm, is explored for its capacity to group customers based on behavioral and demographic data. The dataset used includes customer attributes such as age, income, spending score and gender, which were preprocessed and standardized prior to modeling. The KNN model was trained and tested using various distance metrics and values of ‘k’ to determine optimal clustering performance. Evaluation metrics such as accuracy, precision, recall, F1-score and computational cost were employed to assess the model. The results indicate that KNN performs reasonable well in segmenting customers, particularly when an optimal ‘k’ value is chosen and data is well-scaled. The study also compares KNN’s performance with other clustering and classification algorithm to provide a broader context for its practical use in marketing analytics.
Keywords
For the full publication, please contact the author directly at: isanchau01@gmail.com
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- Federal Polytechnic, Mubi, Adamawa State 20
- Federal Polytechnic, Nasarawa, Nasarawa State 59
- Federal Polytechnic, Nekede, Imo State 51
- Federal Polytechnic, offa, Kwara State 18
- Federal Polytechnic, Oko, Anambra State 8
- Federal School of Biomedical Engineering, (LUTH), Idi-Araba, Lagos State 1
- Federal School of Surveying, Oyo, Oyo State 7
- Federal University of Agriculture, Abeokuta, Ogun State 19
- Federal University of Petroleum Resources, Effurun, Delta State 77
- Federal University of Technology Akure, Ondo State 23