Clustering of Customers from Massive Customer Transaction Data
Journal: International Journal of Scientific Engineering and Research (IJSER) (Vol.7, No. 3)Publication Date: 2019-03-05
Authors : Neethu CM; Anitha Abraham; Linda Sebastian;
Page : 18-24
Keywords : Clustering; Partitional clustering; Hierarchical Clustering;
Abstract
In this internet era, more and more people use online shopping. Analysing massive customer transaction data about these online activities can be used to improve the business and to satisfy customer demands in a better way. In this research paper we try to study different methods employed to analyse the customer transaction data. In our study we have studied methods like K-Means clustering, PAM clustering, Agglomerative, Divisive and Density Based clustering methods. Based on our study we have identified that K-Means is the widely used clustering method.
Other Latest Articles
- Automatic Number Plate Recognition System
- PPCBIR: Privacy Preserving Content Based Image Retrieval
- Text Line Detection Using Connected Components
- Geotechnical Characterization of Selected Soil for use as Sub base Materials for Low Volume Road Construction: A Case Study of Bilate Quarry Site, Southern Ethiopia
- Feminism
Last modified: 2021-07-08 16:35:43