Title of article :
Machine Learning Approach for Best Location of Retailers
Author/Authors :
Ghafourian ، Ehsan Department of Computer Science - Iowa State University , Bashir ، Elnaz Department of Computer Science - Iowa State University , Shoushtari ، Farzaneh Bu-Ali Sina University , Daghighi ، Ali Faculty of Engineering and Natural Sciences - Biruni University
Abstract :
This paper presents a machine learning approach using the k-means clustering algorithm to identify optimal locations for retailers. The study aims to leverage geographic, demographic, and economic factors to cluster potential locations and provide valuable insights for decision-making. The methodology involves data preparation, selecting relevant features, applying the k-means algorithm, evaluating cluster results, and visualizing the outcomes on a map. Numerical results demonstrate the effectiveness of the proposed approach in identifying suitable retail locations. The study concludes with a summary of findings and recommendations for further research.
Keywords :
Machine Learning , Location , Retailers , Clustering , K , means
Journal title :
International journal of industrial engineering and operational research
Journal title :
International journal of industrial engineering and operational research