DOI QR코드

DOI QR Code

Creating a Smartphone User Recommendation System Using Clustering

클러스터링을 이용한 스마트폰 사용자 추천 시스템 만들기

  • Jin Hyoung AN (Medical It, Bioconvergence, Eulji University)
  • Received : 2023.11.07
  • Accepted : 2023.11.14
  • Published : 2024.06.30

Abstract

In this paper, we develop an AI-based recommendation system that matches the specifications of smartphones from company 'S'. The system aims to simplify the complex decision-making process of consumers and guide them to choose the smartphone that best suits their daily needs. The recommendation system analyzes five specifications of smartphones (price, battery capacity, weight, camera quality, capacity) to help users make informed decisions without searching for extensive information. This approach not only saves time but also improves user satisfaction by ensuring that the selected smartphone closely matches the user's lifestyle and needs. The system utilizes unsupervised learning, i.e. clustering (K-MEANS, DBSCAN, Hierarchical Clustering), and provides personalized recommendations by evaluating them with silhouette scores, ensuring accurate and reliable grouping of similar smartphone models. By leveraging advanced data analysis techniques, the system can identify subtle patterns and preferences that might not be immediately apparent to consumers, enhancing the overall user experience. The ultimate goal of this AI recommendation system is to simplify the smartphone selection process, making it more accessible and user-friendly for all consumers. This paper discusses the data collection, preprocessing, development, implementation, and potential impact of the system using Pandas, crawling, scikit-learn, etc., and highlights the benefits of helping consumers explore the various options available and confidently choose the smartphone that best suits their daily lives.

Keywords

References

  1. Yang, J., & Seo, H. (2020). The influence of consumer attribute preference and purchase motivation on product choice. Korean Journal of Management Education, 30(6), 189-204.
  2. Ha, H. (2007). The influence of perceived difficulty of choice and anticipated regret on satisfaction and loyalty among internet shopping mall users. Journal of Service Management, 8(3), 85-107.
  3. Lee, H., & Lim, G. (2023). A study on hybrid music recommendation system utilizing music and playlist metadata. Journal of Korean Intelligent Information Systems Society, 29(3), 145-165.
  4. Yoo, J., Jo, S., & Yoo, S. (2023). Performance evaluation of machine learning algorithms for predicting bestseller books. Journal of the Korea Information Technology Society, 21(7), 1-6.
  5. Jeong, J. (2021, May 25). Smartphone, the biggest complaint is battery life, 30%. ZDNet Korea. Retrieved from https://zdnet.co.kr/view/?no=20210522145609