Machine Learning Methods in Customer Segmentation and Recommendation Systems

As access to all kinds of data becomes more and more available, the need for people to efficiently classify and extract useful data is urgent, especially for businesses. Machine learning has enhanced recommender systems through collaborative filtering, content-based filtering, and hybrid models. Col...

Full description

Saved in:
Bibliographic Details
Main Author: Guo Yiran
Format: Article
Language:English
Published: EDP Sciences 2025-01-01
Series:SHS Web of Conferences
Online Access:https://www.shs-conferences.org/articles/shsconf/pdf/2025/09/shsconf_icdde2025_02012.pdf
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1839639375297642496
author Guo Yiran
author_facet Guo Yiran
author_sort Guo Yiran
collection DOAJ
description As access to all kinds of data becomes more and more available, the need for people to efficiently classify and extract useful data is urgent, especially for businesses. Machine learning has enhanced recommender systems through collaborative filtering, content-based filtering, and hybrid models. Collaborative filtering predicts user preferences based on past interactions but faces cold start and scalability issues. This article shows that content-based filtering uses attributes to recommend items, but relies on metadata quality. Case studies show that Amazon applied collaborative filtering and DBSCAN for fraud detection, improving recommendation accuracy by 12%. Banks use machine learning for segmentation and fraud detection, and PCA improves anomaly detection by 15%. Healthcare applies clustering for patient classification, improving treatment accuracy by 18%. This article points out that current technical challenges include data quality issues, privacy risks, and bias. Poor data quality leads to inaccurate results, while privacy issues (as shown by the Equifax breach) require stronger protection. Future solutions include bias detection, diverse datasets, and encryption techniques to enhance security and reliability.
format Article
id doaj-art-9c7a1d6cc5934dba936a7f68d355409a
institution Matheson Library
issn 2261-2424
language English
publishDate 2025-01-01
publisher EDP Sciences
record_format Article
series SHS Web of Conferences
spelling doaj-art-9c7a1d6cc5934dba936a7f68d355409a2025-07-04T09:35:48ZengEDP SciencesSHS Web of Conferences2261-24242025-01-012180201210.1051/shsconf/202521802012shsconf_icdde2025_02012Machine Learning Methods in Customer Segmentation and Recommendation SystemsGuo Yiran0Math & Agricultural and Natural Resource Department, University of MarylandAs access to all kinds of data becomes more and more available, the need for people to efficiently classify and extract useful data is urgent, especially for businesses. Machine learning has enhanced recommender systems through collaborative filtering, content-based filtering, and hybrid models. Collaborative filtering predicts user preferences based on past interactions but faces cold start and scalability issues. This article shows that content-based filtering uses attributes to recommend items, but relies on metadata quality. Case studies show that Amazon applied collaborative filtering and DBSCAN for fraud detection, improving recommendation accuracy by 12%. Banks use machine learning for segmentation and fraud detection, and PCA improves anomaly detection by 15%. Healthcare applies clustering for patient classification, improving treatment accuracy by 18%. This article points out that current technical challenges include data quality issues, privacy risks, and bias. Poor data quality leads to inaccurate results, while privacy issues (as shown by the Equifax breach) require stronger protection. Future solutions include bias detection, diverse datasets, and encryption techniques to enhance security and reliability.https://www.shs-conferences.org/articles/shsconf/pdf/2025/09/shsconf_icdde2025_02012.pdf
spellingShingle Guo Yiran
Machine Learning Methods in Customer Segmentation and Recommendation Systems
SHS Web of Conferences
title Machine Learning Methods in Customer Segmentation and Recommendation Systems
title_full Machine Learning Methods in Customer Segmentation and Recommendation Systems
title_fullStr Machine Learning Methods in Customer Segmentation and Recommendation Systems
title_full_unstemmed Machine Learning Methods in Customer Segmentation and Recommendation Systems
title_short Machine Learning Methods in Customer Segmentation and Recommendation Systems
title_sort machine learning methods in customer segmentation and recommendation systems
url https://www.shs-conferences.org/articles/shsconf/pdf/2025/09/shsconf_icdde2025_02012.pdf
work_keys_str_mv AT guoyiran machinelearningmethodsincustomersegmentationandrecommendationsystems