Recommendation systems in e-commerce applications with machine learning methods
- URL: http://arxiv.org/abs/2506.17287v1
- Date: Sun, 15 Jun 2025 10:51:01 GMT
- Title: Recommendation systems in e-commerce applications with machine learning methods
- Authors: Aneta Poniszewska-Maranda, Magdalena Pakula, Bozena Borowska,
- Abstract summary: E-commerce platforms are increasingly reliant on recommendation systems to enhance user experience, retain customers, and, in most cases, drive sales.<n>The integration of machine learning methods into these systems has significantly improved their efficiency, personalization, and scalability.<n>This paper aims to highlight the current trends in e-commerce recommendation systems, identify challenges, and evaluate the effectiveness of various machine learning methods used.
- Score: 0.44998333629984877
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: E-commerce platforms are increasingly reliant on recommendation systems to enhance user experience, retain customers, and, in most cases, drive sales. The integration of machine learning methods into these systems has significantly improved their efficiency, personalization, and scalability. This paper aims to highlight the current trends in e-commerce recommendation systems, identify challenges, and evaluate the effectiveness of various machine learning methods used, including collaborative filtering, content-based filtering, and hybrid models. A systematic literature review (SLR) was conducted, analyzing 38 publications from 2013 to 2025. The methods used were evaluated and compared to determine their performance and effectiveness in addressing e-commerce challenges.
Related papers
- Does Multimodality Improve Recommender Systems as Expected? A Critical Analysis and Future Directions [52.21847626165085]
Multimodal recommendation systems are increasingly popular for their potential to improve performance by integrating diverse data types.<n>However, the actual benefits of this integration remain unclear, raising questions about when and how it truly enhances recommendations.<n>We propose a structured evaluation framework to systematically assess multimodal recommendations across four dimensions.
arXiv Detail & Related papers (2025-08-07T13:21:00Z) - Real-time and personalized product recommendations for large e-commerce platforms [12.475382123139024]
We present a methodology to provide real-time and personalized product recommendations for large e-commerce platforms, specifically focusing on fashion retail.<n>Our approach aims to achieve accurate and scalable recommendations with minimal response times, ensuring user satisfaction.
arXiv Detail & Related papers (2025-06-26T15:16:44Z) - Online and Offline Evaluations of Collaborative Filtering and Content Based Recommender Systems [0.0]
This study provides a comparative analysis of a large-scale recommender system operating in Iran.
The system employs user-based and item-based recommendations using content-based, collaborative filtering, trend-based methods, and hybrid approaches.
Our methods of evaluation include manual evaluation, offline tests including accuracy and ranking metrics like hit-rate@k and nDCG, and online tests consisting of click-through rate (CTR)
arXiv Detail & Related papers (2024-11-02T20:05:31Z) - Intelligent Classification and Personalized Recommendation of E-commerce Products Based on Machine Learning [2.152073242131379]
The paper explores the significance and application of personalized recommendation systems across e-commerce, content information, and media domains.
It outlines challenges confronting personalized recommendation systems in e-commerce, including data privacy, algorithmic bias, scalability, and the cold start problem.
The paper outlines a personalized recommendation system leveraging the BERT model and nearest neighbor algorithm, specifically tailored to address the exigencies of the eBay e-commerce platform.
arXiv Detail & Related papers (2024-03-28T12:02:45Z) - Exploring Federated Unlearning: Review, Comparison, and Insights [101.64910079905566]
federated unlearning enables the selective removal of data from models trained in federated systems.<n>This paper examines existing federated unlearning approaches, examining their algorithmic efficiency, impact on model accuracy, and effectiveness in preserving privacy.<n>We propose the OpenFederatedUnlearning framework, a unified benchmark for evaluating federated unlearning methods.
arXiv Detail & Related papers (2023-10-30T01:34:33Z) - Embedding in Recommender Systems: A Survey [67.67966158305603]
A crucial aspect is embedding techniques that covert the high-dimensional discrete features, such as user and item IDs, into low-dimensional continuous vectors.
Applying embedding techniques captures complex entity relationships and has spurred substantial research.
This survey covers embedding methods like collaborative filtering, self-supervised learning, and graph-based techniques.
arXiv Detail & Related papers (2023-10-28T06:31:06Z) - An Efficient Recommendation System in E-commerce using Passer learning optimization based on Bi-LSTM [4.483925165891734]
This article introduces a recommendation system based on Passer Learning Optimization-enhanced Bi-LSTM classifier applicable to e-commerce recommendation systems.<n>It achieves as low as 1.24% MSE on the baby dataset. This lifts it as high as 88.58%. Besides, there is also robust performance of the system on digital music and patio lawn garden datasets at F1 of 88.46% and 92.51%, respectively.
arXiv Detail & Related papers (2023-07-31T20:09:25Z) - ItemSage: Learning Product Embeddings for Shopping Recommendations at
Pinterest [60.841761065439414]
At Pinterest, we build a single set of product embeddings called ItemSage to provide relevant recommendations in all shopping use cases.
This approach has led to significant improvements in engagement and conversion metrics, while reducing both infrastructure and maintenance cost.
arXiv Detail & Related papers (2022-05-24T02:28:58Z) - A Comprehensive Review on Non-Neural Networks Collaborative Filtering
Recommendation Systems [1.3124513975412255]
Collaborative filtering (CF) uses the known preference of a group of users to make predictions and recommendations about the unknown preferences of other users.
First introduced in the 1990s, a wide variety of increasingly successful models have been proposed.
Due to the success of machine learning techniques in many areas, there has been a growing emphasis on the application of such algorithms in recommendation systems.
arXiv Detail & Related papers (2021-06-20T11:13:33Z) - Heterogeneous Demand Effects of Recommendation Strategies in a Mobile
Application: Evidence from Econometric Models and Machine-Learning
Instruments [73.7716728492574]
We study the effectiveness of various recommendation strategies in the mobile channel and their impact on consumers' utility and demand levels for individual products.
We find significant differences in effectiveness among various recommendation strategies.
We develop novel econometric instruments that capture product differentiation (isolation) based on deep-learning models of user-generated reviews.
arXiv Detail & Related papers (2021-02-20T22:58:54Z) - Empowering Active Learning to Jointly Optimize System and User Demands [70.66168547821019]
We propose a new active learning approach that jointly optimize the active learning system (training efficiently) and the user (receiving useful instances)
We study our approach in an educational application, which particularly benefits from this technique as the system needs to rapidly learn to predict the appropriateness of an exercise to a particular user.
We evaluate multiple learning strategies and user types with data from real users and find that our joint approach better satisfies both objectives when alternative methods lead to many unsuitable exercises for end users.
arXiv Detail & Related papers (2020-05-09T16:02:52Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.