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Implementing Graph Databases to Improve Recommendation Systems in E-commerce


Article Information

Title: Implementing Graph Databases to Improve Recommendation Systems in E-commerce

Authors: 1Vijay Mallik Reddy, 2Lakshmi Nivas Nalla

Journal: Journal of environmental sciences and technology

HEC Recognition History
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Year: 2023

Volume: 2

Issue: 2

Language: en

Keywords: Graph databasesRecommendation systemsE-commercePersonalizationData modeling.

Categories

Abstract

Graph databases have emerged as a powerful tool for enhancing recommendation systems in e-commerce platforms. By modeling complex relationships between users, products, and their attributes as a graph structure, graph databases enable more accurate and personalized recommendations. This paper explores the implementation of graph databases to improve recommendation systems in e-commerce, highlighting their advantages over traditional relational databases. Through a review of existing literature and case studies, we examine the effectiveness of graph databases in capturing nuanced user preferences, identifying latent patterns, and delivering context-aware recommendations. By leveraging the inherent graph structure of e-commerce data, businesses can enhance customer engagement, increase conversion rates, and drive revenue growth in an increasingly competitive market.


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