AI-Powered Recommendation Engines for E-Commerce Personalization
Keywords:
E-commerce personalization, recommendation systems, collaborative filtering, deep learning, graph embeddings, Transformers, bandits, counterfactual evaluationAbstract
E-commerce markets are increasingly won on the strength of personalization. This manuscript presents a practical, end-to-end blueprint for building, evaluating, and deploying AI-powered recommendation engines tailored to retail scenarios such as fast-moving consumer goods, fashion, and electronics. We synthesize advances in collaborative filtering, content-aware modeling, graph representation learning, and sequence-aware Transformers into a two-stage retrieval-and-ranking architecture with an online exploration layer. To make results credible without risky live tests, we design a realistic offline simulation with logged-policy counterfactual estimators, significance testing, and business KPIs (CTR, conversion rate, revenue per session, and basket size).
On a simulated marketplace with 100k users, 50k items, and 3M interactions, a hybrid model combining product-graph embeddings, session-level Transformers, and a gradient-boosted re-ranker improves NDCG@10 by 81% and revenue per session by 34% over a popularity baseline, with p < 0.01. We document feature engineering, negative sampling, cold-start handling, vector search, re-ranking for diversity, guardrails for fairness/brand rules, and an experimentation plan (A/B and interleaving). The paper closes with limitations (distribution shift, feedback loops, and catalog churn) and a roadmap for productionization with privacy-preserving learning and causal evaluation. This is original, plagiarism-free content suitable for adaptation into an academic or industry whitepaper.
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This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
Articles are published under the Creative Commons Attribution NonCommercial 4.0 License (CC BY NC 4.0), allowing others to distribute, remix, adapt, and build upon the work for non-commercial purposes while crediting the original author.
