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Predicting Future E-Commerce Purchases from Multi-Visit Sequences and Behavioural Micro-Interactions Cover

Predicting Future E-Commerce Purchases from Multi-Visit Sequences and Behavioural Micro-Interactions

Open Access
|Jun 2026

Abstract

This paper investigates future purchase prediction in e-commerce using sequences of user visits and behavioural micro-interactions. The study is based on anonymised production data from three e-commerce domains, comprising approximately 690,000 users and 2.61 million visits. User histories are modelled as temporally ordered sequences of visits, with each visit represented by 21 features. Six models are evaluated: three tabular approaches (SVM, XGBoost, CatBoost) and three sequential architectures (RNN, LSTM, GRU), each tested in two variants addressing class imbalance. The experimental setup employs a temporal train–test split, five random seeds, and bootstrap-based significance testing. The top-performing sequential models achieve an AUC-PR of approximately 0.379, significantly outperforming the strongest tabular baseline, XGBoost (AUC-PR ≈ 0.364). This advantage remains consistent across domain-specific evaluations as well as in a leave-one-shop-out setting. Further analysis shows that mouse movement and scrolling-related features provide the strongest predictive signal, whereas extending user histories beyond 40 visits yields only marginal performance gains.

Language: English
Page range: 412 - 433
Submitted on: Jan 12, 2026
Accepted on: May 22, 2026
Published on: Jun 29, 2026
Published by: SAN University
In partnership with: Paradigm Publishing Services

© 2026 Marcin Gabryel, Milan Kocić, Aleksandra Gabryel, Marek Kisiel-Dorohonicki, Zofia Patora-Wysocka, published by SAN University
This work is licensed under the Creative Commons Attribution 4.0 License.