English

Cross-Platform E-Commerce Product Categorization and Recategorization: A Multimodal Hierarchical Classification Approach

Machine Learning 2025-11-11 v2 Artificial Intelligence Information Retrieval

Abstract

This study addresses critical industrial challenges in e-commerce product categorization, namely platform heterogeneity and the structural limitations of existing taxonomies, by developing and deploying a multimodal hierarchical classification framework. Using a dataset of 271,700 products from 40 international fashion e-commerce platforms, we integrate textual features (RoBERTa), visual features (ViT), and joint vision-language representations (CLIP). We investigate fusion strategies, including early, late, and attention-based fusion within a hierarchical architecture enhanced by dynamic masking to ensure taxonomic consistency. Results show that CLIP embeddings combined via an MLP-based late-fusion strategy achieve the highest hierarchical F1 (98.59%), outperforming unimodal baselines. To address shallow or inconsistent categories, we further introduce a self-supervised "product recategorization" pipeline using SimCLR, UMAP, and cascade clustering, which discovered new, fine-grained categories (for example, subtypes of "Shoes") with cluster purities above 86%. Cross-platform experiments reveal a deployment-relevant trade-off: complex late-fusion methods maximize accuracy with diverse training data, while simpler early-fusion methods generalize more effectively to unseen platforms. Finally, we demonstrate the framework's industrial scalability through deployment in EURWEB's commercial transaction intelligence platform via a two-stage inference pipeline, combining a lightweight RoBERTa stage with a GPU-accelerated multimodal stage to balance cost and accuracy.

Keywords

Cite

@article{arxiv.2508.20013,
  title  = {Cross-Platform E-Commerce Product Categorization and Recategorization: A Multimodal Hierarchical Classification Approach},
  author = {Lotte Gross and Rebecca Walter and Nicole Zoppi and Adrien Justus and Alessandro Gambetti and Qiwei Han and Maximilian Kaiser},
  journal= {arXiv preprint arXiv:2508.20013},
  year   = {2025}
}

Comments

Accetped at IEEE BigData 2025, 10 pages, 5 figures, 3 tables

R2 v1 2026-07-01T05:08:41.855Z