Advanced Multimodal Compatibility Modeling and Recommendation

£34.99

Advanced Multimodal Compatibility Modeling and Recommendation

E-commerce: business aspects Data warehousing Data mining Information retrieval Applied computing Computer applications in the social and behavioural sciences Mathematical theory of computation Expert systems / knowledge-based systems Machine learning

Authors: Weili Guan, Xuemeng Song, Dongliang Zhou, Liqiang Nie

Dinosaur mascot

Collection: Synthesis Lectures on Information Concepts, Retrieval, and Services

Language: English

Published by: Springer

Published on: 18th March 2025

Format: LCP-protected ePub

ISBN: 9783031810480


Overview

This Third Edition sheds light on state-of-the-art theories and practices in multimodal compatibility modeling and recommendation, offering comprehensive insights into this evolving field. This topic, and fashion compatibility modeling in particular, has garnered increasing research attention in recent years due to the significant economic impact of e-commerce. Building upon recent research and the prior edition, the authors present a series of graph-learning based multimodal compatibility modeling schemes, all of which have been proven to be effective over several public real-world datasets.

Methods and Techniques

This book introduces a number of advanced multimodal compatibility modeling and recommendation methods, including category-guided multimodal compatibility modeling and try-on-guided multimodal compatibility modeling. The authors also provide comprehensive solutions, including correlation-oriented graph learning, modality-oriented graph learning, unsupervised disentangled graph learning, partially supervised disentangled graph learning, and metapath-guided heterogeneous graph learning.

Show moreShow less