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Multimodal Learning toward Recommendation [Mīkstie vāki]

  • Formāts: Paperback / softback, 152 pages, height x width: 235x155 mm, XVII, 152 p., 1 Paperback / softback
  • Izdošanas datums: 18-Jan-2025
  • Izdevniecība: Springer International Publishing AG
  • ISBN-10: 303183187X
  • ISBN-13: 9783031831874
Citas grāmatas par šo tēmu:
  • Mīkstie vāki
  • Cena: 91,53 €*
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  • Standarta cena: 107,69 €
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  • Formāts: Paperback / softback, 152 pages, height x width: 235x155 mm, XVII, 152 p., 1 Paperback / softback
  • Izdošanas datums: 18-Jan-2025
  • Izdevniecība: Springer International Publishing AG
  • ISBN-10: 303183187X
  • ISBN-13: 9783031831874
Citas grāmatas par šo tēmu:
This book presents an in-depth exploration of multimodal learning toward recommendation, along with a comprehensive survey of the most important research topics and state-of-the-art methods in this area.





First, it presents a semantic-guided feature distillation method which employs a teacher-student framework to robustly extract effective recommendation-oriented features from generic multimodal features. Next, it introduces a novel multimodal attentive metric learning method to model user diverse preferences for various items. Then it proposes a disentangled multimodal representation learning recommendation model, which can capture users fine-grained attention to different modalities on each factor in user preference modeling. Furthermore, a meta-learning-based multimodal fusion framework is developed to model the various relationships among multimodal information. Building on the success of disentangled representation learning, it further proposes an attribute-driven disentangled representation learning method, which uses attributes to guide the disentanglement process in order to improve the interpretability and controllability of conventional recommendation methods. Finally, the book concludes with future research directions in multimodal learning toward recommendation.





The book is suitable for graduate students and researchers who are interested in multimodal learning and recommender systems. The multimodal learning methods presented are also applicable to other retrieval or sorting related research areas, like image retrieval, moment localization, and visual question answering.
Preface .- 1) Introduction .- 2) Semantic-Guided Feature Distillation
for Multimodal Recommendation .- 3) User Diverse Preference Modeling by
Multimodal Attentive Metric Learning .- 4) Disentangled Multimodal
Representation Learning for Recommendation .- 5) Dynamic Multimodal Fusion
via Meta-Learning Towards Multimodal Recommendation .- 6) Attribute-driven
Disentangled Representation Learning for Multimodal Recommendation .- 7)
Research Frontiers.
Fan Liu is a Research Fellow with the School of Computing, National University of Singapore (NUS). His research interests lie primarily in multimedia computing and information retrieval. His work has been published in a set of top forums, including ACM SIGIR, MM, WWW, TKDE, TOIS, TMM, and TCSVT. He is an area chair of ACM MM and a senior PC member of CIKM.





Zhenyang Li is a Postdoc with the Hong Kong Generative Al Research and Development Center Limited. His research interest is primarily in recommendation and visual question answering. His work has been published in a set of top forums, including ACM MM, TIP, and TMM.





Liqiang Nie is Professor at and Dean of the School of Computer Science and Technology, Harbin Institute of Technology (Shenzhen). His research interests are primarily in multimedia computing and information retrieval. He has co-authored more than 200 articles and four books. He is a regular area chair of ACM MM, NeurIPS, IJCAI, and AAAI, and a member of the ICME steering committee. He has received many awards, like the ACM MM and SIGIR best paper honorable mention in 2019, SIGMM rising star in 2020, TR35 China 2020, DAMO Academy Young Fellow in 2020, and SIGIR best student paper in 2021.