Multimodal Knowledge Systems Multimodal Knowledge Systems
Wireless Networks

Multimodal Knowledge Systems

Construction and Reasoning

    • $129.99
    • $129.99

Publisher Description

This book focuses on advancing the integration of multimodal data (text, images, and structured knowledge) to enable precise knowledge extraction and human-like reasoning. The book’s primary objective is to address critical challenges such as modality gaps, semantic misalignment, dataset biases, and static reasoning paradigms. By introducing novel frameworks that unify graph-based learning, hierarchical representation, bias mitigation, and iterative refinement, this book provides systematic solutions to build robust, interpretable, and scalable AI systems. This book addresses gaps caused by incomplete textual semantics, spurious correlations across modalities, and inflexible reasoning pipelines by offering three pivotal contributions. First, the authors offer theoretical innovations in graph alignment techniques, hierarchical learning paradigms, and multi-agent reasoning frameworks. Then, the book goes on to offer practical tools including benchmark datasets, reproducible methodologies, and applications validated on state-of-the-art tasks. Finally, the book offers a broader impact through solutions tailored for low-resource settings, ethical considerations in AI deployment, and integration with emerging technologies like large foundation models. By bridging the divide between theoretical advancements and real-world applicability, the book serves as an essential resource for researchers and practitioners aiming to leverage multimodal data effectively, ethically, and at scale.

Focuses on the integration of multimodal data to enable precise knowledge extraction and human-like reasoning;
Covers challenges presented by graph-based alignment, hierarchical learning, and multi-agent debate frameworks;
Offers tools such as bias-mitigated datasets and ethical deployment guidelines for scalable, interpretable AI.

GENRE
Professional & Technical
RELEASED
2026
June 5
LANGUAGE
EN
English
LENGTH
247
Pages
PUBLISHER
Springer Nature Switzerland
SELLER
Springer Nature B.V.
SIZE
31.1
MB
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