仕訳帳情報
Electronics
https://www.mdpi.com/journal/electronics
インパクト ・ ファクター:
2.600
出版社:
MDPI
ISSN:
2079-9292
閲覧:
26849
追跡:
44
論文募集
Aims

Electronics (ISSN 2079-9292) is an international, peer-reviewed, open access journal on the science of electronics and its applications. It publishes reviews, research articles, short communications and letters. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the maximum length of the papers. Full experimental and/or methodical details must be provided.

Subject Areas:

The scope of Electronics includes:

    Microelectronics
    Optoelectronics
    Industrial Electronics
    Power Electronics
    Bioelectronics
    Microwave and Wireless Communications
    Computer Science & Engineering
    Networks
    Systems & Control Engineering
    Circuit and Signal Processing
    Semiconductor Devices
    Artificial Intelligence
    Electrical and Autonomous Vehicles
    Quantum Electronics
    Flexible Electronics
    Artificial Intelligence Circuits and Systems (AICAS)
    Electronic Multimedia
    Electronic Materials
最終更新 Dou Sun 2024-08-11
Special Issues
Special Issue on Large Language Models for Recommender Systems
提出日: 2026-04-30

Dear Colleagues, Large Language Models (LLMs) have rapidly transformed the landscape of artificial intelligence, offering unprecedented capabilities in natural language understanding, reasoning, and generative tasks. In parallel, recommender systems remain a cornerstone of digital platforms, guiding user decisions in domains such as e-commerce, media, education, and healthcare. The intersection of these two areas opens new opportunities for building highly personalized, context-aware, and conversational recommendation services. Unlike traditional recommenders that primarily rely on structured interaction data, LLM-powered recommenders can leverage unstructured content, dialogue history, and user intent expressed in natural language. This shift not only enhances user experience but also raises new research challenges in scalability, fairness, explainability, and evaluation. This Special Issue aims at providing a dedicated venue for advancing research at the convergence of LLMs and recommender systems. We seek to explore how LLMs can enrich recommender pipelines—ranging from candidate generation and ranking to explanation and interactive recommendation—and how recommender system requirements can in turn shape the development of more efficient and trustworthy LLMs. This Special Issue aligns with the journal’s mission to showcase cutting-edge research in artificial intelligence, data-driven systems, and human-centered computing. Contributions will highlight both theoretical advances and practical deployments, fostering dialogue between the recommender systems and natural language processing communities. We invite contributions on topics including, but not limited to, the following: 1. Architectures and frameworks for integrating LLMs with traditional recommender pipelines. 2. Prompt engineering, fine-tuning, and alignment strategies for recommendation tasks. 3. LLMs for conversational and dialogue-based recommender systems. 4. Multimodal recommendation leveraging LLMs (e.g., text, image, video, and audio). 5. Scalability, efficiency, and resource optimization in LLM-powered recommendation. 6. Fairness, bias mitigation, explainability, and transparency. 7. Human–AI collaboration and user experience design. 8. Benchmarks, evaluation methodologies, and reproducibility in LLM-based recommendation research. 9. Real-world applications and case studies across industries such as retail, media, healthcare, and education. In this Special Issue, we welcome both original research articles and comprehensive review papers that push the boundaries of knowledge in this timely and impactful area. We look forward to receiving your contributions. Dr. Yong Zheng Dr. Peng Liu Guest Editors
最終更新 Peng Liu 2025-11-03
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