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20 tháng 11 - 24 tháng 11, 2025

Xếp hạng: B (CORE2023)Offline

International Conference on Neural Information Processing

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The 32nd International Conference on Neural Information Processing (ICONIP 2025), serving as the annual flagship conference of the Asia Pacific Neural Network Society (APNNS) and the 35th Annual Meeting of the Japanese Neural Network Society (JNNS), will be held from November 20-24, 2025, at the Okinawa Institute of Science and Technology (OIST), Japan. It aims to be a premier forum for researchers, academics, and industry experts to present and discuss advancements in computational modelling, data analytics, and artificial intelligence.

Kêu gọi bài báo

Call for Papers: ICONIP 2025

The 32nd International Conference on Neural Information Processing (ICONIP 2025), the annual flagship conference of the Asia Pacific Neural Network Society (APNNS) and the 35th Annual Meeting of the Japanese Neural Network Society (JNNS), will be held from November 20th to November 24th, 2025, at the Okinawa Institute of Science and Technology (OIST), Japan.

ICONIP 2025 aims to provide a high-level international forum for scientists, researchers, educators, industrial professionals, and students worldwide to present the state of research and development, address new challenges, and discuss trends in neural information processing theory and applications.

The conference employs a single-blind paper reviewing process. The conference will be an in-person event, and authors must be available to present at the conference.

Publication

Proceedings will be published in the Springer series of Lecture Notes in Computer Science (LNCS) and Communications in Computer and Information Science (CCIS). All accepted papers will be open access from OpenReview about two weeks before the conference.

Detailed author instructions and the Springer template can be found here.

ICONIP 2025 Submission Instructions

  • Paper Length: Must be between 12 and 15 pages (including figures, references, and appendix) in Springer LNCS/LNAI format.
  • Format: PDF submission using the Springer LNCS/LNAI style. LaTeX is highly recommended.
  • Submission Portal: Electronic submission to OpenReview at https://openreview.net/group?id=apnns.org/ICONIP/2025/Conference.
  • Account: An OpenReview account is required for submission. Create one as soon as possible.
  • URLs: Reviewers are not required to review URLs included in papers.

Topics of the Conference

ICONIP2025 invites high-quality contributions covering, but not limited to, the following topics:

Theory and Algorithms

  • Machine learning
  • Explainable AI
  • Neural network models
  • Neurodynamics
  • Responsible AI

Computational Neurosciences

  • Models of learning and cognition
  • Neural data analysis
  • Brain-machine interface
  • Computational psychiatry

Applications and Frontiers

  • Big data analysis
  • Generative AI
  • Natural language processing
  • Robotics and control
  • Healthcare
  • Information security
  • Neuromorphic hardware
  • Privacy and security for AI

Important Dates

  • Special session proposal deadline: March 1st
  • Workshop proposal deadline: March 1st
  • Tutorial proposal deadline: May 1st
  • Paper submission deadline: May 15th / May 22nd AoE (May 23rd at noon UTC)
  • Notification of acceptance: July 15th
  • Camera-ready submission: August 15th
  • Early registration deadline: August 15th
  • Conference dates: November 20-24, 2025

Các ngày quan trọng

Ngày diễn ra Hội nghị

Conference Date

20 tháng 11, 202524 tháng 11, 2025

Nộp bài

Paper submission deadline

22 tháng 5, 2025

Thông báo

Notification of acceptance

15 tháng 7, 2025

Trước đây:
  • 25 tháng 7, 2025

Bản thảo cuối cùng

Camera-ready submission

15 tháng 8, 2025

Các ngày khác

Special session proposal deadline

1 tháng 3, 2025

Workshop proposal deadline

1 tháng 3, 2025

Tutorial proposal deadline

1 tháng 5, 2025

Nguồn xếp hạng

Nguồn: CORE2023

Xếp hạng: B

Lĩnh vực nghiên cứu: Machine learning

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