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IEEE Transactions on Neural Networks and Learning Systems《IEEE神经网络与学习系统汇刊》 (官网投稿)

简介
  • 期刊简称IEEE T NEUR NET LEAR
  • 参考译名《IEEE神经网络与学习系统汇刊》
  • 核心类别 SCIE(2023版), 高质量科技期刊(T2), 目次收录(知网),外文期刊,
  • IF影响因子
  • 自引率10.40%
  • 主要研究方向计算机科学-COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE计算机:人工智能;COMPUTER SCIENCE, HARDWARE & ARCHITECTURE计算机:硬件;COMPUTER SCIENCE, THEORY & METHODS计算机:理论方法;ENGINEERING, ELECTRICAL & ELECTRONIC工程:电子与电气

主要研究方向:

等待设置主要研究方向
计算机科学-COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE计算机:人工智能;COMPUTER SCIENCE, HARDWARE & ARCHITECTURE计算机:硬件;COMPUTER SCIENCE, THEORY & METHODS计算机:理论方法;ENGINEERING, ELECTRICAL & ELECTRONIC工程:电子与电气

IEEE Transactions on Neural Networks and Learning Systems《IEEE神经网络与学习系统汇刊》(月刊). The IEEE Transactions on Neural Networks and Learning System...[显示全部]
征稿信息

万维提示:

1、投稿方式:在线投稿。

2、期刊网址:

https://cis.ieee.org/publications/t-neural-networks-and-learning-systems

https://ieeexplore.ieee.org/xpl/aboutJournal.jsp?punumber=5962385

3、投稿网址:

http://mc.manuscriptcentral.com/tnnls

4、官网邮箱:ieeetnnls@gmail.com(主编)

haibohe@uri.edu(主编)

(更多编辑邮箱请查看期刊官网信息)

5、期刊刊期:月刊,一年出版12期。

2021年1117日星期三

                          

 

投稿须知【官网信息】

 

TNNLS Information for Authors

Scope

The IEEE Transactions on Neural Networks and Learning Systems publishes technical articles that deal with the theory, design, and applications of neural networks and related learning systems. Readers are encouraged to submit manuscripts which disclose significant technical achievements, indicate exploratory developments, or present significant application for neural networks and related learning systems.

A. Types of Contributions

TNNLS publishes three types of articles:

Papers (Full Papers)

Brief Papers

Comments Papers and Communications

Full Papers are characterized by novel contributions of archival nature in developing theories and/or innovative applications of neural networks and learning systems. The contribution should not be of incremental nature, but must present a well-founded and conclusive treatment of a problem. Well organized survey of literature on topics of current interest may also be considered.

Brief Papers report sufficiently interesting new theories and/or developments on previously published work in neural networks and related learning systems. For example, brief papers may report an extension of previous results or algorithms, innovative applications of a known approach to interesting problems, brief theoretical results, etc. The contribution should be conclusive and useful.

Comments Papers and Communications are short articles which may be commenting on an error one has found in, or a significant disagreement one has with, a previously published paper. Typically, a comments paper is assigned to the same Associate Editor who handled the published paper being commented on. If the Associate Editor who was handling the previously published paper is no longer available, the Editor-in-Chief will assign the comments paper to another Associate Editor whose expertise closely matches the paper’s topic. Comments papers and communications should comprise a significant contribution of interest to the TNNLS readership. The authors of the original paper may be invited to submit a rebuttal. A comments paper should be as concise as possible and will not exceed 3 pages formatted in the IEEE two-column style.

During the review process, submitted manuscripts will NOT be transferred from one category to another after submission/review. It would be the responsibility of authors to decide the category of their manuscript at the time of submission. The articles in this journal are peer reviewed in accordance with the requirements set forth in the IEEE Publication Services and Products Board Operations Manual (https://pspb.ieee.org/images/.les/.les/opsmanual.pdf). Each published article was reviewed by a minimum of two independent reviewers using a single-blind peer review process, where the identities of the reviewers are not known to the authors, but the reviewers know the identities of the authors.

B. Submission of Manuscripts

To avoid delay in processing your paper, please follow closely the following guidelines. Submission and review of new manuscripts is now done through ScholarOne Manuscripts, the IEEE’s on-line submission and review system. Please log on to mc.manuscriptcentral.com/tnnls and follow the directions to create an account (if a first time user) and to submit your manuscript. If the manuscript is printable (all font embedded), it will be entered into the review process. You will be able to check on the status of your manuscript during the review process. Authors are required to provide detailed contact information for every author of their paper during submission. The paper will be returned without review if any such information is missing or incorrect.

The IEEE Transactions on Neural Networks and Learning Systems is primarily devoted to archival reports of work that have not been published elsewhere. Specifically, conference records and book chapters that have been published are not acceptable unless and until they have been significantly enhanced. In special circumstances or on exceptional occasions, the Editor-in-Chief may deem a contribution noteworthy enough to be exempted from this policy. Authors will be asked to confirm that the work being submitted has not been published elsewhere nor is it currently under review by another publication. If either of these conditions is not met or is subsequently violated, the article will be disqualified from possible publication in TNNLS.

Plagiarism in any form will be considered a serious breach of professional conduct with potentially severe ethical and legal consequences as defined in the IEEE PSPB operational manual, which can be downloaded from: https://pspb.ieee.org/images/files/files/opsmanual.pdf.

C. ORCID Required

All IEEE journals require an Open Researcher and Contributor ID (ORCID) for all authors. To create an ORCID, please visit: https://orcid.org/register. The author will need a registered ORCID in order to submit a manuscript or review a proof in this journal.

D. English Language Editing Services

English language editing services can help refine the language of your article and reduce the risk of rejection without review. IEEE authors are eligible for discounts at several language editing services; visit the IEEE Author Center to learn more. Please note these services are fee-based and do not guarantee acceptance.

E. Author Names in Native Languages

IEEE supports the publication of author names in their native language alongside the English versions of their names in the author list of an article. For more information, please visit the IEEE Author Center at the following URL: https://journals.ieeeauthorcenter.ieee.org/create-your-ieee-article/create-the-text-of-your-article/publishing-author-names-in-native-languages/.

F. Style for Manuscript

The IEEE Transactions on Neural Networks and Learning Systems follows the format standards of the IEEE. The IEEE Author Center can be accessed here: https://ieeeauthorcenter.ieee.org.

Here are some of the general guidelines. A list of 4–5 keywords (index terms) and an abstract (described below) are required for all manuscripts submitted to this journal. When submitting a new article through ScholarOne Manuscripts, you may choose your own keywords related to the submitted manuscript. The submitted manuscript must be in the following format:

PDF format;

Singled-spaced, double column, standard IEEE published format.

All pages should be numbered. Provide an abstract of reasonable length that is an informative summary of the paper, including any important results found or conclusions drawn. Authors are encouraged to put detailed derivations in appendixes.

……

更多详情:

https://cis.ieee.org/publications/t-neural-networks-and-learning-systems/tnnls


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