2021年最新SCI期刊影响因子查询系统
INFOR 期刊详细信息
基本信息
期刊名称 | INFOR INFOR |
---|---|
期刊ISSN | 0315-5986 |
期刊官方网站 | https://www.tandfonline.com/toc/tinf20/current |
是否OA | 否 |
出版商 | Taylor and Francis Ltd. |
出版周期 | Quarterly |
始发年份 | |
年文章数 | 16 |
最新影响因子 | 1.047(2021) |
中科院SCI期刊分区
大类学科 | 小类学科 | Top | 综述 |
---|---|---|---|
工程技术4区 | COMPUTER SCIENCE, INFORMATION SYSTEMS 计算机:信息系统4区 | 否 | 否 |
OPERATIONS RESEARCH & MANAGEMENT SCIENCE 运筹学与管理科学4区 |
CiteScore
CiteScore排名 | CiteScore | SJR | SNIP | ||
---|---|---|---|---|---|
学科 | 排名 | 百分位 | 0.71 | 0.319 | 0.319 |
Computer Science Signal Processing |
76 / 99 | 23% |
|||
Computer Science Information Systems |
199 / 269 | 26% |
|||
Computer Science Computer Science Applications |
418 / 569 | 26% |
补充信息
自引率 | 0.00% |
---|---|
H-index | 31 |
SCI收录状况 |
Science Citation Index Expanded |
官方审稿时间 | |
网友分享审稿时间 | 数据统计中,敬请期待。 |
PubMed Central (PML) | http://www.ncbi.nlm.nih.gov/nlmcatalog?term=0315-5986%5BISSN%5D |
投稿指南
期刊投稿网址 | https://www.editorialmanager.com/tinf/default.aspx |
---|---|
收稿范围 | pastingThe Information Systems and Operational Research (INFOR) journal publishes original high quality papers in the areas of data analytics and operations research. We focus on the theory, methodology and practice of Data Analytics and Operations Research and are particularly interested in papers that explore elements of both subjects. We welcome papers that examine the following topics: Computational intelligence Data-driven optimization Financial Optimization and Risk Management Operations Research in Forestry Operations Research in Health Care Optimization Production Planning and Scheduling Stochastic modelling and simulation Supply chain management Sustainable Operations Transportation and Logistics We accept the following forms of submission: Application: As a medium of communication between academics and practitioners, INFOR welcomes papers that demonstrate novel OR and IS approaches and concepts applied to important practical situations. Theory: Original contributions to the techniques and methodology of data analytics and operations research. Authors should clearly demonstrate the relevance of the results in terms of applications. Reviews: State-of-the-art surveys that review major theory and application development. Notes: Short technical communications and comments on previously published INFOR papers. We operate a rigorous single-blind peer review process. Visit our Instructions for Authors page for information on preparing your manuscript. |
收录体裁 | |
投稿指南 | |
投稿模板 | |
参考文献格式 | |
编辑信息 |