*恭喜浙江省农业科学院俞老师在SCI期刊 Environmental Science and Pollution Research(IF:2.914)上成功发表
*恭喜西安理工大学张老师,环境水利专业,文章成功发表在SCI期刊Environmental Science and Pollution Research上,IF2.914
*恭喜山东交通学院谢老师在SCI期刊APPLIED SURFACE SCIENCE(IF5.15)上成功发表
*恭喜华中科技大学黄老师在SCI期刊 ACS Applied Materials & Interfaces(IF8.456)上成功发表
*恭喜中南大学湘雅医院黄医生在Frontiers in Oncology(IF 4.137)上成功发表
*恭喜复旦大学辛博士在SCI期刊 FEBS LETTERS(IF2.675)上成功发表
*恭喜中南大学陈博士在THIN-WALLED STRUCTURESSCI期刊(IF3.488)上成功发表
*恭喜湖南工学院郭老师在SCI期刊SIMULATION MODELLING PRACTICE AND THEORY(IF2.42)上成功发表
*恭喜东华大学闫老师在SCI期刊Advanced Functional Materials(IF 15.621)上成功发表
*恭喜安徽医科大学肖老师在SCI期刊BMC CELL BIOLOGY(IF 3.485)上成功发表
*恭喜四川大学华西医院谢医生在SCI期刊European Heart Journal: Acute Cardiovascular Care(IF 3.734)上成功发表

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2021年最新SCI期刊影响因子查询系统

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COMPUTATIONAL INTELLIGENCE 期刊详细信息

基本信息
期刊名称 COMPUTATIONAL INTELLIGENCE
COMPUTATIONAL INTELLIGENCE
期刊ISSN 0824-7935
期刊官方网站 http://onlinelibrary.wiley.com/journal/10.1111/(ISSN)1467-8640
是否OA
出版商 Wiley-Blackwell Publishing Ltd
出版周期 Quarterly
始发年份 1985
年文章数 52
最新影响因子 2.142(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, ARTIFICIAL INTELLIGENCE 计算机:人工智能4区
CiteScore
CiteScore排名 CiteScore SJR SNIP
学科 排名 百分位 2.09 0.357 0.970
Mathematics
Computational Mathematics
32 / 139 77%
Computer Science
Artificial Intelligence
74 / 189 61%
补充信息
自引率 15.30%
H-index 41
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=0824-7935%5BISSN%5D
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期刊投稿网址 http://mc.manuscriptcentral.com/coin
收稿范围
FOCAL TOPICS OF COMPUTATIONAL INTELLIGENCE
Discovery science and knowledge mining. Discovery science (also known as discovery-based science) is a scientific methodology which emphasizes analysis of large volumes of experimental data or text data with the goal of finding new patterns or correlations, leading to hypothesis formation and other scientific methodologies. Tools of interest include: Data Mining: looking for associations or relationships in operational or transactional data; Text Mining and Information Extraction: looking for concepts and their associations or relationships in natural language text; Structured, semi-structured and unstructured text mining; Text Summarization: extracting terms and phrases from large text document collections that summarize their content; Web mining: Web structure, content and usage mining; and, Ontology Learning from Text and Data bases.
Web intelligence and semantic web.  Web intelligence is concerned with the application of AI to the next generation of web systems, services and resources. These include better search/retrieval algorithms, client side systems (e.g. more effective agents) and server side systems (e.g. effective ways to present material on web pages and throughout web sites, including adaptive websites and personalized interfaces).
The semantic web is an extension to the World Wide Web, in which web content is expressed in a form that is accessible to programs (software agents), following the vision of the web as universal medium for data, information and knowledge exchange.
Agents and multiagent systems.  Agents as a computational abstraction have replaced 'objects' in software and have provided the necessary ingredients to move to societies of interacting intelligent entities, based on concepts like agent societies, market economies, e-commerce models and game theory. Such abstractions are dispersed throughout the scientific world, depending largely on applications. Multiagent systems (MAS) are systems in which many autonomous intelligent agents interact with each other. Agents can be either cooperative, pursuing a common goal, or selfish, going after their own interests. Architectures, interaction protocols and languages must be developed for multiagent systems. Topics of interest include: Autonomy-oriented computing; Agent systems methodology and language; Agent-based simulation and modeling; Agent-based applications; Agent-based negotiation and autonomous auction; Advanced Software Engineering supports for Multiagent systems; Trust in Agent Society; and Distributed problem solving.
Machine learning in knowledge-based systems.  Knowledge-based systems aim to make expertise available for decision making, and information sharing, when and where needed. The next generation of such systems needs to tap into large domain-specific knowledge, which combine machine learning and structured background knowledge representation, such as ontology, and causal representations and constraint reasoning. Information sharing is concerned with creating collaborative knowledge environments for sharing and disseminating information. Learning is based on real-world data. Key challenges involve the decomposition of practical problems into multiple learnable components, the interaction between the components, and the application of suitable learning algorithms, often in the absence of adequate amounts of labeled training data. Topics of interest include the application of machine learning methods to new practical problems introducing novel algorithms, system frameworks of learnable components or evaluation techniques.
Key application areas of AI. We aim to make the journal the focus of key application areas, where AI is making a significant impact, but lack a coherent publication venue. These include: Business Intelligence, i.e. data mining to support business decision makers; Social Network mining, e.g. modelling aggregate properties and dynamics of social networks, classifying vertices and edges of social networks, identifying clusters of users; Critical Infrastructure Protection, e.g. intrusion/anomaly detection & response, learning knowledge bases of system administration, log file mining); Entertainment and Game Development, i.e. building game engines using AI techniques; Software Engineering, including program understanding, software repositories and reverse engineering; Business, Finance, Commerce and Economics: learning aggregate behaviours (e.g. stock market trends) or modeling individual and group demographics (e.g. web mining); and Knowledge-based and Personalized User Interfaces, to make interaction clearer to the user and more efficient, with better support for the users' goals, and efficient presentation of complex information.
Please note that submissions that are straightforward applications to Machine Learning or other AI techniques to new tasks or new domains will be rejected without review unless they bring novelty in other aspects, such as significance and analysis of the results, explanations of why some methods work better than others in these domains, or other relevant insights.
Abstracting and Indexing Information
ABI/INFORM Collection (ProQuest)
Academic Search (EBSCO Publishing)
Academic Search Alumni Edition (EBSCO Publishing)
Academic Search Premier (EBSCO Publishing)
Advanced Technologies & Aerospace Database (ProQuest)
American Business Law Journal (Academy of Legal Studies in Business)
Business Premium Collection (ProQuest)
CatchWord (Publishing Technology)
COMPENDEX (Elsevier)
CompuMath Citation Index (Clarivate Analytics)
Computer Abstracts (Emerald)
Computer Science Index (EBSCO Publishing)
Current Contents: Engineering, Computing & Technology (Clarivate Analytics)
Current Index to Statistics (ASA/IMS)
EBSCO Online (EBSCO Publishing)
InfoTrac (GALE Cengage)
Journal Citation Reports/Science Edition (Clarivate Analytics)
Mathematical Reviews/MathSciNet/Current Mathematical Publications (AMS)
Proquest Business Collection (ProQuest)
ProQuest Central (ProQuest)
ProQuest Central K-120
PsycINFO/Psychological Abstracts (APA)
Science Citation Index Expanded (Clarivate Analytics)
SciTech Premium Collection (ProQuest)
SCOPUS (Elsevier)
Technology Collection (ProQuest)
The DBLP Computer Science Bibliography (University of Trier)
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