International Journal of Data Science and Analytics

期刊基本信息

  • 期刊名称:International Journal of Data Science and Analytics
  • 期刊级别: Emerging Sources Citation Index (ESCI) Scopus (CiteScore)
  • 期刊ISSN:2364-415X
  • 期刊EISSN:2364-4168
  • 简称:INT J DATA SCI ANAL
  • 影响因子:2.8
  • 实时影响因子:-
  • 五年影响因子:2.8
  • JCI期刊引文指标:0.53
  • h-index:暂无h-index数据
  • 2024-2025自引率:7.10%
  • 期刊官方网站:期刊官方网站
  • 期刊投稿网址:https://www.editorialmanager.com/jdsa/
  • 是否OA开放访问:No
  • 出版商:Springer Nature

International Journal of Data Science and Analytics

Emerging Sources Citation Index (ESCI)Scopus (CiteScore)

期刊介绍

Data Science has been established as an important emergent scientific field and paradigm driving research evolution in such disciplines as statistics, computing science and intelligence science, and practical transformation in such domains as science, engineering, the public sector, business, social sci­ence, and lifestyle. The field encompasses the larger ar­eas of artificial intelligence, data analytics, machine learning, pattern recognition, natural language understanding, and big data manipulation. It also tackles related new sci­entific chal­lenges, ranging from data capture, creation, storage, retrieval, sharing, analysis, optimization, and vis­ualization, to integrative analysis across heterogeneous and interdependent complex resources for better decision-making, collaboration, and, ultimately, value creation.The International Journal of Data Science and Analytics (JDSA) brings together thought leaders, researchers, industry practitioners, and potential users of data science and analytics, to develop the field, discuss new trends and opportunities, exchange ideas and practices, and promote transdisciplinary and cross-domain collaborations. The jour­nal is composed of three streams: Regular, to communicate original and reproducible theoretical and experimental findings on data science and analytics; Applications, to report the significant data science applications to real-life situations; and Trends, to report expert opinion and comprehensive surveys and reviews of relevant areas and topics in data science and analytics.Topics of relevance include all aspects of the trends, scientific foundations, techniques, and applica­tions of data science and analytics, with a primary focus on:statistical and mathematical foundations for data science and analytics;understanding and analytics of complex data, human, domain, network, organizational, social, behavior, and system characteristics, complexities and intelligences;creation and extraction, processing, representation and modelling, learning and discovery, fusion and integration, presentation and visualization of complex data, behavior, knowledge and intelligence;data analytics, pattern recognition, knowledge discovery, machine learning, deep analytics and deep learning, and intelligent processing of various data (including transaction, text, image, video, graph and network), behaviors and systems;active, real-time, personalized, actionable and automated analytics, learning, computation, optimization, presentation and recommendation; big data architecture, infrastructure, computing, matching, indexing, query processing, mapping, search, retrieval, interopera­bility, exchange, and recommendation;in-memory, distributed, parallel, scalable and high-performance computing, analytics and optimization for big data;review, surveys, trends, prospects and opportunities of data science research, innovation and applications;data science applications, intelligent devices and services in scientific, business, governmental, cultural, behavioral, social and economic, health and medical, human, natural and artificial (including online/Web, cloud, IoT, mobile and social media) domains; andethics, quality, privacy, safety and security, trust, and risk of data science and analytics

期刊语言要求

Language
Presenting your work in a well-structured manuscript and in well-written English gives it its best chance for editors and reviewers to understand it and evaluate it fairly. Many researchers find that getting some independent support helps them present their results in the best possible light.

投稿要求

CITESCORE

CiteScoreSJRSNIPCiteScore排名
9.200.6781.393
学科分区排名百分位
大类:Mathematics
小类:Applied Mathematics
Q129 / 665
95%
大类:Mathematics
小类:Modeling and Simulation
Q122 / 361
94%
大类:Mathematics
小类:Computational Theory and Mathematics
Q114 / 197
93%
大类:Mathematics
小类:Computer Science Applications
Q1142 / 947
85%
大类:Mathematics
小类:Information Systems
Q175 / 474
84%

WOS期刊JCR分区

WOS分区等级:2区

按JIF指标学科分区收录子集JIF分区JIF排名JIF百分位
学科:COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCEESCIQ3105/204
48.8%
学科:COMPUTER SCIENCE, INFORMATION SYSTEMSESCIQ2128/258
50.6%
按JCI指标学科分区收录子集JCI分区JCI排名JCI百分位
学科:COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCEESCIQ3119/204
41.91%
学科:COMPUTER SCIENCE, INFORMATION SYSTEMSESCIQ3151/258
41.67%

期刊分区表预警名单

2025年03月发布的2025版:不在预警名单中

2024年02月发布的2024版:不在预警名单中

2023年01月发布的2023版:不在预警名单中

2021年12月发布的2021版:不在预警名单中

2020年12月发布的2020版:不在预警名单中

中科院2025年3月升级版

点击查看中国科学院期刊分区趋势图
大类学科小类学科Top期刊综述期刊
计算机科学 2区3区3区
COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
计算机:人工智能
2区1区4区
COMPUTER SCIENCE, INFORMATION SYSTEMS
计算机:信息系统
4区4区4区

中科院2023年12月旧的升级版

(没有被2023年的JCR升级版收录,仅供参考)

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