Data Science and Engineering

期刊全称Data Science and Engineering
涉及主题计算机科学数学人工智能数据挖掘操作系统程序设计语言机器学习情报检索工程类万维网组合数学经济生物法学理论计算机科学政治学数据库哲学统计数据科学离散数学地理算法
期刊介绍

The journal of Data Science and Engineering (DSE) responds to the remarkable change in the focus of information technology development from CPU-intensive computation to data-intensive computation, where the effective application of data, especially big data, becomes vital. The emerging discipline data science and engineering, an interdisciplinary field integrating theories and methods from computer science, statistics, information science, and other fields, focuses on the foundations and engineering of efficient and effective techniques and systems for data collection and management, for data integration and correlation, for information and knowledge extraction from massive data sets, and for data use in different application domains. Focusing on the theoretical background and advanced engineering approaches, DSE aims to offer a prime forum for researchers, professionals, and industrial practitioners to share their knowledge in this rapidly growing area. It provides in-depth coverage of the latest advances in the closely related fields of data science and data engineering. More specifically, DSE covers four areas: (i) the data itself, i.e., the nature and quality of the data, especially big data; (ii) the principles of information extraction from data, especially big data; (iii) the theory behind data-intensive computing; and (iv) the techniques and systems used to analyze and manage big data. DSE welcomes papers that explore the above subjects. Specific topics include, but are not limited to: (a) the nature and quality of data, (b) the computational complexity of data-intensive computing,(c) new methods for the design and analysis of the algorithms for solving problems with big data input,(d) collection and integration of data collected from internet and sensing devises or sensor networks, (e) representation, modeling, and visualization of big data,(f) storage, transmission, and management of big data,(g) methods and algorithms of data intensive computing, such asmining big data,online analysis processing of big data,big data-based machine learning, big data based decision-making, statistical computation of big data, graph-theoretic computation of big data, linear algebraic computation of big data, and big data-based optimization. (h) hardware systems and software systems for data-intensive computing, (i) data security, privacy, and trust, and(j) novel applications of big data.

期刊ISSNprint: 2364-1185 on-line: 2364-1541
历年影响因子
2024年 2023年 2022年 2021年 2020年 2019年 2018年 2017年
5.14.2000000
历年发表/被引量
年份202620252024202320222021202020192018201720162015
发表量20503434262633322431244
被引量28982763746421015697699416568778204
自引率5.90%
涉及的研究领域Engineering-Computational Mechanics
2026年新锐分区
大类小类TOP期刊综述期刊
2区2区 计算机:信息系统N/A
1区计算机:理论方法
中科院2025年分区 ?
大类小类TOP期刊综述期刊
1区1区 计算机:信息系统
1区计算机:理论方法
WOS期刊分区

JCR学科分类

JCR分区学科名称收录数据库JCR分区分区排名
COMPUTER SCIENCE, INFORMATION SYSTEMSESCIQ158/258
COMPUTER SCIENCE, THEORY & METHODSESCIQ121/147

JCI学科分类

JCI分区学科名称收录数据库JCI分区分区排名
COMPUTER SCIENCE, INFORMATION SYSTEMSESCIQ266/258
COMPUTER SCIENCE, THEORY & METHODSESCIQ126/147
期刊主页https://www.springer.com/41019https://link.springer.com/journal/41019
投稿网址https://www.editorialmanager.com/dsej
出版商Springer Nature
出版国家(地区)Germany
出版语言English
出版周期4 issues per year
每年出版文章数30
Gold OA文章占比100.00%
原创研究文献占比
(排除综述)
88.00%
SCI收录类型

Emerging Sources Citation Index (ESCI)

Scopus (CiteScore)

Directory of Open Access Journals (DOAJ)

PubMed链接http://www.ncbi.nlm.nih.gov/nlmcatalog?term=2364-1185%5BISSN%5D
平均审稿周期12 Weeks
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