Machine Learning-Science and Technology
SCI一区
EI同步收录
月刊
高认可度
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期刊基础介绍
Machine Learning: Science and Technology™ is a multidisciplinary open access journal that bridges the application of machine learning across the sciences with advances in machine learning methods and theory as motivated by physical insights. Specifically, articles must fall into one of the following categories:
i) advance the state of machine learning-driven applications in the sciences,
or
ii) make conceptual, methodological or theoretical advances in machine learning with applications to, inspiration from, or motivated by scientific problems.
Particular areas of scientific application include (but are not limited to):
• Physics and space science
• Design and discovery of novel materials and molecules
• Materials characterisation techniques
• Simulation of materials, chemical processes and biological systems
• Atomistic and coarse-grained simulation
• Quantum computing
• Biology, medicine and biomedical imaging
• Geoscience (including natural disaster prediction) and climatology
• Particle Physics
• Simulation methods and high-performance computing
Conceptual or methodological advances in machine learning methods include those in (but are not limited to):
• Explainability, causality and robustness
• New (physics inspired) learning algorithms
• Neural network architectures
• Kernel methods
• Bayesian and other probabilistic methods
• Supervised, unsupervised and generative methods
• Novel computing architectures
• Codes and datasets
• Benchmark studies
i) advance the state of machine learning-driven applications in the sciences,
or
ii) make conceptual, methodological or theoretical advances in machine learning with applications to, inspiration from, or motivated by scientific problems.
Particular areas of scientific application include (but are not limited to):
• Physics and space science
• Design and discovery of novel materials and molecules
• Materials characterisation techniques
• Simulation of materials, chemical processes and biological systems
• Atomistic and coarse-grained simulation
• Quantum computing
• Biology, medicine and biomedical imaging
• Geoscience (including natural disaster prediction) and climatology
• Particle Physics
• Simulation methods and high-performance computing
Conceptual or methodological advances in machine learning methods include those in (but are not limited to):
• Explainability, causality and robustness
• New (physics inspired) learning algorithms
• Neural network architectures
• Kernel methods
• Bayesian and other probabilistic methods
• Supervised, unsupervised and generative methods
• Novel computing architectures
• Codes and datasets
• Benchmark studies
期刊核心参数
通讯方式
IOP PUBLISHING LTD, TEMPLE CIRCUS, TEMPLE WAY, BRISTOL, ENGLAND, BS1 6BE
涉及的研究方向
Multiple-
出版国家或地区
ENGLAND
出版语言
English
年文章数
322
PubMed Central (PMC)链接
CITESCORE
CiteScore SJR SNIP CiteScore排名 7.70 1.119 1.392 学科 分区 排名 百分位 大类:Computer Science 小类:Software Q1 107 / 490 78% 大类:Computer Science 小类:Artificial Intelligence Q1 106 / 450 76% 大类:Computer Science 小类:Human-Computer Interaction Q2 56 / 186 70%WOS期刊JCR分区
WOS分区等级:1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 INTELLIGENCE | SCIE | Q2 | 60/204 |
|
| 学科:COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS | SCIE | Q2 | 50/175 |
|
| 学科:MULTIDISCIPLINARY SCIENCES | SCIE | Q1 | 20/135 |
|
| 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 INTELLIGENCE | SCIE | Q2 | 56/204 |
|
| 学科:COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS | SCIE | Q2 | 54/175 |
|
| 学科:MULTIDISCIPLINARY SCIENCES | SCIE | Q1 | 27/135 |
|
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 | ||||||
|---|---|---|---|---|---|---|---|---|---|
| 物理与天体物理 2区 |
| 否 | 否 |
中科院2023年12月旧的升级版
| 大类学科 | 小类学科 | Top期刊 | 综述期刊 | ||||||
|---|---|---|---|---|---|---|---|---|---|
| 物理与天体物理 2区 |
| 否 | 否 |