Machine Learning
Impact Factor & Key Scientometrics

Machine Learning
Overview

Impact Factor

2.94

H Index

153

Impact Factor

4.541

I. Basic Journal Info

Country

Netherlands
Journal ISSN: 08856125, 15730565
Publisher: Kluwer Academic Publishers
History: 1986-ongoing
Journal Hompage: Link
How to Get Published:

Research Categories

Scope/Description:

Machine Learning is an international forum for research on computational approaches to learning. The journal publishes articles reporting substantive results on a wide range of learning methods applied to a variety of learning problems, including but not limited to: Learning Problems: Classification, regression, recognition, and prediction; Problem solving and planning; Reasoning and inference; Data mining; Web mining; Scientific discovery; Information retrieval; Natural language processing; Design and diagnosis; Vision and speech perception; Robotics and control; Combinatorial optimization; Game playing; Industrial, financial, and scientific applications of all kinds. Learning Methods: Supervised and unsupervised learning methods (including learning decision and regression trees, rules, connectionist networks, probabilistic networks and other statistical models, inductive logic programming, case-based methods, ensemble methods, clustering, etc.); Reinforcement learning; Evolution-based methods; Explanation-based learning; Analogical learning methods; Automated knowledge acquisition; Learning from instruction; Visualization of patterns in data; Learning in integrated architectures; Multistrategy learning; Multi-agent learning.

II. Science Citation Report (SCR)



Machine Learning
SCR Impact Factor

Machine Learning
SCR Journal Ranking

Machine Learning
SCImago SJR Rank

SCImago Journal Rank (SJR indicator) is a measure of scientific influence of scholarly journals that accounts for both the number of citations received by a journal and the importance or prestige of the journals where such citations come from.

0.667

Machine Learning
Scopus 2-Year Impact Factor Trend

Note: impact factor data for reference only

Machine Learning
Scopus 3-Year Impact Factor Trend

Note: impact factor data for reference only

Machine Learning
Scopus 4-Year Impact Factor Trend

Note: impact factor data for reference only

Machine Learning
Impact Factor History

2-year 3-year 4-year
  • 2022 Impact Factor
    7.248 6.538 6.332
  • 2021 Impact Factor
    4.541 4.811 4.619
  • 2020 Impact Factor
    3.635 3.777 3.85
  • 2019 Impact Factor
    3.27 3.458 3.514
  • 2018 Impact Factor
    2.599 2.91 3.516
  • 2017 Impact Factor
    2.432 2.848 3.007
  • 2016 Impact Factor
    3.042 3.221 3.548
  • 2015 Impact Factor
    2.774 3.553 3.975
  • 2014 Impact Factor
    3.474 NA NA
  • 2013 Impact Factor
    3.858 NA NA
  • 2012 Impact Factor
    3.345 NA NA
  • 2011 Impact Factor
    3.655 NA NA
  • 2010 Impact Factor
    3.876 NA NA
  • 2009 Impact Factor
    2.417 NA NA
  • 2008 Impact Factor
    3.691 NA NA
  • 2007 Impact Factor
    3.636 NA NA
  • 2006 Impact Factor
    4.398 NA NA
  • 2005 Impact Factor
    5.522 NA NA
  • 2004 Impact Factor
    4.604 NA NA
  • 2003 Impact Factor
    4 NA NA
  • 2002 Impact Factor
    3.415 NA NA
  • 2001 Impact Factor
    3.376 NA NA
  • 2000 Impact Factor
    1.91 NA NA
Note: impact factor data for reference only

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Impact Factor

Impact factor (IF) is a scientometric factor based on the yearly average number of citations on articles published by a particular journal in the last two years. A journal impact factor is frequently used as a proxy for the relative importance of a journal within its field. Find out more: What is a good impact factor?


III. Other Science Influence Indicators

Any impact factor or scientometric indicator alone will not give you the full picture of a science journal. There are also other factors such as H-Index, Self-Citation Ratio, SJR, SNIP, etc. Researchers may also consider the practical aspect of a journal such as publication fees, acceptance rate, review speed. (Learn More)

Machine Learning
H-Index

The h-index is an author-level metric that attempts to measure both the productivity and citation impact of the publications of a scientist or scholar. The index is based on the set of the scientist's most cited papers and the number of citations that they have received in other publications

153

Machine Learning
H-Index History