Computational Management Science is an international journal focusing on all computational aspects of management science. These include theoretical and empirical analysis of computational models; computational statistics; analysis and applications of constrained, unconstrained, robust, stochastic and combinatorial optimisation algorithms; dynamic models, such as dynamic programming and decision trees; new search tools and algorithms for global optimisation, modelling, learning and forecasting; models and tools of knowledge acquisition.

The emphasis on computational paradigms is an intended feature of CMS, distinguishing it from more classical operations research journals.

Officially cited as: Comput Manag Sci
  • Emphasizes computational paradigms
  • Presents novel research results in computational methods
  • Publishes papers dedicated to the development and analysis of applicable algorithms, computational models and experience, and balanced sets of applications
  • Provides a central forum for research that is often scattered among various specialized publications

Journal information

Editor-in-Chief
  • Rüdiger Schultz
Publishing model
Hybrid. Open Access options available

Journal metrics

154 days
Submission to first decision
276 days
Submission to acceptance
28,070 (2019)
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Latest articles

This journal has 19 open access articles

Journal updates

  • COVID-19 and impact on peer review

    As a result of the significant disruption that is being caused by the COVID-19 pandemic we are very aware that many researchers will have difficulty in meeting the timelines associated with our peer review process during normal times.  Please do let us know if you need additional time. Our systems will continue to remind you of the original timelines but we intend to be highly flexible at this time.

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About this journal

Electronic ISSN
1619-6988
Print ISSN
1619-697X
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  11. Google Scholar
  12. INSPEC
  13. Institute of Scientific and Technical Information of China
  14. Japanese Science and Technology Agency (JST)
  15. Mathematical Reviews
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  32. Research Papers in Economics (RePEc)
  33. SCImago
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  35. WTI Frankfurt eG
  36. zbMATH
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