Computational Management Science

ISSN: 1619-697X

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Computational Management Science Q3 Unclaimed

Springer Science and Business Media Deutschland GmbH Germany
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Computational Management Science (CMS) 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 It has an SJR impact factor of 0,339.

Type: Journal

Type of Copyright:

Languages: English

Open Access Policy: Open Choice

Type of publications:

Publication frecuency: -

Scopus WOS
Categories: Business, Management and Accounting (miscellaneous) (Q3) Information Systems (Q3) Management Information Systems (Q3) Management Information Systems (Q3) Management Science and Operations Research (Q3) Statistics, Probability and Uncertainty (Q3)
Price

2190 €

Inmediate OA

NPD

Embargoed OA

0 €

Non OA

Metrics

Computational Management Science

0,339

SJR Impact factor

40

H Index

48

Total Docs (Last Year)

78

Total Docs (3 years)

1967

Total Refs

115

Total Cites (3 years)

75

Citable Docs (3 years)

1.5

Cites/Doc (2 years)

40.98

Ref/Doc

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