IEEE Transactions on Evolutionary Computation

IEEE Transactions on Evolutionary Computation

The IEEE Transactions on Evolutionary Computation (TEC) is a monthly journal published by the Computational Intelligence Society of the IEEE Computer Society. It contains peer-reviewed articles and other contribitions in the area of evolutionary computation and natural computation. It is intended for researchers, developers, educators and technical managers in the computer field. It is widely considered to be one of the leading journals in the area.

The magazine ranked among the most-cited journals (#2 in Computer Science, Theory & Methods and # 3 in Artificial Intelligence), according to the [http://www.ieee.org/web/publications/journmag/journalcitations.html/ 2007 annual Journal Citation Report,] published by the Thomson Institute for Scientific Information.

External links

* [http://ieee-cis.org/pubs/tec/ Official website]
* [http://ieeexplore.ieee.org/servlet/opac?punumber=4235/ OPAC Link ]
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