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Guest editorial: Collective intelligent information and database systems. (English) Zbl 1366.00066

From the text: Collective intelligence is most often understood as group intelligence which arises on the basis of intelligences of the group members. This paper presents an overview of application of collective intelligence methods in knowledge engineering and in processing collective data. It also introduces papers included in this issue.
The aim of this special issue is to present to the research community a comprehensive collection of articles including the most relevant and recent achievements in the broad field of Collective Intelligent Information and Database Systems. We have been able to cover most methodological, theoretical and practical aspects of Collective Intelligence, and its relation to databases, understood as the form of intelligence that emerges from the collaboration and competition of many individuals (artificial and/or natural). This special issue includes, in particular, extended and revised versions of papers selected from the 2016 edition of the ACIIDS conference and the 2015 edition of the ICCCI conference. In addition, we called for high quality, up-to-date contributions in the broad field of Collective Intelligent Information and Database Systems.

MSC:

00B15 Collections of articles of miscellaneous specific interest
00B25 Proceedings of conferences of miscellaneous specific interest
68-06 Proceedings, conferences, collections, etc. pertaining to computer science
68T30 Knowledge representation
68T37 Reasoning under uncertainty in the context of artificial intelligence
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References:

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