COPYRIGHT YEAR

2011

AUTHORS

Piotr Jędrzejowicz

TITLE

Machine Learning and Agents

ABSTRACT

The paper reviews current research results integrating machine learning and agent technologies. Although complementary solutions from both fields are discussed the focus is on using agent technology in the field of machine learning with a particular interest on applying agent-based solutions to supervised learning. The paper contains a short review of applications, in which machine learning methods have been used to support agent learning capabilities. This is followed by a corresponding review of machine learning methods and tools in which agent technology plays an important role. Final part gives a more detailed description of some example machine learning models and solutions where the asynchronous team of agents paradigm has been implemented to support the machine learning methods and which have been developed by the author and his research group.

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25 TRIPLES      25 PREDICATES      22 URIs      13 LITERALS

Subject Predicate Object
1 book-chapters:da688112275b59e372ea6f900976e305 sg:abstract Abstract The paper reviews current research results integrating machine learning and agent technologies. Although complementary solutions from both fields are discussed the focus is on using agent technology in the field of machine learning with a particular interest on applying agent-based solutions to supervised learning. The paper contains a short review of applications, in which machine learning methods have been used to support agent learning capabilities. This is followed by a corresponding review of machine learning methods and tools in which agent technology plays an important role. Final part gives a more detailed description of some example machine learning models and solutions where the asynchronous team of agents paradigm has been implemented to support the machine learning methods and which have been developed by the author and his research group.
2 sg:abstractRights OpenAccess
3 sg:bibliographyRights Restricted
4 sg:bodyHtmlRights Restricted
5 sg:bodyPdfRights Restricted
6 sg:copyrightHolder Springer-Verlag Berlin Heidelberg
7 sg:copyrightYear 2011
8 sg:ddsId Chap2
9 sg:doi 10.1007/978-3-642-22000-5_2
10 sg:esmRights OpenAccess
11 sg:hasBook books:12f4e56d4306b1cf59bda141c918cede
12 sg:hasBookEdition book-editions:3cfcdedabbb48afc27f12bc234377911
13 sg:hasContributingOrganization grid-institutes:grid.445143.3
14 sg:hasContribution contributions:a1fe6adcf39fc1b73031ba2abb595010
15 sg:language En
16 sg:license http://scigraph.springernature.com/explorer/license/
17 sg:metadataRights OpenAccess
18 sg:pageFirst 2
19 sg:pageLast 15
20 sg:scigraphId da688112275b59e372ea6f900976e305
21 sg:title Machine Learning and Agents
22 sg:webpage https://link.springer.com/10.1007/978-3-642-22000-5_2
23 rdf:type sg:BookChapter
24 rdfs:label BookChapter: Machine Learning and Agents
25 owl:sameAs http://lod.springer.com/data/bookchapter/978-3-642-22000-5_2
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