Authors
Ireneusz Czarnowski, Piotr Jędrzejowicz
Publication date
2011/2/1
Journal
Engineering Applications of Artificial Intelligence
Volume
24
Issue
1
Pages
93-102
Publisher
Pergamon
Description
In this paper an agent-based distributed learning framework based on data reduction is proposed. Data reduction aims at finding patterns or regularities within certain features, allowing to induce the so-called prototypes which should be retained for further use during the learning process. The considered approach assumes that data reduction through instance and feature selection is carried out independently at each site by a team of agents. To assure obtaining homogenous prototypes the feature selection requires coordination. The proposed approach provides such coordination by collaboration of agents. In the process of data reduction heterogeneous prototypes can be subsequently merged to create a compact representation of the distributed data repositories and, next, based on such a compact representation a selected meta-learning technique can be applied for generating the global classifier. The paper …
Total citations
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Scholar articles
I Czarnowski, P Jędrzejowicz - Engineering Applications of Artificial Intelligence, 2011