E-Learning systems have proven to be fundamental in several areas of tertiary education and in business companies. There are many significant advantages for people who learn online such as convenience, portability, flexibility and costs. However, the remarkable velocity and volatility of modern knowledge due to the exponential growth of the World Wide Web, requires novel learning methods that offer additional features such as information structuring, efficiency, task relevance and personalization. This paper proposes a novel multi-agent e-Learning system empowered with (ontological) knowledge representation and memetic computing to efficiently manage complex and unstructured information that characterize e-Learning. In particular, differing from other similar approaches, our proposal uses 1) ontologies to provide a suitable method for modeling knowledge about learning content and activities, and 2) memetic agents as intelligent explorers in order to create in time and personalized e-Learning experiences that satisfy learners specific preferences. The proposed method has been tested by realizing a multi-agent software plug-in for an industrial e-Learning platform with experimentations to validate our memetic proposal in terms of flexibility, efficiency and interoperability. © 2010 IEEE.

Exploring e-learning knowledge through ontological memetic agents / Acampora, Giovanni; Loia, Vincenzo; Gaeta, Matteo. - In: IEEE COMPUTATIONAL INTELLIGENCE MAGAZINE. - ISSN 1556-603X. - 5:2(2010), pp. 66-77. [10.1109/MCI.2010.936306]

Exploring e-learning knowledge through ontological memetic agents

Acampora Giovanni;
2010

Abstract

E-Learning systems have proven to be fundamental in several areas of tertiary education and in business companies. There are many significant advantages for people who learn online such as convenience, portability, flexibility and costs. However, the remarkable velocity and volatility of modern knowledge due to the exponential growth of the World Wide Web, requires novel learning methods that offer additional features such as information structuring, efficiency, task relevance and personalization. This paper proposes a novel multi-agent e-Learning system empowered with (ontological) knowledge representation and memetic computing to efficiently manage complex and unstructured information that characterize e-Learning. In particular, differing from other similar approaches, our proposal uses 1) ontologies to provide a suitable method for modeling knowledge about learning content and activities, and 2) memetic agents as intelligent explorers in order to create in time and personalized e-Learning experiences that satisfy learners specific preferences. The proposed method has been tested by realizing a multi-agent software plug-in for an industrial e-Learning platform with experimentations to validate our memetic proposal in terms of flexibility, efficiency and interoperability. © 2010 IEEE.
2010
Exploring e-learning knowledge through ontological memetic agents / Acampora, Giovanni; Loia, Vincenzo; Gaeta, Matteo. - In: IEEE COMPUTATIONAL INTELLIGENCE MAGAZINE. - ISSN 1556-603X. - 5:2(2010), pp. 66-77. [10.1109/MCI.2010.936306]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/694329
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