This paper presents an agent-based approach to pattern classification that intensively uses evolutionary techniques to support supervised learning of classifiers. The paper first provides a formalization of the peculiar sort of agents and multi-agent systems that we consider. Then, a brief description of the adopted evolutionary technique is provided together with a justification for its use. Finally, the proposed approach is embedded into a prototypical, real-world application that offers a solid ground for the concrete assessment of classification performances. The preliminary results that we obtained clearly show that the proposed approach realizes a good trade off between accuracy and speed in a fully distributed and decentralized manner.

An Evolutionary Approach to Agent-based Pattern Classification / Bergenti, Federico. - In: COMMUNICATIONS OF SIWN. - ISSN 1757-4439. - 5:(2008), pp. 23-27.

An Evolutionary Approach to Agent-based Pattern Classification

BERGENTI, Federico
2008-01-01

Abstract

This paper presents an agent-based approach to pattern classification that intensively uses evolutionary techniques to support supervised learning of classifiers. The paper first provides a formalization of the peculiar sort of agents and multi-agent systems that we consider. Then, a brief description of the adopted evolutionary technique is provided together with a justification for its use. Finally, the proposed approach is embedded into a prototypical, real-world application that offers a solid ground for the concrete assessment of classification performances. The preliminary results that we obtained clearly show that the proposed approach realizes a good trade off between accuracy and speed in a fully distributed and decentralized manner.
2008
An Evolutionary Approach to Agent-based Pattern Classification / Bergenti, Federico. - In: COMMUNICATIONS OF SIWN. - ISSN 1757-4439. - 5:(2008), pp. 23-27.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11381/1873986
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