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Communication Dans Un Congrès Année : 2011

Dispersion effect on generalisation error in classification: Experimental proof and practical algorithm

Effet de la dispersion sur l'erreur en généralisation en classification : preuve expérimentale et algorithme pratique

Résumé

Recent theoretical work proposes criteria of dispersion to generate learning points. The aim of this paper is to convince the reader, with experimental proofs, that dispersion is a good criterion in practice for generating learning points for classification problems. Problem of generating learning points consists then in generating points with the lowest dispersion. As a consequence, we present low dispersion algorithms existing in the literature, analyze them and propose a new algorithm.
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Dates et versions

hal-02596424 , version 1 (15-05-2020)

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Benoît Gandar, G. Loosli, Guillaume Deffuant. Dispersion effect on generalisation error in classification: Experimental proof and practical algorithm. ICAART 2011 Conference .3rd Congference on Agents and Artificial Intelligence, Jan 2011, Rome, Italy. pp.4. ⟨hal-02596424⟩
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