. Comme-mesure-de-proximité and . Toutefois, efficacité de la dissimilarité apprise D k , qui fournit également une bonne classification et classement des gènes. La dissimilarité proposée D k est particulièrement recommandée lorsque les instants d'observation ne doivent pas subir de décalage lors de l'évaluation des proximités (ce qui est le cas des profils d'expression de gènes du cycle cellulaire) Notons que le dissimilarité D k généralise les métriques conventionnelles ; elle correspond à la corrélation temporelle pour k * voisin de 6

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