Nonparametric Iterated Procedure for Testing Genetic Differentiation
نویسندگان
چکیده
Riassunto: In questo lavoro viene presentata una soluzione di permutazione basata sulla teoria della combinazione non parametrica di test dipendenti proposti da Pesarin (2001) al problema della differenziazione genetica. La capacità di rilevare plausibili eterogeneità genetiche combinando l’informazione di più loci differisce a seconda del metodo impiegato, cosicché nessun test statistico domina uniformemente gli altri. La procedura proposta risulta robusta e flessibile rispetto alle possibili configurazioni dell’ipotesi alternativa globale.
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