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1.8. Lorsque K (x, Y) = 1, K est appelé noyau de transition ,
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1.9. Lorsque X et Y sont dénombrables et de cardinaux nis, K est appelé matrice de transition ,
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noyau de transition ses itérés dénies par la relation K n = K K n?1 ,
On dit que le noyau K t satisfait à la propriété de Feller si pour tout t > 0 la fonction K t f dénie par : K t f (x) := f (y ) ,
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