设随机变量X和Y相互独立,X服从区间(0.2)的均匀分布,Y服从均值为1⼀2的指数分布 求P(Y《X)

2025-03-16 01:15:29
推荐回答(2个)
回答(1):

由题设知[*]


因为随机变量X和Y相互独立,


所以二维随机变量(X,Y)的概率密度为[*]


所以P{X+Y>1)=1-P{X+Y≤1}


X和Y相互独立则有fx(x)*fy(y)=f(x,y)


Y服从均值为1/2的指数分布,即参数1/λ=1/2,λ=2


X Y相互独立,那么XY联合分布密度


f(x,y)=fx(x)*fy(y)fx(x)


=5e^(-5x) fy(y)


=1/2P(X>=Y)


=∫∫ f(x,y)dxdy


=∫(0,2)1/2∫(y,∞)5*e^(-5x) dx


=1/2∫(0,2) e^(-5y)dy


=1/2* (-1/5e^(-5y)) (0,2)


=1/10*(1-e^(-10))。

扩展资料

随机变量在不同的条件下由于偶然因素影响,可能取各种不同的值,故其具有不确定性和随机性,但这些取值落在某个范围的概率是一定的,此种变量称为随机变量。随机变量可以是离散型的,也可以是连续型的。

随机变量在不同的条件下由于偶然因素影响,可能取各种不同的值,故其具有不确定性和随机性,但这些取值落在某个范围的概率是一定的,此种变量称为随机变量。随机变量可以是离散型的,也可以是连续型的。

如分析测试中的测定值就是一个以概率取值的随机变量,被测定量的取值可能在某一范围内随机变化,具体取什么值在测定之前是无法确定的,但测定的结果是确定的,多次重复测定所得到的测定值具有统计规律性。随机变量与模糊变量的不确定性的本质差别在于,后者的测定结果仍具有不确定性,即模糊性。

回答(2):

X和Y相互独立则有fx(x)*fy(y)=f(x,y) Y服从均值为1/2的指数分布,即参数1/λ=1/2,λ=2 然后就可以对联合分布P(Y<=X)=∫∫f(x,y)dydx x(0,2) y(0,x)求积分 结果为1/4*(3+e^(-4))

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