当前位置:
文档之家› 应用数理统计习题答案_西安交大
应用数理统计习题答案_西安交大
n n 2 i =1 n i =1
n
2
= ∑ xi − 2 x ∑ xi + 2 x − 2 n xa + na 2 = ∑ ( xi − x ) 2 + n ( x − a ) 2
i =1
a) 证:
n 1 x n +1 = (∑ xi + xn +1 ) n + 1 i =1
=
1 ( n x n + x n +1 ) n +1 1 ( x n +1 − x n ) = xn + n +1
1 n 2 = [∑E(xi ) − nE(x)2 ] n i=1 1 n = [∑(D(xi ) + E(xi )2 ) − n(D(x) + E(x)2 )] n i=1 1 1 = [n(mp(1− p) + m2 p2 ) − n( mp(1− p) + m2 p2 )] n n n −1 = mp(1− p) n
k +∞
∴ E( X ) =
B ( a + 1, b) B (a, b)
9
西安交通大学 Minwell 版
=
Γ ( a + 1)Γ (b ) Γ (a + b ) ⋅ Γ ( a + b + 1) Γ (b )Γ (a ) Γ ( a + 1)Γ ( a + b ) = Γ ( a + b + 1)Γ ( a ) a Γ (a )Γ (a + b ) = (a + b )Γ (a + b )Γ (a ) a = a + b
应用数理统计答案
学号: 姓名: 班级:
西安交通大学 Minwell 版
目录
第一章 第二章 第三章 第四章 第五章 第六章 数理统计的基本概念 ..................................................................2 参数估计 ....................................................................................14 假设检验 ....................................................................................24 方差分析与正交试验设计 ........................................................29 回归分析 ....................................................................................32 统计决策与贝叶斯推断 ............................................................35
i =1
(2) ∵
4
西安交通大学 Minwell 版
∑ ( X i − X )2 = ∑ X i2 − 2 X ∑ X i + nX 2
i =1 i =1 n i =1
n
n
n
= ∑ X i2 − 2nX 2 + nX 2
i =1 n
= ∑ X i2 − nX 2
i =1
1.10 解: (1).
1 n 1 n E ( X ) = E ( ∑ xi ) = ∑ E ( xi ) n i =1 n i =1
1.6 证明 (1)
n
∵
∑ ( X i − μ )2 = ∑ ( X i − X + X − μ )2
i =1 i =1 n
n
= ∑ ( X i − X ) + 2( X − μ )∑ ( X i − X ) + n( X − μ ) 2
2 i =1 n i =1
n
= ∑ ( X i − X ) 2 + n( X − μ ) 2
E(X 2 ) =
=
B ( a + 2, b ) B (a, b)
Γ ( a + 2 ) Γ (b ) Γ ( a + b ) ⋅ Γ ( a + b + 2 ) Γ (b ) Γ ( a ) a ( a + 1) = ( a + b + 1)( a + b )
∴ D ( X ) = E ( X 2 ) − [ E ( X )] 2
= 1 2 2 [nSn + ( xn+1 − xn )2 − ( xn+1 − xn )(n x + xn+1 − (n + 1) xn ) n +1 n +1 1 ( xn+1 − xn )2 ] n +1
n 1 2 = [nSn + ( xn +1 − x n ) 2 ] n +1 n +1 n 1 ( xn +1 − x n ) 2 ] = [S2 + n n +1 n +1
0 800
= e−1.2
−1.2 6 −7.2 ∴ 6 个元件都没失效的概率为: P = (e ) = e
(2)
∵ ∴
X ∼ Exp (0.0015)
每个元件至 3000 个小时失效的概率为:
3000
P( X <= 3000) = ∫
0
0.0015e−0.0015xdx
= 1− e−4.5
−4.5 6 ∴ 6 个元件没失效的概率为: P = (1−e )
∑
n
i =1
D ( xi )
σ
n
2
1 n 2 E ( S ) = [∑ E ( xi ) − nE ( x) 2 ] n i =1
2
1 n = [∑ ( D( xi ) + E ( xi ) 2 ) − n( D( x) + E ( x) 2 )] n i =1 n −1 2 = ⋅σ n
1.11 解:由统计量的定义知,1,3,4,5,6,7 为统计量,5 为顺序 统计量 1.17 证:
2
∑ D( x )
i =1 i
n
1 n = [∑(D(xi ) + E(xi )2 ) − n(D(x) + E(x)2 )] n i=1 n −1 λ = n
6
西安交通大学 Minwell 版
(3).
a +b 1 n 1 n E( X ) = E( ∑ xi ) = ∑ E( xi ) = n i =1 n i =1 2
对应书目: 《应用数理统计》 施雨 著 西安交通大学出版社
1
西安交通大学 Minwell 版
第一章 数理统计的基本概念
1.1 解:∵ X ∼ N ( μ , σ )
2
σ ∴ X ∼ N (μ , n )
2
∴
n ( X −μ )
σ
∼ N (0,1) 分布
< 1) = P(
n ( X −μ )
∴ P( X − μ 又∵ ∴
y
n (1+ y ) m
0
m Γ( n + n n n n − n+2m −1 2 ) 2 x x) dx ( )( ) (1 + m m m m Γ( n ) Γ ( ) 2 2
10
西安交通大学 Minwell 版
f ( y ) = P′(Y ≤ y )
m Γ( n + 1 y n y − n+2m −1 2 ) ) 2 (1 + ) = n m ( 1− y (1 − y )2 Γ ( 2 )Γ ( 2 ) 1 − y
同理,
(2 ).
1 n 1 n E ( X ) = E ( ∑ xi ) = ∑ E ( xi ) = λ n i =1 n i =1
1 n 1 D ( X ) = D ( ∑ xi ) = 2 n i =1 n 1 = λ n
1 n 2 E(S ) = [∑E(xi ) − nE(x)2 ] n i=1
2
1 n = [∑(D(xi ) + E(xi )2 ) − n(D(x) + E(x)2 )] n i=1 n −1 2 λ = n
(5).
1 E(X ) = E( n
1 D(X ) = D( n =
∑
n
n
i =1
1 xi ) = n
∑ E(x ) = μ
i =1 i
n
∑
i =1
1 xi ) = 2 n
1 n 1 D( X ) = D( ∑ xi ) = 2 n i =1 n (b − a) 2 = 12n
1 n 2 E(S ) = [∑ E( xi ) − nE( x)2 ] n i=1
2
∑ D( x )
i =1 i
n
1 n = [∑ (D( xi ) + E( xi )2 ) − n(D( x) + E( x)2 )] n i=1 n −1 (b − a)2 = ⋅ 12 n
∵
X ~ Γ (α , λ )
8
西安交通大学 Minwell 版
∴
λα f ( x) = x α −1 e − λ x Γ (α )
X k
令
Y =
λα ( ky ) α −1 e − λ ky ⋅ k ∴ f ( y) = Γ (α ) λα k α = ( ky ) α −1 e − λ ky ⋅ k Γ (α )
1.4 解:
2
西安交通大学 Minwell 版