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数值分析第二章答案



n
i=1
ln x i = 0
θ

= −
n
∑ ∑
n
n
i=1
ln x i n
θ
= =
解之得:
i=1
ln x i
(2)母体 X 的期望
E (x) =

+∞ −∞
xf ( x ) d x =

1 0
θ xθ dx =
θ θ +1
而样本均值为:
1 n X = ∑ xi n i =1 令E ( x) = X 得 θ =
x e 2σ 1 n
d x = 2 x ) =

+ ∞ 0
x 2σ
e

x σ
d x = − x e ) = 1 ⋅ nσ n

x σ
+ ∞
+
0

+ ∞ 0
e

x σ
d x =
E (σ ) = E (

n
i=1
i
1 n

n
E ( x
i=1
i
= σ
所以
σ=

1 n ∑ xi σ n i=1 为 的无偏估计量。

X 1− X
5.。解:其似然函数为:
L (σ ) = ∏
i =1
n
1 ⋅e 2σ

xi σ
=
1 ⋅e (2σ ) n 1 σ
n i =1

1 σ
∑ xi
i =1
n
ln L (σ ) = − n ln(2σ ) − 得: σ =

∑ =0
xi

1 σ
∑x
i =1
− x σ
n
i
(2)由于
E =


+ ∞ − ∞
即 X 也是 λ 的无偏估计。 又 ∀α ∈ [0,1]
E (a X + (1 − α ) S * ) = αE ( X ) + (1 − α ) E ( S * ) = αλ + (1 − λ )λ = λ
2 2 2
因此 α X + (1 − α ) S * 也是 λ 的无偏估计
14.解:由题意: X ~ N ( µ , σ 2 ) 因为 E (λ ) 2 = C ∑ E ( X i +1 − X i ) 2 = C ∑ [ D ( X i +1 − X i ) + ( E ( X i +1 − X i ) 2 ]
第二章 1.
λ e−λx, x ≥ 0 f (x) = 0, x < 0 E (x) = = − xe = − 令

+∞ −∞ +∞ 0
f (x) ⋅ xdx = + 1 λ =

+∞ 0
λ xe
− λ x
dx
− λ x

1 λ
+∞ 0
e
− λ x
d (λ x )
1 e λ
− λ x
+∞ 0
i =1 i =1
要使似然函数最大,则需 θ 取 min( x1 , x 2 ,L, x n ) 即 θ = min( x1 , x 2 ,L x n ) 9. 解:取子样值 ( x1, x 2 ,L , x n )( xi > 0) 则其似然函数 L(λ ) = ∏ λe −λx = λn e
i

故 σ 2 的罗—克拉美下界
IR = 2 4 σ n
∧ 2
n 1 n 1 2 ( X µ ) ) − = E ( ∑ i ∑ ( X i − µ)2 ) = σ 2 n i =1 n i =1
10. 解: (1)由题中子样值及题意知: 极差 R = 6.2 − 1.5 = 4.7
λ = 0.4299 × 4.7 = 2.0205

查表 2-1 得
1 = 0.4299 d5

(2)平均极差 R = 0.115 ,查表知

1 = 0.3249 d 10

λ = 0.3249 × 0.115 = 0.0455
n i=1
i
n
n
ln L ( P ) = n ln p + ( ∑ X
i=1
n
− n ) l n (1 − p )
X − n ) = 0
d ln L d p
=
n 1 − ( p 1 − p
p =


1 X
i=1
i
n
解之得

n
= X
i
i=1
3. 解:因为总体X服从U(a,b)所以
2 a+b ( a-b) n! D( X) = 2 12 r ! ( n − r )! 令 E( X) =X D ( X ) = S 2, n 1 S2 = ∑ ( X i − X )2 n i =1 a+b = X 2 2 ( a − b) = S2 12 ∧ a = X − 3S ∧ b = X + 3S
1 = x λ
从而有 2.
λ=

1 x
1) . E ( x ) = = p

1

x =1
k (1 − p ) k − 1 p = p ∑ k (1 − p ) k − 1
x =1 2

1 − (1 − p )
=
1 p
1

p= X
p =

所以有
1 X
2) .其似然函数为
∑Xi −n xi −1` n L(P) =∏(1− P) p = p (1− p)i=1
6. 解:其似然函数为: n βk βk n n ( k −1) − β xi L(β ) = ∏ xi e =( ) ∏ xi ( k −1) e − β xi ( k −1)! i =1 i =1 ( k −1)!
n n ln L ( β ) = n k ln β + ( k − 1 ) ln ( ∑ X i ) − β ∑ X i i =1 i =1
2

n 2
− i =1
∑ ( xi − µ ) 2
2σ 2
n
n n LnL (σ 2 ) = − Ln 2π − Lnσ 2 − 2 2
∑ (x
i
− µ)2
2σ 2
dLnL n =− + dσ 2 2σ 2
∑ (x
i =1
n
i
− µ)2 =0
2σ 4
σ2 =
1 n ∑ ( xi − µ ) 2 n i =1
d ln L ( β ) nk = − dβ β

n
X
i =1
i
= 0
解得
β =

nk

n
=
i
X
k X
β −0 β = , 2 2
i =1
7.解:由题意知:均匀分布的母体平均数 µ = 方差 λ2 =
( β − 0) 2 β 2 = 12 12
用极大似然估计法求 β 得极大似然估计量
似然函数: L( β ) = ∏
+∞
2 +∞ ( x − µ ) 1 2 ∂Lnf ( x ) 2 因为 ∫−∞ ( = − ] [ ) f ( x ) dx 4 ∫ 2 −∞ 2σ 2σ 2 ∂σ
1 2π σ
e

( x− µ )2 2σ 2
dx
=
1 n [ E ( X − µ ) 4 − E ( X − µ ) 2 2σ 2 + σ 4 ] = 8 4σ 2σ 4
15.证明:Q 参数 θ 的无偏估计量为 θ , D θ 依赖于子样容量 n 则 ∀ε > 0, 由切比雪夫不等式
∧ ∧ Q lim D θ = 0 故有 lim p θ − θ < ε = 1 n →∞ n →∞
即证 θ 为 θ 的相合估计量。 16 证明:设 X 服从 B ( N , p ) ,则分布律为 P ( X = k ) = C kN P k (1 − P ) k
E ( X )=
4. 解: (1)设 1
L (θ ) = θ
n n i=1
x , x2 ,L xn 为样本观察值则似然函数为:
−1
(∏ x i )θ
, 0 < x i < 1, i = 1, 2 ,L , n
n
Hale Waihona Puke l n L (θ ) = n l n θ + ( θ -1) ∑ ln x i
i=i
d ln L n = + dθ θ

解:设 u 为其母体平均数的无偏估计,则应有 µ = x 又因 x =

1 (8 × 1 + 40 × 3 + 10 × 6 + 2 × 26) = 4 60
即知 µ = 4 12. 解:Q X ~ N ( µ ,1)
∴ E ( xi ) = µ
E(µ 2 ) =

, D ( xi ) = 1 ,
所以 I R =
∧ ∧ P (1 − P ) = D P 即 p 为优效估计 nN
17. 解:设总体 X 的密度函数
f ( x) = 1 2π σ e
− ( x− µ )2 2σ 2
似然函数为 L(σ ) = ∏
2 i =1
n
1 2π σ
n i =1
( xi − µ )
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