第二章 信源熵改-习题答案

更新时间:2024-05-26 13:53:01 阅读量: 综合文库 文档下载

说明:文章内容仅供预览,部分内容可能不全。下载后的文档,内容与下面显示的完全一致。下载之前请确认下面内容是否您想要的,是否完整无缺。

2.1 试问四进制、八进制脉冲所含信息量是二进制脉冲的多少倍?

解:

四进制脉冲可以表示4个不同的消息,例如:{0, 1, 2, 3}

八进制脉冲可以表示8个不同的消息,例如:{0, 1, 2, 3, 4, 5, 6, 7} 二进制脉冲可以表示2个不同的消息,例如:{0, 1} 假设每个消息的发出都是等概率的,则:

四进制脉冲的平均信息量H(X1)?logn?log4?2 bit/symbol 八进制脉冲的平均信息量H(X2)?logn?log8?3 bit/symbol 二进制脉冲的平均信息量H(X0)?logn?log2?1 bit/symbol 所以:

四进制、八进制脉冲所含信息量分别是二进制脉冲信息量的2倍和3倍。

2.2 居住某地区的女孩子有25%是大学生,在女大学生中有75%是身高160厘米以上的,而女孩子中身高160厘米以上的占总数的一半。假如我们得知“身高160厘米以上的某女孩是大学生”的消息,问获得多少信息量?

解:

设随机变量X代表女孩子学历

X P(X)

x1(是大学生)

0.25

x2(不是大学生)

0.75

设随机变量Y代表女孩子身高

y1(身高>160cm) Y P(Y)

0.5

y2(身高<160cm)

0.5

已知:在女大学生中有75%是身高160厘米以上的 即:p(y1/x1)?0.75 bit

求:身高160厘米以上的某女孩是大学生的信息量 即:I(x1/y1)??logp(x1/y1)??logp(x1)p(y1/x1)p(y1)??log0.25?0.750.5?1.415 bit

2.3 一副充分洗乱了的牌(含52张牌),试问 (1) 任一特定排列所给出的信息量是多少?

(2) 若从中抽取13张牌,所给出的点数都不相同能得到多少信息量?

解:

(1) 52张牌共有52!种排列方式,假设每种排列方式出现是等概率的则所给出的信息量是:

p(xi)?152!

I(xi)??logp(xi)?log52!?225.581 bit

(2) 52张牌共有4种花色、13种点数,抽取13张点数不同的牌的概率如下:

· 1 ·

p(xi)?41313131352C52

?13.208 bitx2?1x3?21/41/4x4?3??,其发出的信息为1/8?I(xi)??logp(xi)??log?X2.4 设离散无记忆信源??P(X4C??x1?0???)??3/8(202120130213001203210110321010021032011223210),求 (1) 此消息的自信息量是多少?

(2) 此消息中平均每符号携带的信息量是多少?

解:

(1) 此消息总共有14个0、13个1、12个2、6个3,因此此消息发出的概率是:

?3?p????8?14?1?????4?25?1???? ?8?6此消息的信息量是:I??logp?87.811 bit

(2) 此消息中平均每符号携带的信息量是:I/n?87.811/45?1.951 bit

2.5 从大量统计资料知道,男性中红绿色盲的发病率为7%,女性发病率为0.5%,如果你问一位男士:“你是否是色盲?”他的回答可能是“是”,可能是“否”,问这两个回答中各含多少信息量,平均每个回答中含有多少信息量?如果问一位女士,则答案中含有的平均自信息量是多少?

解: 男士: p(xY)?7%I(xY)??logp(xY)??log0.07?3.837 bitp(xN)?93%I(xN)??logp(xN)??log0.93?0.105 bit2

H(X)???p(xi)logp(xi)??(0.07log0.07?0.93log0.93)?0.366 bit/symboli女士:

2H(X)???p(xi)logp(xi)??(0.005log0.005?0.995log0.995)?0.045 bit/symbol

i?X2.6 设信源??P(X??x1???)??0.2x2x3x4x50.190.180.170.16x6??0.17?,求这个信源的熵,并解释为什么

H(X) > log6不满足信源熵的极值性。

解:

6H(X)???p(xi)logp(xi)i ??(0.2log0.2?0.19log0.19?0.18log0.18?0.17log0.17?0.16log0.16?0.17log0.17) ?2.657 bit/symbolH(X)?log26?2.585· 2 ·

6不满足极值性的原因是?p(xi)?1.07?1。

i2.7 同时掷出两个正常的骰子,也就是各面呈现的概率都为1/6,求: (1) “3和5同时出现”这事件的自信息; (2) “两个1同时出现”这事件的自信息;

(3) 两个点数的各种组合(无序)对的熵和平均信息量; (4) 两个点数之和(即2, 3, ? , 12构成的子集)的熵; (5) 两个点数中至少有一个是1的自信息量。

解:

p(x11111i)?(1)6?6?6?6?181

I(xi)??logp(xi)??log18?4.170 bitp(xi)?1(2)6?16?136?logp(x1

I(xi)?i)??log36?5.170 bit(3)

两个点数的排列如下: 11 12 13 14 15 16 21 22 23 24 25 26 31 32 33 34 35 36 41 42 43 44 45 46 51 52 53 54 55 56 61

62

63

64

65

66

共有21种组合:

其中11,22,33,44,55,66的概率是1116?6?36

其他15个组合的概率是2?116?6?118

H(X)???p(x?1111?i)logp(xi)???6?log?15?log??4.337 bit/symbol

i?36361818?(4)

参考上面的两个点数的排列,可以得出两个点数求和的概率分布如下:

?X??23456789101112?51111???P(X)???11151??1???3618129366369121836??H(X)???p(xi)logp(xi)i ????2?1log1?2?1log1?2?1log1?2?1log1?2?5log5?11??3636181812129936366log6?? ?3.274 bit/symbol

3 ·

·

p(xi)?16?16?11?11361136?1.710 bit(5)

I(xi)??logp(xi)??log

2.8证明:H(X1X2 。。。 Xn) ≤ H(X1) + H(X2) + ? + H(Xn)

证明:

H(X1X2...Xn)?H(X1)?H(X2/X1)?H(X3/X1X2)?...?H(Xn/X1X2...Xn?1)I(X2;X1)?0 ?H(X2)?H(X2/X1)I(X3;X1X2)?0 ?H(X3)?H(X3/X1X2)...I(XN;X1X2...Xn?1)?0 ?H(XN)?H(XN/X1X2...Xn?1)

?H(X1X2...Xn)?H(X1)?H(X2)?H(X3)?...?H(Xn)2.9 证明:H(X3/X1X2) ≤ H(X3/X1),并说明当X1, X2, X3是马氏链时等式成立。

证明:

H(X3/X1X2)?H(X3/X1)???i1??i2i3p(xi1xi2xi3)logp(xi3/xi1xi2)?p(xi1xi2xi3)logp(xi3/xi1xi2)?p(xi3/xi1)p(xi3/xi1xi2)??i1i3i1i2p(xi1xi3)logp(xi3/xi1)p(xi1xi2xi3)logp(xi3/xi1)???i1??i2i3i3???i3????i1i2p(xi1xi2xi3)log????i1i2i3?p(xi3/xi1)??logp(xi1xi2xi3)??1?p(x/xx)?i3i1i2??p(xi1xi2)p(xi3/xi1)?2e

?????i1??????i1?0??i2i3???i1i2i32?p(xi1xi2xi3)?log?e2e?i2???p(xi1xi2)??p(xi3/xi1)??1??log?i3???H(X3/X1X2)?H(X3/X1)p(xi3/xi1)p(xi3/xi1xi2)当?1?0时等式成立?p(xi3/xi1)?p(xi3/xi1xi2)?p(xi1xi2)p(xi3/xi1)?p(xi3/xi1xi2)p(xi1xi2)?p(xi1)p(xi2/xi1)p(xi3/xi1)?p(xi1xi2xi3)?p(xi2/xi1)p(xi3/xi1)?p(xi2xi3/xi1)?等式成立的条件是X1,X2,X3是马_氏链

2.10 对某城市进行交通忙闲的调查,并把天气分成晴雨两种状态,气温分成冷暖两个状态,

· 4 ·

调查结果得联合出现的相对频度如下:

冷 12冷 8晴晴暖 8暖 15忙闲冷 27冷 5雨雨暖 16暖 12

若把这些频度看作概率测度,求: (1) 忙闲的无条件熵;

(2) 天气状态和气温状态已知时忙闲的条件熵;

(3) 从天气状态和气温状态获得的关于忙闲的信息。

解:

(1)

根据忙闲的频率,得到忙闲的概率分布如下: ?X??x2闲???x1忙?P(X)??40???63???103103??

2H(X)???p(x??63log63?40log40?i)logp(xi)????0.964 biti?103103103103/symbol? (2)

设忙闲为随机变量X,天气状态为随机变量Y,气温状态为随机变量Z H(XYZ)?????p(xiyjzk)logp(xiyjzk)ijk ????12log12?8log8?27log27?1616?103103103103103103103log103 ?8?103log8103?15103log15103?5103log5103?12103log12103?? ?2.836 bit/symbol

H(YZ)????p(yjzk)logp(yjzk)jk ????20202323323228?103log103?103log103?28?103log103?103log103?? ?1.977 bit/symbolH(X/YZ)?H(XYZ)?H(YZ)?2.836?1.977?0.859 bit/symbol(3)

I(X;YZ)?H(X)?H(X/YZ)?0.964?0.859?0.105 bit/symbol

2.11 有两个二元随机变量X和Y,它们的联合概率为

Y X x1=0 x2=1 y1=0 1/8 3/8

5 ··

y2=1 3/8 1/8 并定义另一随机变量Z = XY(一般乘积),试计算: (1) H(X), H(Y), H(Z), H(XZ), H(YZ)和H(XYZ);

(2) H(X/Y), H(Y/X), H(X/Z), H(Z/X), H(Y/Z), H(Z/Y), H(X/YZ), H(Y/XZ)和H(Z/XY); (3) I(X;Y), I(X;Z), I(Y;Z), I(X;Y/Z), I(Y;Z/X)和I(X;Z/Y)。

解: (1)

p(x1)?p(x1y1)?p(x1y2)?p(x2)?p(x2y1)?p(x2y2)?18?3818??121238?H(X)???p(xi)logp(xi)?1 bit/symbolip(y1)?p(x1y1)?p(x2y1)?p(y2)?p(x1y2)?p(x2y2)?18?3818??1212

38?H(Y)???p(yj)logp(yj)?1 bit/symboljZ = XY的概率分布如下:

?z?0?Z??1????7?P(Z)??8?2z2?1??1?8??

711??7H(Z)???p(zk)???log?log??0.544 bit/symbol888??8kp(x1)?p(x1z1)?p(x1z2)p(x1z2)?0p(x1z1)?p(x1)?0.5p(z1)?p(x1z1)?p(x2z1)p(x2z1)?p(z1)?p(x1z1)?p(z2)?p(x1z2)?p(x2z2)p(x2z2)?p(z2)?H(XZ)???i78?0.5?38

18?k13311??1p(xizk)logp(xizk)???log?log?log??1.406 bit/symbol28888??2· 6 ·

p(y1)?p(y1z1)?p(y1z2)p(y1z2)?0p(y1z1)?p(y1)?0.5p(z1)?p(y1z1)?p(y2z1)p(y2z1)?p(z1)?p(y1z1)?p(z2)?p(y1z2)?p(y2z2)p(y2z2)?p(z2)?H(YZ)???j78?0.5?38

18?k13311??1p(yjzk)logp(yjzk)???log?log?log??1.406 bit/symbol28888??2p(x1y1z2)?0p(x1y2z2)?0p(x2y1z2)?0p(x1y1z1)?p(x1y1z2)?p(x1y1)p(x1y1z1)?p(x1y1)?1/8p(x1y2z1)?p(x1y1z1)?p(x1z1)p(x1y2z1)?p(x1z1)?p(x1y1z1)?p(x2y1z1)?p(x2y1z2)?p(x2y1)p(x2y1z1)?p(x2y1)?p(x2y2z1)?0p(x2y2z1)?p(x2y2z2)?p(x2y2)p(x2y2z2)?p(x2y2)?H(XYZ)???i12?18?3838182??jkp(xiyjzk)logp(xiyjzk)1333311??1 ???log?log?log?log??1.811 bit/symbol8888888??8

(2)

H(XY)???i?jp(xiyj)log21333311??1p(xiyj)????log?log?log?log??1.811 bit/symbol8888888??8H(X/Y)?H(XY)?H(Y)?1.811?1?0.811 bit/symbolH(Y/X)?H(XY)?H(X)?1.811?1?0.811 bit/symbolH(X/Z)?H(XZ)?H(Z)?1.406?0.544?0.862 bit/symbolH(Z/X)?H(XZ)?H(X)?1.406?1?0.406 bit/symbolH(Y/Z)?H(YZ)?H(Z)?1.406?0.544?0.862 bit/symbolH(Z/Y)?H(YZ)?H(Y)?1.406?1?0.406 bit/symbolH(X/YZ)?H(XYZ)?H(YZ)?1.811?1.406?0.405 bit/symbolH(Y/XZ)?H(XYZ)?H(XZ)?1.811?1.406?0.405 bit/symbolH(Z/XY)?H(XYZ)?H(XY)?1.811?1.811?0 bit/symbol

(3)

· 7 ·

I(X;Y)?H(X)?H(X/Y)?1?0.811?0.189 bit/symbolI(X;Z)?H(X)?H(X/Z)?1?0.862?0.138 bit/symbolI(Y;Z)?H(Y)?H(Y/Z)?1?0.862?0.138 bit/symbolI(X;Y/Z)?H(X/Z)?H(X/YZ)?0.862?0.405?0.457 bit/symbolI(Y;Z/X)?H(Y/X)?H(Y/XZ)?0.862?0.405?0.457 bit/symbolI(X;Z/Y)?H(X/Y)?H(X/YZ)?0.811?0.405?0.406 bit/symbol

2.12有两个随机变量X和Y,其和为Z = X + Y(一般加法),若X和Y相互独立,求证:H(X) ≤ H(Z), H(Y) ≤ H(Z)。

证明: ?Z?X?Y?p(yj) (zk?xi)?Y?p(zk/xi)?p(zk?xi)???0 (zk?xi)?YH(Z/X)???i?k??p(xizk)logp(zk/xi)???p(xi)??p(zk/xi)logp(zk/xi)?i?k?

2? ???p(xi)??p(yj)logi?j?H(Z)?H(Z/X)?H(Z)?H(Y)?p(yj)??H(Y)?同理可得H(Z)?H(X)。

2.13 设有一个信源,它产生0,1序列的信息。它在任意时间而且不论以前发生过什么符号,

均按P(0) = 0.4,P(1) = 0.6的概率发出符号。 (1) 试问这个信源是否是平稳的? (2) 试计算H(X2), H(X3/X1X2)及H∞;

(3) 试计算H(X4)并写出X4信源中可能有的所有符号。

解:

(1) 这个信源是平稳无记忆信源。因为有这些词语:“它在任意时间而且不论以前发生过什么符号……” ...............

H(X)?2H(X)??2?(0.4log0.4?0.6log0.6)?1.942 bit/symbol2(2) H(X3/X1X2)?H(X3)???p(xi)logp(xi)??(0.4log0.4?0.6log0.6)?0.971 bit/symbol

iH??limH(XN???4N/X1X2...XN?1)?H(XN)?0.971 bit/symbolH(X)?4H(X)??4?(0.4log0.4?0.6log0.6)?3.884 bit/symbol(3) X的所有符号:00000100100011000001010110011101001001101010111000110111101111114

2.15 某一无记忆信源的符号集为{0, 1},已知P(0) = 1/4,P(1) = 3/4。 (1) 求符号的平均熵;

(2) 有100个符号构成的序列,求某一特定序列(例如有m个“0”和(100 - m)个“1”)的自信息量的表达式;

· 8 ·

(3) 计算(2)中序列的熵。

解: (1)

133??1H(X)???p(xi)logp(xi)???log?log?i?4444?0.811 bit/symbol

?(2)

m100?m?mp(x?1??3?i)???4?????4???31004100

(x3100?mI(xi)??logpi)??log4100?41.5?1.585m bit(3) H(X100)?100H(X)?100?0.811?81.1 bit/symbol

2.16 一阶马尔可夫信源的状态图如下图所示。信源X的符号集为{0, 1, 2}(1) 求平稳后信源的概率分布; (2) 求信源的熵H∞。

PP0P1PP2P 解: (1)

?p(e1)?p(e1)p(e1/e1)?p(e2)p(e?1/e2)?p(e2)?p(e2)p(e2/e2)?p(e3)p(e2/e3)??p(e3)?p(e3)p(e3/e3)?p(e1)p(e3/e1)??p(e1)?p?p(e1)?p?p(e2)??p(e2)?p?p(e2)?p?p(e3)???p(e3)?p?p(e3)?p?p(e1)

?p(e1)?p(e2)?p(e3)??p(e1)?p(e2)?p(e3)?1?p(e1)?1/3??p(e2)?1/3??p(e3)?1/3

· 9 ·

?p(x1)?p(e1)p(x1/e1)?p(e2)p(x1/e2)?p?p(e1)?p?p(e2)?(p?p)/3?1/3???p(x2)?p(e2)p(x2/e2)?p(e3)p(x2/e3)?p?p(e2)?p?p(e3)?(p?p)/3?1/3?p(x3)?p(e3)p(x3/e3)?p(e1)p(x3/e1)?p?p(e3)?p?p(e1)?(p?p)/3?1/3 ???X??P(X12???0????)??1/31/31/3?(2)

33H????i?jp(ei)p(ej/ei)logp(ej/ei)11?1 ???p(e1/e1)logp(e1/e1)?p(e2/e1)logp(e2/e1)?p(e3/e1)logp(e3/e1)33?3 ? ?1313p(e1/e2)logp(e1/e2)?p(e1/e3)logp(e1/e3)?1313p(e2/e2)logp(e2/e2)?p(e2/e3)logp(e2/e3)?131p(e3/e2)logp(e3/e2)

?p(e3/e3)logp(e3/e3)?3?11111?1? ????p?logp??plogp??p?logp??p?logp??p?logp??p?logp?33333?3? ??p?logp?p?logp bit/symbol??2.17黑白气象传真图的消息只有黑色和白色两种,即信源X={黑,白}。设黑色出现的概率为

P(黑) = 0.3,白色出现的概率为P(白) = 0.7。

(1) 假设图上黑白消息出现前后没有关联,求熵H(X); (2) 假设消息前后有关联,其依赖关系为P(白/白) = 0.9,P(黑/白) = 0.1,P(白/黑) = 0.2,P(黑/黑) = 0.8,求此一阶马尔可夫信源的熵H2(X);

(3) 分别求上述两种信源的剩余度,比较H(X)和H2(X)的大小,并说明其物理含义。

解: (1)

H(X)???p(xi)logp(xi)??(0.3log0.3?0.7log0.7)?0.881 bit/symbol

i(2)

?p(e1)?p(e1)p(e1/e1)?p(e2)p(e1/e2)??p(e2)?p(e2)p(e2/e2)?p(e1)p(e2/e1)?p(e1)?0.8p(e1)?0.1p(e2)??p(e2)?0.9p(e2)?0.2p(e1)?p(e2)?2p(e1)??p(e1)?p(e2)?1?p(e1)?1/3??p(e2)?2/3H????ip(黑/黑)=0.8黑e1p(白/黑)=0.2p(白/白)=0.1白e2 p(白/白)=0.9?jp(ei)p(ej/ei)logp(ej/ei)122?1? ????0.8log0.8??0.2log0.2??0.1log0.1??0.9log0.9?333?3? ?0.553 bit/symbol· 10 ·

?1?H0?H?H0H0?H?H0??log2?0.881log2log2?0.553log2?11.9%(3)

?1?

?44.7%H(X) > H2(X)

表示的物理含义是:无记忆信源的不确定度大与有记忆信源的不确定度,有记忆信源的结构化信息较多,能够进行较大程度的压缩。

2.17 给定声音样值X的概率密度为拉普拉斯分布p(x)?1?e??x,???x???,求Hc(X),并

2证明它小于同样方差的正态变量的连续熵。

解: H1??|x|c(X)?????(x)logp(x)dx???????p??p(x)log2?edx ??log???p(x)dx??????|x|2?????p(x)logedx ?log2????1|x|loge??|x|???2?e??dx ?log2?????0?e??xloge??xdx其中:????x0?e?loge??xdx??????xd?e??x0loge??e??xlogx??2e??0????0e??xd?loge??x?????e??x????0??log2e?log2e?Hlog22ec(X)???log2e?log? bit/symbolm?E(X)??????1x|?x?x??p(x)?xdx????2?e??|xdx??01??2?exdx????102?e?xdx?01?x0???y??2?exdx??01(?y)??2?e?(?y)d(?y)??1?y??2?eydy?????102?e?ydy?m?????102?e??xxdx????102?e??xxdx?0?2?E??x?m?2??E(x2)????2??12??p(x)?xdx????2?e??|x|xdx??????x0?ex2dx ?????2??x?????x2????x0xde?x2?ex0???0e??dx???????0e??xdx2?2???0e?xdx ??2???x??????x??0xde???2???x???ex0??0edx????2?2?H?2?log22ec(X正态)?12log2?e??e?Hc(X)?log?

· 11 ·

2.18 每帧电视图像可以认为是由3?105个像素组成的,所有像素均是独立变化,且每像素又取128个不同的亮度电平,并设亮度电平是等概出现,问每帧图像含有多少信息量?若有一个广播员,在约10000个汉字中选出1000个汉字来口述此电视图像,试问广播员描述此图像所广播的信息量是多少(假设汉字字汇是等概率分布,并彼此无依赖)?若要恰当的描述此图像,广播员在口述中至少需要多少汉字?

解: 1)

H(X)?logn?log128?7 bit/symbolH(XN)?NH(X)?3?105?7?2.1?106 bit/symbol

2)

H(X)?logn?log10000?13.288 bit/symbolH(XN)?NH(X)?1000?13.288?13288 bit/symbol

N3)N?H(X).1?106H(X)?213.288?158037

2.19 连续随机变量X和Y的联合概率密度为:?p(x,y)??1??r2??0H(XYZ)和I(X;Y)。、 (提示:

??2log 02sinxdx???2log22)解:

· 12 ·

x2?y2?r2,求H(X), H(Y), 其他222222p(x)??r?x?r2?x2p(xy)dy??r?x1?r2?x2?r2dy?2r?x?r2 (?r?x?r)Hrc(X)????rp(x)logp(x)dx ???rp(x)log2r2?x2?r?r2dx ???r?rp(x)log2?r2dx??r?rp(x)logr2?x2dx?r2 ?log22??r?rp(x)logr?x2dx?r2 ?log12?logr?1?2log2e ?log2?r?12log2e bit/symbol其中:?r?rp(x)logr2?x2dxr?x2??2r22?r?r2logr2?xdx?4r222?r2?0r2?xlogr?xdx令x?rcos?40?r2??rsin?logrsin?d(rcos?)2??422?r2?0?rsin?logrsin?d?24???22?0sin?logrsin?d???4?2sin24?22?0?logrd????0sin?logsin?d?4??2cos2?4??cos2??logr?1?02d????2102logsin?d?

13 ·

·

?2??logr?2d??02???0logr?2cos2?d??02??2?20logsin?d??2?2???20cos2?logsin?d??logr?1?logr?2dsin2??2?2?(??2log2)???20cos2?logsin?d??logr?1??logr?1?其中:2??12?20cos2?logsin?d?elog2????20cos2?logsin?d??1?20logsin?dsin2??201??sin2?logsin?????????????????1????20?sin2?dlogsin????2?2?202sin?cos??2cos?logsin?ed??2logloglogloglog2e?2cos?d?0?2?1e?201?cos2?21d??

0?2?1212e?d??20?2log2e?2cos2?d??202e?e2212?logesin2?2p(y)??r?y2?r?y2p(xy)dx??r?y22212?r?y?r2dx?2r?y22?r2 (?r?y?r)p(y)?p(x)HC(Y)?HC(X)?log2?r?12log2e bit/symbolHc(XY)????p(xy)logp(xy)dxdyR ????p(xy)logR1?r2dxdy

?log?r2??R2p(xy)dxdy ?log2?r bit/symbolIc(X;Y)?Hc(X)?Hc(Y)?Hc(XY) ?2log2?r?log2e?log?r ?log2??log2e bit/symbol2 · 14 ·

2.21 设X?X1X2...XN是N维高斯分布的连续信源,且X1, X2, ? , XN的方差分别是

?1,?2,...,?222N,它们之间的相关系数?(XiXj)?0(i,j?1,2...,N,i?j)。试证明:N维高斯分布

的连续信源熵

Hc(X)?Hc(X1X2...XN)?1N?log2i2?e?i2

证明:相关系数??xixj??0 ?i,j?1,2,...,N, i?j?,说明X1X2...XN是相互独立的。 ?Hc(X)?Hc(X1X2...XN)?Hc(X1)?Hc(X2)?...?Hc(XN)?Hc(Xi)?12log2?e?2i?Hc(X)?Hc(X1)?Hc(X2)?...?Hc(XN) ?122log2?e?21?...?11?2log2?e?22log2?e?2N1N ?22?log2?e?ii?12.22 设有一连续随机变量,其概率密度函数?bx2p(x)???0(1) 试求信源X的熵Hc(X);

(2) 试求Y = X + A (A > 0)的熵Hc(Y); (3) 试求Y = 2X的熵Hc(Y)。

Hc(X)???f(x)logf(x)dx???f2RR(x)logbxdx ??logb??Rf(x)dx??Rf(x)logx2dx ??logb?2b?x2Rlogxdx解:1)33 ??logb?2baloga

9e3?FX(x)?bx3,Fba3X(a)?3?1H23?c(X)??logb?3?logae bit/symbol2)

?0?x?a?0?y?A?a?A?y?a?AFY(y)?P(Y?y)?P(X?A?y)?P(X?y?A) ??y?Abx2dx?bA3(y?A)3

f(y)?F?(y)?b(y?A)2Hc(Y)???f(y)logf(y)dy???f(y)logb(y?A)2dyRR ??logb??f(y)dy?f(y)log(y?A)2dyR?R ??logb?2b?(y?A)2log(y?A)d(y?A)R

0?x?a其他

15 ·

· ??logb??FY(y)?b32ba933loga3e bit/symbolba33(y?A),FY(a?A)?23?loga3?1

?Hc(Y)??logb?e bit/symbol3)

?0?x?a?0??0?y?2aFY(y)?P(Y?y)?P(2X?y)?P(X?yy2?ay2) ??20bxdx?b82b24y2y3f(y)?F?(y)?Hc(Y)???f(y)logf(y)dy???f(y)logRRb8ydy2 ??log ??log ??logb8b8b8??f(y)dy?R?Rf(y)logydy2??b4?Rylogydy322ba92ba9log38aea33 ??logb??FY(y)?b243logeba3a3?39?2ba33

?1y,FY(2a)?23?log?Hc(Y)??logb?e?1 bit/symbol· 16 ·

??logb??FY(y)?b32ba933loga3e bit/symbolba33(y?A),FY(a?A)?23?loga3?1

?Hc(Y)??logb?e bit/symbol3)

?0?x?a?0??0?y?2aFY(y)?P(Y?y)?P(2X?y)?P(X?yy2?ay2) ??20bxdx?b82b24y2y3f(y)?F?(y)?Hc(Y)???f(y)logf(y)dy???f(y)logRRb8ydy2 ??log ??log ??logb8b8b8??f(y)dy?R?Rf(y)logydy2??b4?Rylogydy322ba92ba9log38aea33 ??logb??FY(y)?b243logeba3a3?39?2ba33

?1y,FY(2a)?23?log?Hc(Y)??logb?e?1 bit/symbol· 16 ·

本文来源:https://www.bwwdw.com/article/1xr7.html

Top