1、(完整word)概率论与数理统计(英文) 3。 Random Variables3。1 Definition of Random VariablesIn engineering or scientific problems, we are not only interested in the probability of events, but also interested in some variables depending on sample points。 (定义在样本点上的变量)For example, we maybe interested in the life of bulb
2、s produced by a certain company, or the weight of cows in a certain farm, etc。 These ideas lead to the definition of random variables。1。 random variable definitionDefinition 3。1.1 A random variable is a real valued function defined on a sample space; i.e. it assigns a real number to each sample poin
3、t in the sample space。Here are some examples。Example 3.1.1 A fair die is tossed. The number shown is a random variable, it takes values in the set 。 Example 3。1。2 The life of a bulb selected at random from bulbs produced by company A is a random variable, it takes values in the interval . Since the
4、outcomes of a random experiment can not be predicted in advance, the exact value of a random variable can not be predicted before the experiment, we can only discuss the probability that it takes some value or the values in some subset of R。2. Distribution functionDefinition 3.1。2 Let be a random va
5、riable on the sample space 。 Then the function 。 is called the distribution function of Note The distribution function is defined on real numbers, not on sample space.Example 3。1。3 Let be the number we get from tossing a fair die. Then the distribution function of is (Figure 3。1。1) Figure 3。1。1 The
6、distribution function in Example 3.1。33. PropertiesThe distribution function of a random variable has the following properties:(1) is nondecreasing。In fact, if , then the event is a subset of the event ,thus (2), .(3)For any , .This is to say, the distribution function of a random variable is right
7、continuous。Example 3.1。4 Let be the life of automotive parts produced by company A , assume the distribution function of is (in hours)Find ,.Solution By definition, . Question: What are the probabilities and ?Example 3。1.5 A player tosses two fair dice, if the total number shown is 6 or more, the pl
8、ayer wins 1, otherwise loses 1. Let be the amount won, find the distribution function of .Solution Let be the total number shown, then the events contains sample points, . Thus , And so Thus Figure 3。1。2 The distribution function in Example 3。1。5The distribution function of random variables is a con
9、nection betweenprobability and calculus. By means of distribution function, the main tools in calculus, such as series, integrals are used to solve probability and statistics problems.3.2 Discrete Random Variables 离散型随机变量In this book, we study two kinds of random variables。Definition 3.2.1 A random
10、variable is called a discrete random variable, if it takes values from a finite set or, a set whose elements can be written as a sequence Assume a discrete random variable takes values from the set 。 Let , (3。2.1)Then we have , . the probability distribution of the discrete random variable (概率分布) X
11、a1 a2 anprobability p1 p2 pn注意随机变量X的分布所满足的条件(1) Pi 0(2) P1+P2+Pn=1离散型分布函数And the distribution function of is given by (3.2.2)In general, it is more convenient to use (3。2.1) instead of (3。2.2)。 Equation (3.2.1) is called the probability distribution of the discrete random variable .Example 1For an e
12、xperiment in which a coin is tossed three times (or 3 coins are tossed once), construct the distribution of X. (Let X denote the number of head occurrence)Solution n=3, p=1/2X pr 0 1/81 3/82 3/83 1/8Example 2在一次试验中,事件A发生的概率为p, 不发生的概率为1p, 用X=0表示事件A没有发生,X=1表示事件A发生,求X的分布.twopoint distribution(两点分布) X01
13、P1-pp某学生参加考试得5分的概率是p, X表示他首次得5分的考试次数,求X的分布。geometric distribution (几何分布) X 1234kPpq1pq2pq3pqk1pExample 3 (射击5发子弹) 某射手有5发子弹,射一次命中率为0.9,如果命中目标就停止射击,如果不命中则一直射到子弹用尽,求耗用子弹数x的概率分布.*Example 3.2.1 A die is tossed, by we denote the number shown, Assume that the probability is proportional to , . Find the pro
14、bability distribution of .Solution Assume that , constant, 。Since the events , are mutually exclusive and their union is the certain event, i。e., the sample space , we have ,thus 。 The probability distribution of is (Figure 3.2。1) , . Figure 3。2.1 Probability distribution in Example 3。2.1Question。 W
15、hat is the difference between distribution functions and probability distributions例2 有一种验血新方法:把k个人的血混在一起进行化验,如果结果是阴性,那么对这k 个人只作一次检验就够了,如果结果是阳性,那么必须对这k个人再逐个分别化验,这时k个人共需作k+1次检验。假设对所有人来说,化验是阳性反应的概率为p,而且这些人反映是独立的。设表示每个人需要化验的次数,求的分布(construct the distribution of )Binomial distribution(二项分布)Example 3.2.2
16、A fair die is tossed 4 times. Let be the number of six got。 Find the probability distribution of .Solution。 The possible values of are 。First we find the probability . Since means that no six occur in 4 tosses. The probability that six fails to occur in a single toss is , and all trials are independ
17、ent, so 。Now consider the probability , . Since means that six occurs exactly times, they may occur in any tosses of 4 tosses。The event that they occur in a special order (for example, the first tosses), has probability , and we have such combinations。 Thus i。e. X01234PBinomial DistributionsAn exper
18、iment often consists of repeated trials, each with two possible outcomes “success and “failure”. The most useful application deals with the testing of items as they come off an assembly line, where each test or trial may indicate a defective or a nondefective item。 We may choose to define either out
19、come as a success。 The process is referred to a Bernoulli process. Each trial is called a Bernoulli trial。Consider an experiment consists of independent repeated trials, each trials result in two outcomes “success” and “failure”, and the probability of success, denote by , remains constant。 Then thi
20、s process is called a Bernoulli process.Definition 3.4。1 The number of successes in Bernoulli trials is called a binomial random variable. The probability distribution of this discrete random variable is called the binomial distribution with parameters and , denoted by 。The random variable in Exampl
21、e 3.2.2 is an example of binomial random variable。Theorem 3.4.1 The probability distribution of the binomial distribution with parameters and is given by , (3。4。1)Proof First, consider the probability of obtaining consecutive successes, followed by consecutive failures. These events are independent,
22、 therefore the desired probability is .Since the successes and failures may occur in any order, and for any specific order, the probability is again 。 We must now determine the total number of sample points in the experiment that have successes and failures. This number is equal to the number of par
23、tition of outcomes into two groups with in one group and in the other, i。e. . Because the partitions are mutually exclusive, thus we have , Let , the binomial expansion of the expression gives .Each term correspond to various values of binomial distribution, this is the reason that we called it “bin
24、omial distribution”。Example 2For an experiment in which 9 coins are tossed, Let X denotes the number of head occurrence, construct the binomial distribution of Xwhat is the probability of obtaining between 3 and 6 successes.poisson distribution(泊松分布)Definition 3。5。1 A discrete random variable is cal
25、led a Poisson random variable, if it takes values from the set , and if , (3。5.1)Distribution (3.5.1) is called the Poisson distribution with parameter, denoted by 。Note that .Here are some examples of Poisson random variables:(a) the number of radioactive particles passing through a counter in cert
26、ain time period;(b) the number of telephone calls received by an office in certain time period; (c) the number of bacteria in a given culture;(细菌,培养基)(d) the number of typing errors per page in a certain book.Example 3。5。1 From a laboratory experiments, it is known that the number of radioactive par
27、ticles passing(放射性粒子) through a counter in a given millisecond is a Poisson random variable with parameter . What is the probability that 6 particles enter the counter in a given millisecond?Solution The probability is 。Example 3.5。2 The number of oil tankers arriving each day at a certain port is a
28、 Poisson random variable with parameter 10。 What is the probability that on a given day no more than 3 tankers having arrived?Solution. The probability is . HomeworkChapter 3 (P47) 1, 2, 3, 5,7, 21二项分布与泊松分布的关系Theorem 3。5。2 Let be a sequence of binomial random variables with probability distribution
29、. If for some constant , we have when , and , then , when , and .proof *Example 3.5。4 Suppose that, on average, 1 person in 1000 makes a numerical error in preparing his or her income tax return。 If 5000 forms are selected at random and examined, find the probability that 6, 7 or 8 of the forms cont
30、ain an error。Solution Let be the number of forms contain an error, then has the binomial distribution of parameter and .Using Poisson distribution as approximations, we have ;. 二项分布的应用例子Example 3。4.1 It is known that 15% of certain articles manufactured are defective, what is the probability that in
31、 a random sample of 5 articles(a ) exactly 2 are defective。(b) at least 2 are defective。Solution In this case, .(a) The probability is .(b)The desired probability is the sum of getting 2, 3, 4, 5 defective articles, or, we may first find the probability of the complement event, i.e。, getting or 1 de
32、fective article。 So, if we denote the number of defective articles by , then we have. Example 3。4.2 A man is able to hit a target 7 times of 10 on the average.(a) Find the probability that he hits the target exactly 3 times in 6 shots;(b) In how many shots the probability that he hits the target at
33、least one time is greater than 0。95?Solution (a) The probability is 。(b) In shots, the probability that he hits at least one time is 。Since when , we have ,so in 3 shots, the probability that he hits the target at least one time is .3。3. Expectation and Variance1Expectation (mean) 数学期望Suppose in the
34、 final exam, you got 85 in calculus, 90 in algebra and 83 in statistics, then your average score is .Assume a player tossed a fair die 20 times。 He won 11 when he get six and lost $1 otherwise. If he gets six 4 times。 Then the average amount he gets per toss is Consider the future games。 Since we ca
35、nnot predict the outcome of the game, we cannot predict the exact amount he will win in the game。 But we can predict the average amount he will win. Assume he tosses the die 600 times, in average, six will occur 100 times, thus, the average amount he will win per toss would be We say that in average
36、 he will win 1 per toss.Definition 3。3.1 Let be a discrete random variable. The expectation or mean of is defined as (3.3。1)NoticeIn the case that takes values from an infinite number set, (3.3.1) becomes an infinite series。 If the series converges absolutely(级数绝对收敛), we say the expectation exists,
37、otherwise we say that the expectation of does not exist。Example 3.3。1 A fair die is tossed . Find the expectation of spots shown.Solution Since takes values from the set and the distribution is , 。Thus,。 If a discrete random variable assume each of its values with an equal probability, we say this p
38、robability distribution is a discrete uniform distribution(离散均匀分布)。 The distribution in Example 3.3。1 is a discrete uniform distribution. Example 3.3.2 A player tosses a fair coin until a head occurs。 If the first head occurs at th time, the player wins dollars。 Find the average amount the player wi
39、ns。Solution Let be the amount the player wins。 Then takes values from the set . The player wins dollars if and only if he gets tails first, and follows by a head。 Thus So 二项分布的数学期望Now we give the expectation and variance of binomial distribution. Theorem 3.4。3 The expectation and variance of a binom
40、ial random variable with parameters n and p are given by 。 (3.4。2)Proof Consider the identity.Regard as constants, as a variable。 Differentiate both sides of this identity with respect to , we have 。 (3。4。3)Put , we get。But , thusTake differentiation on both sides of (3。4。3),。Put , we get 。 (3.4。4)
41、Add (3。4。3) and (3。4。4) to get 泊松分布的期望Theorem 3.5.1 The expectation and variance of a Poisson random variable with parameter are, respectively, and . (3.5。2)Proof By the definition, 。Homework chapter 3 8, 9, 10, 22, 27, 302008-319验血问题验血次数X 的数学期望为 N个人平均需化验的次数为 。 由此可知,只要选择使 , 则N个人平均需化验的次数.当固定时,我们选取使得小
42、于1且取到最小值,这时就能得到最好的分组方法。例如,则,当时, 取到最小值. 此时得到最好的分组方法.若,此时以分组,则按第二方案平均只需化验。 这样平均来说,可以减少40%的工作量。 补充例问题提出某工厂需要在五周内采购1000吨原料,估计原料价格为500元的概率为0。3,600元的概率为0.3,700元的概率为0。4,试求最佳采购策略,使采购价格的期望值最小。思考题如果你能预先知道5周的原料价格,当然是按最低价购买全部原料, 则此时价格的期望值是多少?The expectation of discrete random variables has the following propert
43、ies数学期望性质Theorem 3。3.1 Let be a discrete random variable, then (assume all expectations exist):(a) If for some constant , then 。(b) Let be a function of , then (3。3。2)(c) If are discrete random variables, then (3.3.3)(d) If , then .(e) If and , then 。(f) For any constant , (3。3.4)(g) Schwarzs inequa
44、lity。 (许瓦慈不等式)Let X,Y be random variables, then (3。3。5)The equality holds iff or for some constant a。Proof (a) By the definition。.In the summation, for the term and for the other terms thus a。(b), (c) The proofs are given in advanced probability theory, so is omitted here。(d) If , then in the summation each term
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