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Binomial Probability Distribution

The binomial probability distribution is a discrete probability distribution that has many applications. It is associated with a multiple-step experiment that we call the binomial experiment. 1. A Binomial Experiment A binomial experiment exhibits the following four properties. PROPERTIES OF A BINOMIAL EXPERIMENT The experiment consists of a sequence of n identical trials. Two

30
Aug
Poisson Probability Distribution

In this section we consider a discrete random variable that is often useful in estimating the number of occurrences over a specified interval of time or space. For example, the random variable of interest might be the number of arrivals at a car wash in one hour, the number of repairs needed in 10

30
Aug
Hypergeometric Probability Distribution

The hypergeometric probability distribution is closely related to the binomial distribution. The two probability distributions differ in two key ways. With the hypergeometric distribu­tion, the trials are not independent; and the probability of success changes from trial to trial. In the usual notation for the hypergeometric distribution, r denotes the number of elements in

30
Aug
Uniform Probability Distribution

Consider the random variable x representing the flight time of an airplane traveling from Chicago to New York. Suppose the flight time can be any value in the interval from 120 minutes to 140 minutes. Because the random variable x can assume any value in that interval, x is a continuous rather than a

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30
Aug
Normal Probability Distribution

The most commonly used probability distribution for describing a continuous random variable is the normal probability distribution. The normal distribution has been used in a wide variety of practical applications in which the random variables are heights and weights of people, test scores, scientific measurements, amounts of rainfall, and other similar values. It is

30
Aug
Normal Approximation of Binomial Probabilities

In Section 5.5 we presented the discrete binomial distribution. Recall that a binomial experi­ment consists of a sequence of n identical independent trials with each trial having two possible outcomes, a success or a failure. The probability of a success on a trial is the same for all trials and is denoted by p.

30
Aug
Exponential Probability Distribution

The exponential probability distribution may be used for random variables such as the time between arrivals at a hospital emergency room, the time required to load a truck, the distance between major defects in a highway, and so on. The exponential probability density function follows. As an example of the exponential distribution, suppose that

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30
Aug
The Electronics Associates Sampling Problem

The director of personnel for Electronics Associates, Inc. (EAI), has been assigned the task of developing a profile of the company’s 2500 managers. The characteristics to be identified include the mean annual salary for the managers and the proportion of managers having completed the company’s management training program. Using the 2500 managers as the

30
Aug
Selecting a Sample

In this section we describe how to select a sample. We first describe how to sample from a finite population and then describe how to select a sample from an infinite population. 1. Sampling from a Finite Population Statisticians recommend selecting a probability sample when sampling from a finite popu­lation because a probability sample

30
Aug
Point Estimation

Now that we have described how to select a simple random sample, let us return to the EAI problem. A simple random sample of 30 managers and the corresponding data on annual salary and management training program participation are as shown in Table 7.2. The notation x1, x2, and so on is used to

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30
Aug
Introduction to Sampling Distributions

In the preceding section we said that the sample mean X is the point estimator of the population mean m, and the sample proportion p is the point estimator of the population proportion p. For the simple random sample of 30 EAI managers shown in Table 7.2, the point estimate of m is X

30
Aug
Sampling Distribution of x

In the previous section we said that the sample mean X is a random variable and its probability distribution is called the sampling distribution of X. This section describes the properties of the sampling distribution of X. Just as with other probability distributions we studied, the sampling distribution of X has an expected value

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30
Aug
Sampling Distribution of p

The sample proportion p is the point estimator of the population proportion p. The formula for computing the sample proportion is where x = the number of elements in the sample that possess the characteristic of interest n = sample size As noted in Section 7.4, the sample proportion p is a random variable

30
Aug
Properties of Point Estimators

In this chapter we showed how sample statistics such as a sample mean X, a sample standard deviation 5, and a sample proportion p can be used as point estimators of their corresponding population parameters m, s, and p. It is intuitively appealing that each of these sample statistics is the point estimator of

30
Aug
Other Sampling Methods

We described simple random sampling as a procedure for sampling from a finite population and discussed the properties of the sampling distributions of X and p when simple random sampling is used. Other methods such as stratified random sampling, cluster sampling, and systematic sampling provide advantages over simple random sampling in some of these

30
Aug
Big Data and Standard Errors of Sampling Distributions

The purpose of statistical inference is to use sample data to quickly and inexpensively gain insight into some characteristic of a population. Therefore, it is important that we can expect the sample to look like, or be representative of, the population that is being investigated. In practice, individual samples always, to varying degrees, fail

30
Aug
Population Mean: σ Known

In order to develop an interval estimate of a population mean, either the population stand­ard deviation s or the sample standard deviation 5 must be used to compute the margin of error. In most applications s is not known, and 5 is used to compute the margin of error. In some applications, large amounts

30
Aug
Population Mean: s Unknown

When developing an interval estimate of a population mean we usually do not have a good estimate of the population standard deviation either. In these cases, we must use the same sample to estimate both m and s. This situation represents the s unknown case. When 5 is used to estimate s, the margin

30
Aug
Determining the Sample Size

In providing practical advice in the two preceding sections, we commented on the role of the sample size in providing good approximate confidence intervals when the population is not normally distributed. In this section, we focus on another aspect of the sample size issue. We describe how to choose a sample size large enough

30
Aug
Population Proportion

In the introduction to this chapter we said that the general form of an interval estimate of a population proportion p is The sampling distribution of p plays a key role in computing the margin of error for this interval estimate. In Chapter 7 we said that the sampling distribution of p can be

30
Aug
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