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Section 8.1 - Binomial Distributions For a situation to be considered a binomial setting, it must satisfy the following conditions: 1)Experiment is repeated a fixed number of trials and each trial is independent of the others 2)There are only two possible outcomes: success (S) and failure (F). 3)The probability of success, P(S), is the same for each trial 4)The random variable, x, counts the number of successful trials
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Symbols and Notations for Binomial Settings n = number of trials in the sample p = probability of success in a single trial x = count of the number of successes in n trials this is called a binomial random variable A binomial experiment can be symbolized as B(n,p) xpxpx 0 1 2 3 The probability distribution of the successes is referred to as a binomial distribution
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Are these binomial experiments? 1)If both parents carry the genes for the O and A blood types, each child has a probability of 0.25 of getting two O genes and therefore having blood type O. 5 children of these parents are chosen to observe their blood type. Success is considered having blood type O. 2)Deal 10 cards from a shuffled deck and count the number, x, of red cards. Success is considered as getting a red card. 3)An engineer chooses a SRS of 10 switches from a shipment of 10,000 switches. Suppose that (unknown to the engineer) 10% of the switches in the shipment are bad. The engineer counts the number, x, of bad switches (success). Choosing a SRS of size n from a population, where the population is much larger than the sample, the count of X successes in the sample is approximately B(n,p)
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There are several ways to find the probability of exactly k successes in n trials. One way is by the Binomial Probability Formula. P(k) = n C x p x (1 – p) n – x This can also be done on the calculator using the binompdf (n, p, x) Using the engineer looking for defective switches example which can be approximated as B(10,0.1) … What is the probability that no more than 1 switch is defective?
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XP(x) 0 1 2 3 4 5 6 7 8 9 10
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Example: Sample surveys show that fewer people enjoy shopping than in the past. A survey asked a nationwide random sample of 2500 adults if they agreed or disagreed with the statement “ I like buying new clothes, but shopping is often frustrating and time- consuming.” The population that the poll wants to draw conclusions about is all US residents aged 18 and over. Suppose that in fact 60% of all adults US residents would say they “agree” with the statement. What is the probability that 1520 or more of the sample would agree? If there is a large number of possible outcomes, making a table of the probability distribution is difficult. This is where the binomcdf function is useful. Binomcdf (n, p, x) x is the upper limit of the lower tail
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