Section 5-3 Binomial Probability Distribution. BINOMIAL PROBABILITY DISTRTIBUTION 1.The procedure has a fixed number of trials. 2.The trials must be independent.

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Section 5-3 Binomial Probability Distribution

BINOMIAL PROBABILITY DISTRTIBUTION 1.The procedure has a fixed number of trials. 2.The trials must be independent. (The outcome of any individual trial doesn’t affect the probabilities in the other trials.) 3.Each trial must have all outcomes classified into two categories. These categories are usually “success” or “failure”. 4.The probabilities must remain constant for each trial. The binomial probability distribution results from a procedure that meets all the following requirements:

NOTATION FOR BINOMIAL PROBABILITY DISTRIBUTIONS “S” and “F” (success and failure) denote the two possible categories of all outcomes; p will denote the probability of “S” and q will denote the probability of “F”. That is, P(S) = p (p = probability of success) P(F) = 1 − p = q (q = probability of failure)

NOTATION (CONCLUDED) ndenotes the fixed number of trials xdenotes the number of successes in n trials, so x can be any number between 0 and n, inclusive. pdenotes the probability of success in one of the n trials. qdenotes the probability of failure in one of the n trials. P(x)denotes the probability of getting exactly x successes among the n trials.

EXAMPLES 1.If the probability is 0.70 that a student with very high grades will get into law school, what is the probability that three of five students with very high grades will get into law school? 2.The probability is 0.60 that a person shopping in a certain market will spend $25 or more. Find the probability that among eight persons shopping at this market, at least 6 will spend $25 or more. Identify success, failure, n, p, and q for the questions below. We will answer the questions later.

IMPORTANT CAUTIONS Be sure that x and p both refer to the same category being called a success. When sampling without replacement, the events can be treated as if they were independent if the sample size is no more than 5% of the population size. (That is, n ≤ 0.05N.)

THREE METHODS FOR FINDING BINOMIAL PROBABILITIES 1.Using the Binomial Probability Formula. 2.Using Table A-1 located in Appendix A on pages Using the TI-83/84 calculator.

METHOD 1: THE BINOMIAL PROBABILITY FORMULA where n = number of trials x = number of successes in n trials p = probability of success in any one trial q = probability of failure in any one trial (q = 1 − p)

EXAMPLE If the probability is 0.70 that a student with very high grades will get into law school, what is the probability that three of five students with very high grades will get into law school? Use the Binomial Probability Formula.

METHOD 2: USING TABLE A-1 IN APPENDIX A Part of Table A-1 is shown below. With n = 4 and p = 0.2 in the binomial distribution, the probabilities of 0, 1, 2, 3, and 4 successes are 0.410, 0.410, 0.154, 0.026, and respectively.

EXAMPLE The probability is 0.60 that a person shopping in a certain market will spend $25 or more. Find the probability that among eight persons shopping at this market, at least 6 will spend $25 or more. Use Table A-1.

METHOD 3: USING THE TI-83/84 CALCULATOR 1.Press 2 nd VARS (to get DISTR) 2.Select option 0:binompdf( on the TI-83. Use A:binompdf( on the TI Complete the entry of binompdf(n,p,x) with specific values for n, p, and x. 4.Press ENTER, and the result will be the probability of getting x successes in n trials; that is, P(x). NOTE: For more information on “binompdf(” see the Using Technology example on page

TI-84 WITH NEW OPERATION SYSTEM If using the TI-84 with the newest operating system, complete the screen as follows Enter value for n here. Enter value for p here. Enter value for x here. Highlight PASTE and press ENTER to copy the command to the home screen. Press ENTER again to execute the command.

EXAMPLE Use your calculator to compute the probability of 3 successes in 10 trials if the probability of success is 0.4.

MATHEMATICAL TRANSLATIONS OF ENGLISH PHRASES PhraseMath Symbol “at least” or “no less than”≥ “more than” or “greater than”> “fewer than” or “less than”< “no more than” or “at most”≤ “exactly”=

CUMULATIVE BINOMIAL PROBABILITIES USING THE TI-83/84 CALCULATOR

CUMULATIVE BINOMIAL PROBABILITIES USING THE TI-84 WITH NEW OS Press 2 nd VARS (to get DIST) and select B:binomcdf(. Enter value for n here. Enter value for p here. Enter value for x here. Highlight PASTE and press ENTER to copy the command to the home screen. Press ENTER again to execute the command.

EXAMPLE (a)In a random sample of 15 households, what is the probability that exactly 10 have cable? (b)In a random sample of 15 households, what is the probability that at least 13 have cable? (c)In a random sample of 15 households, what is the probability that fewer than 13 have cable? According to Nielson Media Research, 75% of all United States households have cable television.