AP Statistics 2017

(Marvins-Underground-K-12) #1
On  the TI-83/84,   the solution    is  given   by  1–binompdf(12,0.003,0).
The clear message here is that even though the probability of any one failure seems remote
(0.003), the probability of at least one failure (3.5%) is large enough to be worrisome.



  1.     Because you already have    2   of  the 5   prizes, the probability that    the next    box contains    a   prize   you

    don’t have is 3/5 = 0.6. If n is the number of trials until the first success, then P (X = n ) = (0.6). (0.4)
    n −1 .
    (a) P (X = 1) = (0.6)(0.4)1−1 = (0.6)(1) = 0.6. On the TI-83/84 calculator, the answer can be found
    by geometpdf(0.6,1).
    (b) P (X = 3) = (0.6)(0.4)3−2 = 0.096. On the calculator: geometpdf(0.6,3).
    (c) The average number of boxes you will have to buy before getting the third prize is



  2. 40(0.8) = 32 and 40(0.2) = 8. The rule we have given is that both np and n (1 – p ) must be greater
    than 10 to use a normal approximation. However, as noted in earlier in this chapter, many texts allow
    the approximation when np ≥ 5 and n (1 – p ) ≥ 5. Whether the normal approximation is valid or not
    depends on the standard applied. Assuming that, in this case, the conditions necessary to do a normal
    approximation are present, we have

  3. If p = 0.70, then μ = 0.70 and . Thus, P ( ≤ 0.65) =

    . Since there is a very small probability of getting a sample


proportion  as  small   as  0.65    if  the true    proportion  is  really  0.70,   it  appears that    the San Francisco   Bay
Area may not be representative of the United States as a whole (that is, it is unlikely that we would
have obtained a value as small as 0.65 if the true value were 0.70).

Solutions to Cumulative Review Problems




  1.          The sample  space   for this    event   is  {HHH,   HHT ,   HTH ,   THH ,   HTT,    HTH,    THH,    TTT}.   One way

    to do this problem, using techniques developed in Chapter 9 , is to compute the probability of each
    event. Let X = the count of heads. Then, for example (bold faced in the list above), P (X = 2) = (0.6)
    (0.6)(0.4) + (0.6)(0.4)(0.6) + (0.4)(0.6)(0.6) = 3(0.6)^2 (0.4) = 0.432. Another way is to take
    advantage of the techniques developed in this chapter (noting that the possible values of X are 0, 1, 2,
    and 3):




P   (X =    0)  =   (0.4)^3 =   0.064; =    binompdf(3,0.6,1)=  0.288;

=   binompdf(3,0.6,2)= 0.432;   and P(X =   3)  =    =

binompdf(3,0.6,3)= 0.216.   Either  way,    the probability distribution    is  then:
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