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Last Chance Probability Review




       CHANCE by flickr user eisenrah
Suppose a test for cancer is known to be 98% accurate. This means
that the outcome of the test is correct 98% of the time. Suppose that
0.5% of the population have cancer. What is the probability that a
person who tests positive for cancer has cancer?

Suppose 1 000 000 randomly selected people are tested. There are four
possibilities:
• A person with cancer tests positive    • A person with cancer tests
                                           negative
• A person without cancer tests positive • A person without cancer tests
                                           negative
Suppose a test for cancer is known to be 98% accurate. This means
that the outcome of the test is correct 98% of the time. Suppose that
0.5% of the population have cancer. What is the probability that a
person who tests positive for cancer has cancer?

 (1) (a)How many of the people tested have cancer?
      (b) How many do not have cancer?

(2) Assume the test is 98% accurate when the result is positive.
    (a) How many people with cancer will test positive?
    (b) How many people with cancer will test negative?

(3) Assume the test is 98% accurate when the result is negative.
    (a) How many people without cancer will test positive?
    (b) How many people without cancer will test negative?

 (4) (a) How many people tested positive for cancer?
      (b) How many of these people have cancer?
      (c) What is the probability that a person who tests positive for
 cancer has cancer?
Suppose a test for cancer is known to be 98% accurate. This means
that the outcome of the test is correct 98% of the time. Suppose that
0.5% of the population have cancer. What is the probability that a
person who tests positive for cancer has cancer?

  P(C|P)




                                  P(C|P)
Suppose a test for cancer is known to be 98% accurate. This means
that the outcome of the test is correct 98% of the time. Suppose that
0.5% of the population have cancer. What is the probability that a
person who tests positive for cancer has cancer?

P(H|N)




                         P(H|N)
Suppose a test for industrial disease is known to be 99% accurate. This
means that the outcome of the test is correct 99% of the time. Suppose
that 1% of the population has industrial disease. What is the probability
that a person who tests positive has industrial disease?
A couple intends to have four children. Assume that having a boy
or a girl are equally likely events. Find the probability that the
couple has at least two girls.
A couple intends to have four children. Assume that having a boy
or a girl are equally likely events. Find the probability that the
couple has at least two girls.
A couple intends to have four children. Assume that having a boy
or a girl are equally likely events. Find the probability that the
couple has at least two girls.

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Pre-Cal 40S June 2, 2009

  • 1. Last Chance Probability Review CHANCE by flickr user eisenrah
  • 2. Suppose a test for cancer is known to be 98% accurate. This means that the outcome of the test is correct 98% of the time. Suppose that 0.5% of the population have cancer. What is the probability that a person who tests positive for cancer has cancer? Suppose 1 000 000 randomly selected people are tested. There are four possibilities: • A person with cancer tests positive • A person with cancer tests negative • A person without cancer tests positive • A person without cancer tests negative
  • 3. Suppose a test for cancer is known to be 98% accurate. This means that the outcome of the test is correct 98% of the time. Suppose that 0.5% of the population have cancer. What is the probability that a person who tests positive for cancer has cancer? (1) (a)How many of the people tested have cancer? (b) How many do not have cancer? (2) Assume the test is 98% accurate when the result is positive. (a) How many people with cancer will test positive? (b) How many people with cancer will test negative? (3) Assume the test is 98% accurate when the result is negative. (a) How many people without cancer will test positive? (b) How many people without cancer will test negative? (4) (a) How many people tested positive for cancer? (b) How many of these people have cancer? (c) What is the probability that a person who tests positive for cancer has cancer?
  • 4. Suppose a test for cancer is known to be 98% accurate. This means that the outcome of the test is correct 98% of the time. Suppose that 0.5% of the population have cancer. What is the probability that a person who tests positive for cancer has cancer? P(C|P) P(C|P)
  • 5. Suppose a test for cancer is known to be 98% accurate. This means that the outcome of the test is correct 98% of the time. Suppose that 0.5% of the population have cancer. What is the probability that a person who tests positive for cancer has cancer? P(H|N) P(H|N)
  • 6. Suppose a test for industrial disease is known to be 99% accurate. This means that the outcome of the test is correct 99% of the time. Suppose that 1% of the population has industrial disease. What is the probability that a person who tests positive has industrial disease?
  • 7. A couple intends to have four children. Assume that having a boy or a girl are equally likely events. Find the probability that the couple has at least two girls.
  • 8. A couple intends to have four children. Assume that having a boy or a girl are equally likely events. Find the probability that the couple has at least two girls.
  • 9. A couple intends to have four children. Assume that having a boy or a girl are equally likely events. Find the probability that the couple has at least two girls.