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Conditional Probability Target Goal: I can find the probability of a conditional event. 5.3b h.w: p 329: 65 - 69 odd, 73, 83, 91 – 95 odd. Warm up: Grade Distributions Consider the two-way table on page 314. Define events E : the grade comes from an EPS course, and
E N D
Conditional ProbabilityTarget Goal:I can find the probability of a conditional event. 5.3b h.w: p 329: 65 - 69 odd, 73, 83, 91 – 95 odd
Warm up: Grade Distributions Consider the two-way table on page 314. Define events E: the grade comes from an EPS course, and L: the grade is lower than a B. Conditional Probability and Independence Total 6300 1600 2100 Total 3392 2952 3656 10000 Find P(L) Find P(E | L) Find P(L | E) P(L) = 3656 / 10000 = 0.3656 P(E | L) = 800 / 3656 = 0.2188 P(L| E) = 800 / 1600 = 0.5000
The probability that event A occurs ifwe know for certain that event B will occur is called conditional probability. The conditional probability of A given B is denoted: • P(A/B) • Read as the probability of A given B
Example: Drawing an Ace Deal 4 cards: P(ace) = 4/52 = 1/13 P(ace/you have 1 ace in 4 visible cards) = 3/48 = 1/16
Example:Marital Status of Women • The table shows the marital status of adult women broken down by age.
Define the events • A = the woman is young, ages 18 to 29 • B = the woman is married
From Table • A = the woman is young, ages 18 to 29 • P(A) = = 22,512/103,870 = 0.217
The probability we chose a woman who is both young and married is: • P(A and B) = • 7,842/103,870 = 0.075 103,870: out of total population
Find the conditional probability she is married given she is young. • P(B/A) = • = 7,842/22,512 = 0.348 22,512: out of young women
Observation • The probability she is married if we know she is young is much higher (0.38) than if we chose at random (0.075). • Be careful! It is easy to confuse these.
Summary • The probability that a woman is both young and married is, • The product of the probabilitiesshe is young and that she is married given she is young. P(A and B) = P(A) x P(B/A) = 22,512 x 7,842 103,870 22,512 = 0.075 she is married given she is young she is young
General Multiplication Rule For Any Two Events The probability any two events occur together is: P(A and B) = P(A) ∙ P(B/A)
Example:Slim Wants Diamonds Slim wants to draw two diamonds in a row. There are 11 cards upturned on the table of which 4 are diamonds. To find Slims probability of drawing two diamonds in a row, first calculate:
P(first card is a diamond) = 9/41 P(2nd card diamond/ 1st card diamond) = 8/40 Slim finds the probabilities by counting cards.
The multiplication rule says that the P(both cards are diamonds) = P(2nd card diamond/ 1st card diamond) = = 0.044 P(first card is a diamond) x 9/41 x 8/40
We can now rearrange the order and find the conditional probabilityin terms of the unconditional.
Calculating Conditional Probabilities If we rearrange the terms in the general multiplication rule, we can get a formula for the conditional probability P(B | A). Conditional Probability and Independence General Multiplication Rule P(A ∩B) = P(A) • P(B | A) P(A ∩B) P(A) P(B | A) Conditional Probability Formula To find the conditional probability P(B | A), use the formula =
Example: Who Reads the Newspaper? (Venn diagram) In Section 5.2, we noted that residents of a large apartment complex can be classified based on the events A: reads USA Today and B: reads the New York Times. The Venn Diagram below describes the residents. What is the probability that a randomly selected resident who reads USA Today also reads the New York Times? Conditional Probability and Independence There is a 12.5% chance that a randomly selected resident who reads USA Today also reads the New York Times.
Example: Marital Status cont.(two way table) Find the conditional probability that a woman is a widow given that she is at least 65 years old. Find: P(widow / at least 65) Need: P(widow and at least 65) and P(at least 65)
What probabilities do we need form the table? P(at least 65) = 18,669/103,870 = 0.180 P(widow and at least 65) = 8,385/103,870 = 0.081
The conditional probability P(widow/at least 65) =P(widow and at least 65)/ P(at least 65) = 0.081/0.180 = 0.450
Check that this agrees with the result from the “65 and over” column. • P(widow/at least 65) • = 8,385/18,669 • = 0.449