Area under the curve, Part I. (4.1, p. 142) What percent of a standard normal distribution \(N(\mu=0, \sigma=1)\) is found in each region? Be sure to draw a graph.
Triathlon times, Part I (4.4, p. 142) In triathlons, it is common for racers to be placed into age and gender groups. Friends Leo and Mary both completed the Hermosa Beach Triathlon, where Leo competed in the Men, Ages 30 - 34 group while Mary competed in the Women, Ages 25 - 29 group. Leo completed the race in 1:22:28 (4948 seconds), while Mary completed the race in 1:31:53 (5513 seconds). Obviously Leo finished faster, but they are curious about how they did within their respective groups. Can you help them? Here is some information on the performance of their groups:
Remember: a better performance corresponds to a faster finish.
Leo = 1.089 -> his performance was a full std deviation greater than mean performance among his gender/age group
Mary = .312 -> her performance was within one standard deviation of mean, her runtime was slightly longer than the average performance among her gender/age group
Mary ranks better as her score is only slightly higher(longer) than the mean performance of her group at .312 standard deviation from center
Leo ranked poorer within his group, finishing a full standard deviation greater than the mean performance of his group, meaning his time was more than 1 std deviation longer
1 - .8621 = .1379 or 13.8% : Leo finished faster than 13.8% of his group
1 - .6217 = .3783 or 37.8% : Mary finished faster than 37.8% of her group
Yes, Z-scores can only be used in cases where data is normally distributed
Heights of female college students Below are heights of 25 female college students.
\[ \stackrel{1}{54}, \stackrel{2}{55}, \stackrel{3}{56}, \stackrel{4}{56}, \stackrel{5}{57}, \stackrel{6}{58}, \stackrel{7}{58}, \stackrel{8}{59}, \stackrel{9}{60}, \stackrel{10}{60}, \stackrel{11}{60}, \stackrel{12}{61}, \stackrel{13}{61}, \stackrel{14}{62}, \stackrel{15}{62}, \stackrel{16}{63}, \stackrel{17}{63}, \stackrel{18}{63}, \stackrel{19}{64}, \stackrel{20}{65}, \stackrel{21}{65}, \stackrel{22}{67}, \stackrel{23}{67}, \stackrel{24}{69}, \stackrel{25}{73} \]
The height values appear to fall within a normal distribution - majority of values fall within the 68% range and no values exist outside of the 98% range.
Yes, the frequency of the data follows a symmetrical bell curve. The QQ plot tests for normality by checking if 2 data sets can share the same distribution. The closer the fit of the data points to the linear reference line, the more we can be sure of normality
# Use the DATA606::qqnormsim function
qqnormsim(heights)
Defective rate. (4.14, p. 148) A machine that produces a special type of transistor (a component of computers) has a 2% defective rate. The production is considered a random process where each transistor is independent of the others.
What is the probability that the 10th transistor produced is the first with a defect? 1.67% - (.98)^9 x (0.2)
What is the probability that the machine produces no defective transistors in a batch of 100?
13.26% - (.98)^100
On average, how many transistors would you expect to be produced before the first with a defect? What is the standard deviation
Increasing the probability of an event results in a decreased mean and decreased std deviation - because probability of event increases, it takes fewer trials (and therefore less time to wait) for a success to happen.
Male children. While it is often assumed that the probabilities of having a boy or a girl are the same, the actual probability of having a boy is slightly higher at 0.51. Suppose a couple plans to have 3 kids.
Use the binomial model to calculate the probability that two of them will be boys. 38.23% ->(3)(2)/(2)(1)(1)= 3 x (.51)^2 x .49
Write out all possible orderings of 3 children, 2 of whom are boys. Use these scenarios to calculate the same probability from part (a) but using the addition rule for disjoint outcomes. Confirm that your answers from parts (a) and (b) match.
The General Addition Rule would have you individually calculate the probability of each possible outcome of interest, exhausting all possible scenarios.
Calculating under Binomial Distribution enables generalizing this probability to each possible scenarios and calculating probability as number of scenarios to the probability of each scenario. We can identify without listing them out the number of scenarios possible with k successes.
Serving in volleyball. (4.30, p. 162) A not-so-skilled volleyball player has a 15% chance of making the serve, which involves hitting the ball so it passes over the net on a trajectory such that it will land in the opposing team’s court. Suppose that her serves are independent of each other.
What is the probability that on the 10th try she will make her 3rd successful serve?
.2597 –> 36 possible trials x probability (.15)(.15)(.85)^7 or .0072135 per trial
Suppose she has made two successful serves in nine attempts. What is the probability that her 10th serve will be successful?
.01623 –> 15 possible trials x probability (.15)(.15)(.15)(.85)^7 per trial
Even though parts (a) and (b) discuss the same scenario, the probabilities you calculated should be different. Can you explain the reason for this discrepancy?
Scenario (a) refers to a negative binomial situation where we are looking at the number of trials it takes to observed 3rd success.
Scenario (b) refers to a binomial situation where we are looking at fixed number of trials (10) and considering fixed number of successes (3)