Baby weights, Part I. (9.1, p. 350) The Child Health and Development Studies investigate a range of topics. One study considered all pregnancies between 1960 and 1967 among women in the Kaiser Foundation Health Plan in the San Francisco East Bay area. Here, we study the relationship between smoking and weight of the baby. The variable smoke is coded 1 if the mother is a smoker, and 0 if not. The summary table below shows the results of a linear regression model for predicting the average birth weight of babies, measured in ounces, based on the smoking status of the mother.
The variability within the smokers and non-smokers are about equal and the distributions are symmetric. With these conditions satisfied, it is reasonable to apply the model. (Note that we don’t need to check linearity since the predictor has only two levels.)
Answer
Intercept = 123.05 Slope = -8.94 \(y = mx+b\) \(babyweight = 123.05 -8.94 * smoke\)
Answer
The estimated body weight of babies born to smoking mothers is 8.94 oz lower than babies born to non-smoking mother.
\(babyweight = 123.05 -8.94 * smoke\) \(smoker: 123.05-(8.94*1) = 114.11oz\) \(Non-smoker: 123.05-(8.94*0) = 123.05oz\)
Answer
\(H_0\) : \(\beta_1 = 0\) \(H_A\) : \(\beta_1 \ne 0\)
T = -8.94 and the p-value is approximately 0 so we reject \(H_0\) and conclude that body weight of babies and smoking are negatively correlated.
Absenteeism, Part I. (9.4, p. 352) Researchers interested in the relationship between absenteeism from school and certain demographic characteristics of children collected data from 146 randomly sampled students in rural New South Wales, Australia, in a particular school year. Below are three observations from this data set.
The summary table below shows the results of a linear regression model for predicting the average number of days absent based on ethnic background (eth
: 0 - aboriginal, 1 - not aboriginal), sex (sex
: 0 - female, 1 - male), and learner status (lrn
: 0 - average learner, 1 - slow learner).
Answer
\(Absenteeism = 18.93-9.11*eth + 3.10*sex +2.15*lrn\)
Answer
eth: The model predicts that the average number of days absent by non-aboriginal students is 9.11 days lower than by aboriginal students.
sex: The model predicts that the average number of days absent by male students is 3.1 days higher than by female students.
lrn: The model predicts that the average number of days absent by slow learners is 2.15 days higher than by average learners.
Answer
y1 <- (18.93-9.11*0) + (3.10*1) + (2.15*1)
e1 <- 2 - y1
e1
## [1] -22.18
Answer
v_residual <- 240.57
v_birth_Weights <- 264.17
n <- 146
k <- 3
R2 <- 1 - (v_residual/v_birth_Weights)
adj_R2 <- 1- ((v_residual*(n-1))/(v_birth_Weights*(n-k-1)))
R2 ; adj_R2
## [1] 0.08933641
## [1] 0.07009704
Absenteeism, Part II. (9.8, p. 357) Exercise above considers a model that predicts the number of days absent using three predictors: ethnic background (eth
), gender (sex
), and learner status (lrn
). The table below shows the adjusted R-squared for the model as well as adjusted R-squared values for all models we evaluate in the first step of the backwards elimination process.
Which, if any, variable should be removed from the model first?
Answer
4th model, No learner status, has the highest adjusted \(adj.R^2 =0.0723\).
Challenger disaster, Part I. (9.16, p. 380) On January 28, 1986, a routine launch was anticipated for the Challenger space shuttle. Seventy-three seconds into the flight, disaster happened: the shuttle broke apart, killing all seven crew members on board. An investigation into the cause of the disaster focused on a critical seal called an O-ring, and it is believed that damage to these O-rings during a shuttle launch may be related to the ambient temperature during the launch. The table below summarizes observational data on O-rings for 23 shuttle missions, where the mission order is based on the temperature at the time of the launch. Temp gives the temperature in Fahrenheit, Damaged represents the number of damaged O-rings, and Undamaged represents the number of O-rings that were not damaged.
Answer
Out of 23 shuttle missions, 7 missions had 1 or more damaged o-rings. Shuttle mission 1 which had the highest number of damaged o-rings (5) occurred in the lowest temperature (53F). 4 out of 7 shuttle missions with damaged o-rings occurred in temperatures lower than 65F.
Answer
The low p-value means that the relationship between the temperatures and the damaged O-rings has a statistical significance. The lowest temp recorded is 53 and thus the intercept is outside of this reasonable range.
Answer
\(log(\frac{\hat{p}}{1-\hat{p}}) = 11.6630 - 0.2162 * Temperature\)
Answer
Since the p-value is less than 0.05, it is justified to have concerns regarding O-rings.
Challenger disaster, Part II. (9.18, p. 381) Exercise above introduced us to O-rings that were identified as a plausible explanation for the breakup of the Challenger space shuttle 73 seconds into takeoff in 1986. The investigation found that the ambient temperature at the time of the shuttle launch was closely related to the damage of O-rings, which are a critical component of the shuttle. See this earlier exercise if you would like to browse the original data.
\begin{center} \end{center}
where \(\hat{p}\) is the model-estimated probability that an O-ring will become damaged. Use the model to calculate the probability that an O-ring will become damaged at each of the following ambient temperatures: 51, 53, and 55 degrees Fahrenheit. The model-estimated probabilities for several additional ambient temperatures are provided below, where subscripts indicate the temperature:
\[\begin{align*} &\hat{p}_{57} = 0.341 && \hat{p}_{59} = 0.251 && \hat{p}_{61} = 0.179 && \hat{p}_{63} = 0.124 \\ &\hat{p}_{65} = 0.084 && \hat{p}_{67} = 0.056 && \hat{p}_{69} = 0.037 && \hat{p}_{71} = 0.024 \end{align*}\]
Answer
#ambient temperatures 51 F
p51<- exp(11.663-51*.2126)/(1+exp(11.663-51*.2126))
p51
## [1] 0.6943212
#ambient temperatures 53 F
p53<- exp(11.663-53*.2126)/(1+exp(11.663-53*.2126))
p53
## [1] 0.5975339
#ambient temperatures 55 F
p55<- exp(11.663-55*.2126)/(1+exp(11.663-55*.2126))
p55
## [1] 0.4925006
temp2 <- c(seq(51, 71, 2))
prob <- exp(11.6630 - 0.2162 * temp2) / (1 + exp(11.6630 - 0.2162 * temp2))
plot(data.frame(temp2, prob), type = "b", pch = 15)
Answer
all observations are independent. We need to consider all variables that might be responsible to the damage of the O-rings. Also the sample size came from only 23 missions which is relatively a small sample size. Aside from the temperature, there might be other variables that could’ve contributed to the damage of the O-rings.