Q# 4.4 Heights of Adults.
Researchers studying anthropometry collected body girth measurements and skeletal diameter measurements, as well as age, weight, height and gender, for 507 physically active individuals. The histogram below shows the sample distribution of heights in centimeters.
Point estimate is the sample mean, 171.1 and the Median is 170.3
SD is 9.4 IQR is IQR = Q3 - Q1 = 177.8−163 = 14
If we say unusual is within 1 SD, then the range of usual is 161.7 - 180.5 180 cm is not unusual and 155cm is unusual.
No, I would think they would deviate a bit becuase each random sample could bring out a variety of point estimates.
SE = sSD/sqrt(sampleSize)
0.4174687
Q# 4.14 Thanksgiving spending, Part I.
The 2009 holiday retail season, which kicked off on November 27, 2009 (the day after Thanksgiving), had been marked by somewhat lower self-reported consumer spending than was seen during the comparable period in 2008. To get an estimate of consumer spending, 436 randomly sampled American adults were surveyed. Daily consumer spending for the six-day period after Thanksgiving, spanning the Black Friday weekend and Cyber Monday, averaged $84.71. A 95% confidence interval based on this sample is ($80.31, $89.11). Determine whether the following statements are true or false, and explain your reasoning.
FALSE: We are 100% confident that the average spending of 436 American Adults is between 80-90.
FALSE: If the sample size was lower than 30, this would be a problem; however our sample size is 436.
FALSE : The CI is constructed from our sample mean, we can not induce the same interval from a different sample mean.
TRUE : This is what confidence intervals are supposed to tell us in the first place.
TRUE : A 90% confidence interval is narrower, because when we do not need to be as confident in our answer, we can afford to be a bit more specific.
FALSE : We have to remember that the formula calls for the square root of the sample size, therefore 3^2
TRUE:
89.11-80.31
## [1] 8.8
89.11-4.4
## [1] 84.71
Q# 4.24 Gifted children, Part I
Researchers investigating characteristics of gifted children collected data from schools in a large city on a random sample of thirty-six children who were identified as gifted children soon after they reached the age of four. The following histogram shows the distribution of the ages (in months) at which these children first counted to 10 successfully. Also provided are some sample statistics.
Yes, every observation is independent.
Ho = Mean of gifted children’s age is 32months to count 10. Ha = Mean of gifted children’s age is less than 32months to count 10.
mean = 30.69
sd = 4.31
SE= sd/sqrt(36)
1-pnorm(32,mean = 30.69, sd=SE)
## [1] 0.0341013
Answer: Essentially, there’s a 0.034 chance that the age would be more than 32 among gifted children if the mean is 32. We would reject the null hypothesis for significance level of 0.1, and alternate hypothesis is still plausible.
The p-value is 0.034 which is much smaller than 0.1. This shows that null hypothesis very unlikely and shows strong evidence for alternate hypothesis.
Z=qnorm(0.95)
mean + Z*SE
## [1] 31.87155
mean - Z*SE
## [1] 29.50845
The range is between 31.87 to 29.51
Yes, the upper bound of 31.87 shows that there’s only 5% chance that the mean is greater than 31.87. This is similar to saying that to beat 32, which is big stronger constraint, there’s only 3.4% chance.
Q# 4.26 Gifted children, Part II.
Exercise 4.24 describes a study on gifted children. In this study, along with variables on the children, the researchers also collected data on the mother’s and father’s IQ of the 36 randomly sampled gifted children. The histogram below shows the distribution of mother’s IQ. Also provided are some sample statistics.
mean = 118.2
sd = 6.5
SE= sd/sqrt(36)
pnorm(100,mean = 118.2, sd=SE)
## [1] 1.22022e-63
The chance that the average of mom’s IQ of gifted children is practically zero. This easily beats 0.1 significance level.
Z=qnorm(0.95)
mean + Z*SE
## [1] 119.9819
mean - Z*SE
## [1] 116.4181
Range: between 116 and 120
Q# 4.34 CLT
Define the term “sampling distribution” of the mean, and describe how the shape, center, and spread of the sampling distribution of the mean change as sample size increases.
Sampling distribution of the mean consists of number of means measured based on numerous samples of the same size. As the sample size increases, the shape becomes more normal, center remains the same (as long as the size is sufficient), and spread becomes narrower.
Q# 4.40 CFLBs
A manufacturer of compact fluorescent light bulbs advertises that the distribution of the lifespans of these light bulbs is nearly normal with a mean of 9,000 hours and a standard deviation of 1,000 hours.
6.6%.
1-pnorm(10500,9000,1000)
## [1] 0.0668072
1000/sqrt(15)
## [1] 258.1989
The mean should be around 9000, and the stand deviation should be around 258. It should follow normal distribution.
Basically, zero.
1-pnorm(10500,9000,258)
## [1] 3.050719e-09
x = 7000:11000
y = dnorm(x,mean=9000,sd=1000)
X = 7000:11000
Y = dnorm(X,mean = 9000,sd=258)
plot(x,y)
plot(X,Y)
It will be difficult, would need 30 or more sample size.
Q# 4.48 Same observation, different sample size.
Suppose you conduct a hypothesis test based on a sample where the sample size is n = 50, and arrive at a p-value of 0.08. You then refer back to your notes and discover that you made a careless mistake, the sample size should have been n = 500. Will your p-value increase, decrease, or stay the same? Explain
I would say that the P-value will decrease since a larger sample size will cause a smaller Standard Error