Studio 8 ---------------------------- Topics: T-tests, rejection regions R: coding --------------------------- Before class: 1. Post studio8.zip containing: studio8-sol.r (there is no studio8.r) 2. Students should download this zip file and unzip it in their 18.05 R directory. --------------------------- For class: 1. Use studio8-slides.pdf 2. Follow class script below. --------------------------- After class: 1. Post studio8-slides-all.pdf --------------------------- Class script Slide 1: Everyone should have downloaded and unzipped studio6.zip Slides 2-4: Problem 1: Poll of heights -- divide the room into left and right halves -- for each half, collect the height of each person -- while the class works problem 1 a staff member should compute the size, mean and variance of each group. DISCUSSION: -- Ask for arguments for and against the mean heights being the same. What if we divided by athletes vs non-athletes? -- Show slides 3,4 --no need to dwell on them, but spend a minute on the answers in 1c. The point is that all the tests make assumptions that must be justified by argument or other testing. Slide 5: Problem 2: Students code and run the tests in R. Code is in studio8-sol.r --The code has previous data. While they work someone should input the current data and run the code to see the answers. --The output of the code is prettiest if you source the file without echo. --They will have studio8-sol.r ahead of time, but discourage peeking. --For groups having trouble you can point them to the code. DISCUSSION: --It shouldn't be necessary to walk through the code. Remind them that the answers will be posted in studio8-sol.r. --Talk about p = 2*pt(-abs(t),df) --Source the file and show them the output for problem 2 Slide 6 (paused slide with 2 parts): Binomial rejection regions --Either walk through choosing the region -- as close as possible to 0.05 on each side -- or do it as a class discussion --Show part 2 of the slide with the region highlighted --Point out the the region is a range of values of x. --NOTE: there are different algorithms for choosing. The only strict requirement is that the prob. of the rej. region is < or = alpha. (In class 23 we'll choose by always taking the next smallest available probability.) THIS IS PROBABLY NOT WORTH talking about at this point. Slide 7: Off-by-one errors The goal here is to explain the need for fiddly plus or minus 1's in the R code. Have them write the answers down. Then do the examples as call and response Ask about easy to make errors. DISCUSSION: --What we mean by off-by-one errors. Slide 8: (paused slide with 2 parts): Problem 3. Binomial rej. regions using R -- Have them work. -- Push them to use R to check the probabilities using dbinom and/or pbinom -- SHOW part 2 of slide 8 with the rejection region. -- Show the output of the studio8-sol.r ** Explain what wide.left and wide.right are. -- Remind class that answers are in studio8-sol.r -- If it seems useful show them some of the code. Slide 9: Problem 4: Left-handedness Might not have time for this -- Have all lefties raise hands. Count them. We already know the number of people in the room from the class heights problem -- Have them use the data to do a one-sample test. DISCUSSION: --we'll probably run out of time for this Show output of studio8-sol.r 4(a) Can do an exact binomial test --rej. region like in problem 3 Point out can do a z-test assuming normality Show output and MAYBE source code 4(b) Assume sample is representative of MIT. --point out figure. 4(c) Similar to (a)