Off Brand vs Name Brand Results

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Off Brand vs Name Brand Results

Blocking Latin Square Design: this design is used to eliminate two (2) nuisance sources of variability. In the picture, the researcher has blocked in two direction. Vertically to eliminate the affect of elevation and horizontally to eliminate the affect of prevailing winds and weather.

Blocking is a design technique used to improve the precision with which comparisons among the factors of interest are made. Blocking is often used to reduce or eliminate variability from nuisance factors that may influence the experimental response but are factors with of no interest.

When to Block? Blocking is not always the best design. If the within-block variability is the same as the between-block variability, then blocking is a poor choice. If we think that there is a nuisance factor that will cause variability (and we want to reduce variability to be more accurate) then blocking is a good choice.

How to Block? Make blocks (groups) of experimental units that are known before the experiment to be similar in some way. Random assignment of treatments is carried out within each block. How did you block in our Name Brand vs. Generic experiment? What would we have discovered if we had not blocked?

Blocks are another form of control. Your book states that the principles of experimental design are CONTROL, REPLICATION, AND RANDOMIZATION. Other books state that the principles of experimental design are BLOCKING, REPLICATION, AND RANDOMIZATION.

Give it a try! Four new word-processing software programs are to be compared by measuring the speed with which various standard tasks can be completed. Discuss how you would design an experiment using blocking and without blocking. Compare the two designs. Discuss the within-block variability and the between-block variability and the variability within the design not blocked.

Matched Pairs Designs Matched Pairs Designs compares just two treatments with subjects that are matched based on similarities. Later in the year we will study the math of this design and understand why this is a much more ‘powerful’ design.

Past AP Test Questions Fruit Trees Homework: Pages 384-385 II. 1, II Past AP Test Questions Fruit Trees Homework: Pages 384-385 II.1, II.2, II.5, II.9 Read Chapter 5!!!

II. 1 (a) Yes—the researchers used double blinding in this experiment II.1 (a) Yes—the researchers used double blinding in this experiment. Since the subjects did not know what kind of toothpaste they were using (unmarked tubes were used) and the dentists did not know which subjects were using which toothpaste, both groups were blind as to which group each subject was in. (b) The researchers gave all of the volunteers a free tooth cleaning so that the volunteers’ teeth would all be free of tartar buildup at the beginning of the study. (c) Suppose the researchers believe that men’s and women’s dental hygiene habits differ systematically. For instance, maybe women tend to brush more frequently and more thoroughly than men do. Then the researchers could block the volunteers by gender. They should randomly assign 60 men to the tartar control group and 60 men to the regular toothpaste group. For the women, 45 would be randomly assigned to the tartar control group and 45 to the regular toothpaste group. Blocking in this way would isolate the unwanted variability due to gender differences in dental hygiene that is present in the completely randomized design.

II.2 (a) A potential source of bias related to the question wording is that people may not remember how many movies they watched in a movie theater in the past year. It might help the polling organization to shorten the amount of time that they ask about, perhaps 3 or 6 months. (b) A potential source of bias not related to the question wording is that the poll contacted people through “residential phone numbers.” Since more and more people (especially younger adults) are using only a cellular phone (and do not have a residential phone), the poll omitted these people from the sampling frame. These same people might be more likely to watch movies in a movie theater. The polling organization should include cell phone numbers in their list of possible numbers to call.

II.5 (a) Each customer will taste both the “Mocha Frappuccino Light” and the regular version of this coffee. The order in which the customer tastes the two products will be randomized. Between tastings, each customer will drink water for a “wash out” period. We can make this study double-blind if the customers are given the two types of coffee in unmarked cups. This way neither the customers nor the people serving the coffee know which type of coffee is in which cup. (b) We label each customer using labels 01, 02, 03, …, 40. We enter the partial table of random digits and read two-digit groups. The labels 00 and 41 to 99 are not used in this example, so we ignore them. We also ignore any repeats of a label, since that customer has already been assigned to a group. The first 20 customers selected will receive “Mocha Frappuccino Light” first. The remaining 20 customers will receive the regular version first. Here, we pick only the first 3 in the “Mocha Frappuccino Light” first group. The first two-digit group is 07, so the customer with label 07 is in the “Mocha Frappuccino Light” first group. The second two-digit group is 51, which we ignore. The third two-digit group is 18, so the customer with label 18 is in the “Mocha Frappuccino Light” first group. The fourth two-digit group is 89, which we ignore. The fifth two-digit group is 15, so the customer with label 15 is in the “Mocha Frappuccino Light” first group. Thus, the first three customers in the “Mocha Frappuccino Light” first group are those customers with labels 07, 18, and 15. (c) No. Using a matched pairs design gives us an advantage over the completely randomized design. The advantage is that we can compare how each customer rates the new and regular coffee. Since each customer tastes both types of coffee, we can say which one the customer prefers and then look at the proportion of these customers who prefer the new coffee drink. A completely randomized design would not take advantage of this natural comparison due to pairing.

II.9 (a) In observational studies, the subjects “self-select” into the groups being observed. In experiments, the subjects are randomly assigned to treatment groups. We can show cause and effect with experiments, but not with observational studies. (b) A “randomized controlled trial” is one where subjects are randomized into treatment groups and a control group receiving an alternative treatment (possibly a placebo or dummy treatment) is used so that treatment effectiveness can be compared. (c) “Healthy user bias” means that the people who supplement with vitamin E might also do other things that contribute to their general health that might lessen the risk of heart disease. In an observational study, we cannot separate out this “healthy user bias” from the effect of vitamin E on the risk of heart disease. But, in a randomized controlled experiment, the randomization spreads the “healthy user bias” out among the treatment groups so it is not a factor we must consider.