Guide to using the learning objectives


Learning Objectives for Chapter Nine – The Simple Experiment

 

 

Pages 243-254

 

1.   Define1 simple experiment. Define1 independent random assignment. Explain2 why independent random assignment enables researchers to use the simple experiment to make cause-effect statements.

2.   Compare4 and contrast4 the following:

a.   Experimental hypotheses and hypotheses that do not postulate a cause-effect relationship.

b.   Experimental hypothesis and null hypothesis

3.   State1 what conclusions can be drawn when

a.   The null hypothesis is rejected

b.   The null hypothesis is not rejected

4.   Distinguish4 between

a.   Independent variable and dependent variable

b.   Control group and experimental group

5.   Explain2 the implications of the need to keep observations independent on 

a.   How participants are selected, and

b.   How participants are treated.

6.   Explain2 why the need for random assignment means that some hypotheses cannot be tested in a simple experiment.

7.   Distinguish4 between what statistically significant results mean and what they do not necessarily mean.

8.   Explain2 why null results do not prove the null hypothesis.

 

 

Pages 254-261

 

9.   Define1 Type I error, describe2 what can be done to reduce the risk of making Type I errors, and explain2 the tradeoff involved in trying to reduce Type I errors.

10.                 Define1 Type II error. Define power. Then, discuss2 the relationship between Type II error and power. Finally, contrast4 Type II errors with Type I errors.

11.                 Explain2 why reducing the extent to which random error affects your study will not reduce your risk of making a Type I error.

12.                 Explain2 why reducing the extent to which random error affects your study will reduce your risk of making a Type II error.

13.                 Describe2 how the risk of Type II errors can be reduced. In your answer, be sure to address steps that will (a) reduce random error, (b) allow random error to balance out, and (c) allow the effect to be detected even when there is a lot of random error in your data.

 

 

Pages 261-264

 

14.                 Explain2 how steps you take to increase your experiment’s power could harm your experiment’s external validity. Then, explain2 how steps you take to increase your experiment’s external validity could harm your experiment’s power.

15.                 Explain2 how using placebo treatments and double-blind procedures could improve the construct validity of a simple experiment.

16.                 Explain2 how steps you take to increase your experiment’s power could harm your experiment’s construct validity. Then, explain2 how steps you take to increase your experiment’s construct validity could harm the experiment’s power.

17.                 Explain2 how steps you take to make your experiment more ethical could harm the experiment’s power. Then, explain2 how steps you take to increase your experiment’s power could make your experiment less ethical.

18.                 Rank6 the following in how important they should be in designing a simple experiment: construct validity, ethics, external validity, and power. Justify6 your rankings.

 

Pages 264-272

 

 

19.                 Defend4 the following comment: “The average score of the experimental group is an estimate of what the average score would have been had all your participants received the treatment.”

20.                 Explain2 why the following statement is true: “The mean for the treatment group could be higher than the mean for the no-treatment group even if the treatment had no effect.”

21.                 Examine4 why, in the simple experiment, each of the following is true:

a.   random error causes scores within each group to differ from one another.

b.   random error may cause the experimental group means to differ from the control group mean.

22.                 The means of your experimental and control groups differ.  Outline3 the factors that a statistical test would use to determine whether the difference between the means is large enough to be due to the treatment rather than to chance alone. Examine4 the role of the following in your answer:

a.   The size of the difference between your two group means,

b.   The amount of variability within each of your groups, and

c.    The number of participants in each of your groups.

23.                 Choose1 which of the following experiments illustrates a difference between the experimental and control groups that is most likely to be due to more than chance alone. Defend4 your choice.

 

Experiment A                         Experiment B

 

Control           Experimental               Control       Experimental

4                         8                                  8                12    

5                         10                                10              15    

6                         10                                12              16    

3                         10                                6                13

4                         14                                8                18

5                         16                                10              21

 

 

Pages 272-276

 

24.                 State1 the basic idea behind the t test.

25.                 You find the following on a computer printout of a t test analysis:  df = 12, t = 5, p <.05, treatment group mean = 11, control group mean = 1, standard error of the difference between means = 2.”

a.   Determine3 the number of scores the computer analyzed.

b.   Determine3 whether the results were statistically significant.

c.    Show3 the numerator (top part) and the denominator (bottom part) of the t ratio.

d.   Compute3 an index of effect size (see Box 9-2). Using  the effect size you calculated, assess6 whether the treatment had a large, medium, or small effect.

 

26.                 Referring to the concept of effect size, explain2 the difference between statistical significance and practical significance (having an important effect).

 

Box 9-3 (pages 277-82)

 

27.                 List1 the three general types of replies that advocates of statistical significance testing use in response to attacks on significance testing. Defend6 the statement: “Psychologists should continue to use statistical significance testing.”

28.                 List1 three objections to statistical significance. Rank6 them in terms of how serious you think they are. Justify6 your rankings. Defend6 the statement: “Psychologists should no longer use statistical significance testing.”

 

 

Pages 276, 283-285

 

29.                 List1 the two most essential assumptions that must be met to compute a meaningful t test.

30.                 List1 two less serious assumptions of the t test. Then, explain2 why these assumptions are usually not a threat to conducting a meaningful t test. In your answer, be sure to refer to the central limit theorem.

31.                 List1 six questions to ask when results of your simple experiment are not statistically significant.

32.                 List1 two questions to ask when results of your simple experiment are significant.

 

 

 


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