Chapter 9 - Final Flashcards
Experimental Designs
- Experiments
- Quasi-experiments
- Non-experiments
Types of Variables
- Independent (IV)
- Dependent (DV)
- Random - likely with random techniques, we hope they will even out
- Control - might affect our results, however,
awareness of them can mitigate their effects. - Extraneous (Disturbance) -
a. Confounding or intervening variables
i. not found until the study is in process and unable to control
ii. usually difference between the levels of IV other than DV - Moderator or Mediator -
a. Moderators affect the strength of the effect
b. Mediators (intervening variables) get in the way of effects
Types of Variation
- Non-systematic - Error (Noise)
- Systematic - Treatment (variation due to IV)
- Confounds & Artifacts - variation due to variables other than IV
Examples: Demand Characteristics, Response
sets, Bias, Threats to Internal Validity
Null Hypothesis
The alternate hypothesis (either reject or fail to reject)
H1(Hypothesis)
H0(Null Hypothesis)
Reject H0 Null Hypothesis
The significant effect found, therefore we reject the null hypothesis
Fail to reject H0 Null Hypothesis
No effect found (Not significant), therefore we fail to reject the null hypothesis
Type I Error
False Positive [found something that is not there]
specify how vulnerable you will be choosing your significance level
(p < .05 means, p < .01 means, p < 0?)
Type II Error
False Negative [failed to find something that is there]
To reduce the likelihood of Type II error,
a. reduce random error
i. use reliable measures and standardized procedures
ii. carefully code data
iii. use a homogenous group of participants
Examples of changing your alpha
- lowering for risk of drugs that work
- raising for safety claims (anything that is an potential risk)
Power
Probability of rejecting the null hypothesis
When it is false, increase by lowering the Beta and increasing the probability that you are not rejecting the null hypothesis.
a. If B is too high, power is low
b. if B is too low, power is high
Power = 1-Beta
Trade-offs between Type I and II errors
- Overlooked effects, “Mirages,” Making false claims
- Risks of convicting an innocent person vs. letting off a guilty person
- Burglar Alarms