chapter 9 words
chapter 10 words
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Significance level:

The risk associated with not being
100% positive that what occurred in the experiment is a result of what is being tested.

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Computing the Z-Test Statistic

z= mean of the sample - mean of the population divided by standard error of the mean

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Statistical significance

The degree of risk you are
willing to take that you will reject a null hypothesis
when it is actually true.

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interpret z = 2.38, p < .05

– z represents the test statistic used.
– 2.38 is the obtained value (from the formula).
– p < .05 indicates that the probability that the results occurred randomly are less than 5% and are
therefore statistically significant

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Type I Errors

-The probability of rejecting a null hypothesis when it is
true.
- Conventional levels are set between .01 and .05.
- Usually represented in a report as p < .05.

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Computing the Standard Error of the
Mean

sem=the standard deviation for the population divided by the size of the sample

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How Inference Works

-Step 1: Select representative samples.
-Step 2: Collect the relevant data.
-Step 3: Reach a conclusion as to whether the
difference between the scores is the result of chance.
-Step 4: Reach a conclusion that applies to the whole population based on the finding within the samples.

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A small effect size ranges from

0.0 to .20.

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How to Select Which Test to Use

• On the next slide, you will see a cheat sheet on how to
select which test to use.
• Start by answering the questions at the top of the
flowchart.
• Proceed down the chart by answering each of the
questions until you get to the end of the chart.

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A large effect size is any value 

above .50.

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