Inferential Statistics Flashcards

1
Q

What is the purpose of a Pearson product moment correlation?

A
  • Measures: linear association between two variables
  • Measures of: covariance (how variables change together)
  • Tests for a statistically significant relationship between two interval/ratio variables
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2
Q

Example of Pearson product moment correlation Hypothesis:

A

• Ex: Is there a relationship between time students spend texting during the exam and their grade?

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2
Q

What is a type I error?

A

The chance of falsely rejecting a true null

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3
Q

What has to be true of the data (assumptions) in order for a correlation to work properly?

A
  • Independent random pairs of cases
  • Interval/ratio variables
  • Normal distribution
  • Bivariate normal distribution (pairs of xy – must be normal on distribution)
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3
Q

What is a type II error?

A

The chance of mistakenly rejecting a true null.

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4
Q

How do you interpret the magnitude of a correlation coefficient (r)?

A

• Closer (r) is to 1 or -1, STRONGER it is

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4
Q

How much of a type I error should researchers allow a communication study to have?

A

5% or less

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5
Q

How do you interpret the direction of a correlation coefficient (r)?

A
  • Sign of (r) determines inverse or direct
  • (-) inverse
  • (+) direct
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5
Q

How much of a type II error should researchers allow a communication study to have?

A

20% or less

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6
Q

What is an effect size?

A

• % of shared variance between x and y variables

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6
Q

In inferential statistics, what is the difference between systematic and error variance?

A

Systematic = true group differencesError Variance = chance differences between groups

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7
Q

How is effect size calculated?

A

r^2 (r-squared)

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7
Q

What is the purpose of an independent samples t-test?

A

To test for a statistically significant difference between the means of two independent groups

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8
Q

Correlation v. Causation

A

• Correlation does not = Causation

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8
Q

What is an example of a hypothesis that a independent samples t-test could be used to test?

A

Students who have taken speech class will be better speakers than students who have not taken speech class.

H1: Mu class> Mu no class

H0: Mu class= Mu no class

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9
Q

3 conditions of Causation:

A
  • Time: (IV) must precede (DV)
  • Covariance: IV and DV must go together in meaningful way
  • Control: Changes in DV must be caused by changes in IV, not some other variable
9
Q

What must be true of the data (assumptions) in order for an independent samples t-test to work properly?

A
  1. Independent Random Sample
  2. Interval or Ratio dependent variable
  3. Normal Distribution
  4. Homogeneity of Variance
10
Q

May be correlated because…

A
  • Y causes X (opp. direction)
  • X causes Y which causes X (non-recursive)
  • 3rd Z factor • Coincidence: spurious relationship
11
Q

If a researcher mistakenly concludes there is a significant difference or relationship, what type of error has been committed?

A

Type I Error

12
Q

What is a “normal” distribution?

A

A distribution (histogram) with no skew or kurtosis

  • Symmetrical (the right and left halves look the same)
  • Mesokuric (not too peaked or flat)
  • Perfect bell-shaped curve
13
Q

True or False?

There is a strong positive correlation between the amount of birthday cake a person has eaten and near-sightedness.

Therefore, eating cake causes poor eye sight.

A

False

Correlation does not equal causation.

Being old probably causes both. Older people have had more birthdays and tend to have near-sightedness. (Third factor z)