13. Assessing Relationships 2 Flashcards

1
Q

measure (or questionnaire) consistently reflects the construct it’s measuring

A

reliability

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2
Q

most common measure of reliability

A

Chronbach’s alpha

useful with questionnaires

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3
Q

Chronbach’s alpha scores

A

should be .7 to .8 for test retest reliability

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4
Q

ICC

A

measures relationship between 2+ variables that measure the same thing

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5
Q

Measurements ICC can be used with

A
  • single measurement

- mean of several measurement

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6
Q

ICC can be used to assess:

A
  • inter-rater reliability

- intra-rater reliability

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7
Q

3 models of ICC: model 1

A

each subject assessed by different set of raters

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8
Q

3 models of ICC: model 2

A
  • each subject assessed by same set of raters

- raters are representative of the population

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9
Q

3 models of ICC: model 3

A
  • each subject assessed by same set of raters

- raters only reliable for their own study

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10
Q

Which ICC model is least common?

A

model 1

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11
Q

When is regression used?

A

when you’re trying to predict an outcome (or DV)

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12
Q

variables used to predict the outcome

A

predictor variables (or IV)

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13
Q

Where do predictor variables come from?

A

previous research

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14
Q

types of regression

A
  • simple linear
  • multiple linear
  • logistic
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15
Q

1 IV

1 categorical DV

A

logistic regression

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16
Q

1 IV

1 continuous DV

A

simple linear regression

17
Q

> 1 IV

1 continuous DV

A

multiple linear regression

18
Q

data for regression

A

linear

19
Q

assumptions of a regression: variables

A
  • must be continuous or categorical (with only 2 categories)

- DV is continuous

20
Q

assumptions of a regression: no perfect multicollinarity

A

two or more predictor variables shouldn’t be highly correlated (i.e. IVs should be measuring different things)

21
Q

multicollinarity and simple linear regression

A

not a problem

22
Q

assumptions of a regression: confounding variables

A

predictors are uncorrelated with confounding variables

23
Q

assumptions of a regression: homoscedasticity

A
  • similar to homogeneity of variance

- variance should be equal among predictor variables

24
Q

assumptions of a regression: independence

A
  • values of outcome variable are independent

- come from a separate entry

25
Q

assumptions of a regression: linearity

A

relationship of IVs and DV is linear

26
Q

What are the assumptions of a regression?

A
  • predictor variables continuous or categorical and DV is continuous
  • no perfect multicollinarity
  • no confounding variables
  • homoscedasticity
  • independence
  • linearity
27
Q

b_1

A

slope of the line

28
Q

b_0

A

y-intercept

29
Q

What are b_1 and b_0?

A

regression coefficients

30
Q

steps to performing a regression analysis

A
  • assess the model as a whole

- assess individual predictor variables

31
Q

How to assess the model as a whole

A

goodness of fit