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State vs Trait Constructs

State vs Trait

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State vs Trait. Constructs. Project question 4. Does your test measure a state or a trait?. Criterion vs Norm referenced. Criterion reference = compares to established standard, well defined objectives Norm referenced = compares each score to other scores, relative. Norms. - PowerPoint PPT Presentation

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Page 1: State vs Trait

State vs Trait

Constructs

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Project question 4

Does your test measure a state or a trait?

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Criterion vs Norm referenced

Criterion reference = compares to established standard, well defined objectives

Norm referenced = compares each score to other scores, relative

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Norms

Types of norms?????

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Project question 5

What sort of norms would be appropriate to collect to standardize your measure?

Why did you select those norms?

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Sampling

Random Stratified Purposive Incidental/convenience

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Correlations

NOT causal relationship between variables predictive

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Scatterplot

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Positive Correlation

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Negative Correlation

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No correlation

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Correlation values

-1 to +1.56, -.45, -.09, .89, -.93

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correlation for AB/IE = -0.11

0

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16

0 5 10 15 20

IE/AB correlation

AB

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Appropriate Correlations

1 - data must be linear not curvilinear (determine by scatterplot)

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Curvilinear

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Appropriate Correlation to use

1 – linear data2 - type of scale

interval (or ratio) = Pearson rordinal = Spearman rho

3 - number of subjectsmore than 30 = Pearsonfewer than 30 = Spearman

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Decision TreeLinear

No = no corr yes = corr Scale

ordinal = rho interval = r number

< 30 = rho > 30 = r

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Project question #6

Which correlation formula would you use when correlating the scores from your measure with another variable?

Why would you use that formula?

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Multiple correlations

Correlations between more than one variable done at the same time.

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Multiple regression

Relationship between more variables Uses specific predictor and criterion

variables Looks at relationships between predictors Can factor out partial relationships

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Multiple regression - example

Grad school grade performance = criterion (or outcome)

Predictor variables = undergrad GPA = GRE scores = Quality of statement of purpose

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Multiple regression data

Predictor Beta (=r) significance (p)

GPA .80 .01GRE .55 .05statement .20 .20

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Multiple regression – example 2

Predictor variables = Metacognition, Locus of Control, Learning Style

Criterion variable = academic performance (grade)

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Multiple regression data

Predictor Beta (=r) significance (p)

Meta. .75 .01LofC .65 .05L.S. .32 .15

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