Midterm Revision 2 Flashcards

1
Q

What kind of variable must the IV for an ANOVA be?

A

Nominal

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2
Q

What kind of variable must the DV for an ANOVA be?

A

Quasi-continuous

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3
Q

How are quasi-continuous variables usually treated?

A

They are usually treated like continuous variables

Note - they are always all real numbers

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4
Q

What is are conditional distributions?

A

A distribution of YIX. The number of conditional distributions will depend on the sample space of X.

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5
Q

If X is a dichotomous IV and Y is a QC DC. How many conditional distributions are there for YIX?

A

Two - one for when YIX=0 and one for when YIX=1

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6
Q

What does relationship ‘type’ refer to?

A

Type -captures the functional dependencies between two variables, or more specifically, the shape of the conditional mean function E(YIX)

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7
Q

What is primary strength?

A

It captures how closely packed the points [Xi,Yi] are to the conditional mean function

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8
Q

The way in which we measure primary strength depends on what?

A

The quantitative scenario - the type of random variables

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9
Q

What is secondary strength?

A

The slope of the conditional mean function. It captures the sensitivity of Y to X, or the rate of change in Y given X.

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10
Q

If it is the case and X and Y are related (in the ANOVA scenario), how to we quantify both the primary and secondary sense of strength?

A

omega_sq= σ²A/σ²

variance in DV due to IV/total variance in DV

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11
Q

Good sentence for leading from the relationship overview into ANOVA

A

“If we are interested in conducting a formal test under this particular quantitative scenario, we may conduct an inferential test on whether the relationship is flatline or not”

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12
Q

What does the hypothesis pair for an ANOVA look like?

A

H0: μ1=μ2=μ3=…μj

H1: ~(not H0)

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13
Q

What is our aim using ANOVA technology?

A

Our aim using ANOVA technology is to make a binary decision about the relationship between a nominal IV and a QC DV.

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14
Q

What is σ²A?

A

The population variance of Factor A

It quantifies the departure of the conditional means from the grand mean.

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15
Q

a

A

the levels of the treatment Factor A

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16
Q

What does a little i usually denote?

A

The individual

17
Q

What does a little j or k usually denote?

A

The group

18
Q

Factor A

A

An IV that is categorical with a certain number of levels

19
Q

What is the conditional mean function E(YIX)

A

A line connecting the conditional means of each conditional distribution

20
Q

E(YIX)=x

A

The mean of the conditional distribution of Y given a particular level of the IV (X=x)

21
Q

We employ ANOVA technology in order to partition the total variance in the DV into two portions, what is the formula used to denote this?

A

〖SS〗_T=〖SS〗A+〖SS〗(U/A)

22
Q

SS_U/A

A

variance associated with the residual

23
Q

SS_A

A

variance associated with the factor

24
Q

MSu/A=

A

MSu/A=(SSu/A) / (∑nj-a)

~ E(MSu/A) expected MS from the chi-square sampling distribution

25
Q

MSA =

A

MSA = (SSA) / (a-1)

~ E(MSA) expected MS from the chi-square sampling distribution

26
Q

What are the 8 steps in answering an ANOVA question?

A
  1. Define a relationship
  2. State the purpose of ANOVA
  3. F ratio definition and construction (how this works at pop level)
  4. Sample ANOVA decomposition: calculate the sample level variance (sum of squares)
  5. Sample ANOVA decomposition: calculate the mean squares
  6. Sample ANOVA decomposition: estimate the expected mean squares
  7. Sample ANOVA decomposition: construct an If/Then link
  8. If we reject H0 then estimate omegaA (effect size)
27
Q

What is the distribution that the ANOVA stat comes from?

A

F(a-1)(∑nj-a)

28
Q

What is the ANOVA test statistic?

A

MSA/MSu/A

29
Q

What is the grand mean?

A

The mean of all observations divided by the total sample size