Two way ANOVA Flashcards

1
Q

What is a two way ANOVA often called?

A

Factorial ANOVA

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2
Q

Why is it called a factorial anova?

A

Two IV’s (or factors, or grouping variables, or treatments)

e.g. Ability and teaching method.

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3
Q

What are the advantages of using a Two-way ANOVA?

A
  1. Can examine the joint (interactive) effect of the IV’s on the DV.
  2. Increase power by decreasing variance with in cells of the matrix.
  3. The economy of subjects: need only half as many subjects to do 2-way ANOVA than you would need for two 1-way ANOVA to get the same information.
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4
Q

Referring to the first advantage of the 2-way ANOVA, what are the two types of joint interactions?

A

a) Ordinal interaction

b) disordinal interaction.

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5
Q

What is an ordinal interaction?

A

Magnitude of the differences changes but one sub-group is always higher than another.

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6
Q

What is a disordinal interaction?

A

One treatment is best with one group, but another treatment is better for a different group.

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7
Q

What are the sources of variability in a 2-way ANOVA?

A
  1. Variability due to factor A => main effect A
  2. Variability due to factor B => main effect B
  3. Variability due to the interaction => AxB interaction
  4. Unsystematic variability (ID’s, random error) => error
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8
Q

State the null hypotheses for main effect A, Main effect B, and AxB interaction

A

Main effect A: H0: Mu1. = Mu2. = Mu3. = … = Mua.
Population row means are equal

Main effect B: H0: Mu.1 = Mu.2 = Mu.3 = … = Mu.b
Population column means are equal

AxB interaction:
H0: All phiab = 0
All the interactions equal zero, or all interactions are zero.

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9
Q

What is an individual raw score made up of?

A

The general effect + main effect A + main effect B + our interaction + error.

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10
Q

What is an individual raw score made up of?

A

The general effect + main effect A + main effect B + our interaction + error.
This is our linear model.

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11
Q

What is Phicarrotab?

A

That part of the cell mean that CAN NOT be accounted for by the grand mean (over all effect) And the main effect for A & B.

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12
Q

What is Phicarrotab?

A

That part of the cell mean that CAN NOT be accounted for by the grand mean (over all effect) And the main effect for A & B. i.e. the interaction effect.
The interaction effect is NOT the same as the error effect.

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13
Q

What does the interaction effect of for every row and column equal when added together?

A

Zero.

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14
Q

Give the flow chart

A
  1. Look at your interaction FIRST
    - If the interaction is significant you can not interpret the main effects of A & B (PERIOD)
    - You have to further analyze and interpret the interaction.
  2. If the interaction is non-significant then look at your main effects
    - Is the main effect for A significant?
    - Is the main effect for B significant?
    (Talk about A&B seperately, talk like you did a one way ANOVA on A, and a one way ANOVA on B.
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15
Q

What is your design has equal n in all cells?

A

a balanced design.

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16
Q

What is your design called if you have unequal n in your cells?

A

an unbalanced design

17
Q

In the equation for main effects (either a or b), why do we multiply the levels of a or b by n?

A

Because it is the number of observations on which each row Ybar is based.