PCA stands for [blank_start]________[blank_end] [blank_start]________[blank_end] [blank_start]________[blank_end].
Answer
Principle
Principal
Parametric
Post-hoc
Component
Components
Correlate
Correlates
Criterion
Criteria
Analysis
Analyses
Asshole
Arsehole
Array
Arrays
Question 2
Question
CCA stands for [blank_start]________[blank_end] [blank_start]________[blank_end] [blank_start]________[blank_end].
Answer
Canonical
Correlate
Correlation
Correlates
Correlations
Component
Components
Canonical
Component
Components
Correlate
Correlation
Correlates
Correlations
Criterion
Criteria
Analyses
Analysis
Question 3
Question
The term representing the amount of original variance explained by a new derived variable is:
Answer
Eigenvalue
Eigenvector
Eigenvalues
Eigenvectors
Question 4
Question
The term representing weights showing how much each original variable contributes to each newly derived variable is:
Answer
Eigenvalue
Eigenvector
Eigenvalues
Eigenvectors
Question 5
Question
The following information about PCA is True or False:
First principal component – the vector on which the most data variation can be projected.
Second principal component – vector perpendicular to the first, chosen so it contains as much of the remaining variation as possible.
Answer
True
False
Question 6
Question
The following information about PCA is True or False:
First principal component – the vector on which the most data variation can be projected.
Second principal component – Second best possible vector, chosen to account as much variation as possible, but less good fit than the First.
Answer
True
False
Question 7
Question
When to use PCA:
You have a set of ‘p’ [blank_start]____________[blank_end] variables.
You want to repackage their variance into ‘m’ components.
You want ‘m’ to be [blank_start]____[blank_end] ‘p’.
Each component could/should/might explain different things.
Answer
continuous
class
nominal
explanatory
<
≤ (<=)
>
≥ (>=)
==
Question 8
Question
Covariance or Correlation Matrix.
If units of x and y are different, use a [blank_start]____________[blank_end] matrix (as it standardises the units).
If units of x and y are the same (e.g. temperature) or with similar orders of magnitude, use a [blank_start]____________[blank_end] matrix (although you may need to standardise units).
Answer
correlation
covariance
similarity
dissimilarity
Question 9
Question
In regards to the scree plot, a component with eigenvalue < 1 captured less than what?
Answer
1 variable’s worth of variance
1% of the total variance
1 average component's worth of variance
1% of the (1st) principal component's variance
Question 10
Question
Rotations, orthogonal vs oblique.
Varimax is an example of [blank_start]____________[blank_end], meaning it [blank_start]________[blank_end] allow for factors to correlate.