100% satisfaction guarantee Immediately available after payment Both online and in PDF No strings attached 4.2 TrustPilot
logo-home
Other

CAQ SPSS manual

Rating
-
Sold
4
Pages
4
Uploaded on
24-03-2024
Written in
2023/2024

This manual will lead you through the CAQ SPSS exam of Tilburg University step by step.

Institution
Course








Whoops! We can’t load your doc right now. Try again or contact support.

Written for

Institution
Study
Course

Document information

Uploaded on
March 24, 2024
Number of pages
4
Written in
2023/2024
Type
Other
Person
Unknown

Subjects

Content preview

CAQ SPSS

Principal Component Analysis (PCA)
Analyze → Dimension Reduction → Factor. Drag all variables into the window
Enable following options:
- KMO and Bartlett’s test of sphericity in Descriptive.
- Extraction menu: Principal Components and Scree Plot
- Options menu → Sorted by Size and Suppress Small Coefficients (value below 0.3)
Example:
FACTOR /VARIABLES v225 v226 v227 v228 v229 v230 v231 v232 v233 v234 v235 v236 v237 v238 v239 v240 v241 v242
/MISSING LISTWISE /ANALYSIS v225 v226 v227 v228 v229 v230 v231 v232 v233 v234 v235 v236 v237 v238 v239 v240 v241 v242
/PRINT INITIAL KMO EXTRACTION
/FORMAT SORT BLANK(.30)
/PLOT EIGEN
/CRITERIA MINEIGEN(1) ITERATE(25)
/EXTRACTION PC /ROTATION NOROTATE
/METHOD=CORRELATION.


Assumptions of PCA
Two tests that indicate suitability of our date for running PCA:
- KMO: A high value (close to 1.0) indicates that it is reasonable to run a PCA (the
higher the value, the better). A rule of thumb is that this value should be equal to at
least 0.6.
- Bartlett’s test of sphericity: When significant (e.g. p-value < 0.05), it indicates that
it is reasonable to run a PCA.

Communalities = The communality of an item is the amount of variance in that item that is
explained by all components. It is a measure of how well the components explain people’s
answers to that item.
→ You can find this in table communalities → column extraction

Eigenvalues = The eigenvalue of a component indicates how much variance is explained by
that component. The eigenvalue is equal to
the sum of the explained variance of all
items on the relevant component.
→ you can find this in table Total
Variance Explained → Column total

Component loading = component loading
represents the correlation between an item and a component. For example, if item 1 has a
component loading of 0.50 on component 1, this means that they correlate to +0.50
→ You can find this in table Component Matrix

Choosing the number of components for PCA rule of thumb
- Kaiser Guttman (Kaiser’s rule): the number of components that should be chosen
is equal to the number of components with an eigenvalue >1.
- Based on scree plot: elbow point; ook for an abrupt change in the slope, known as
the elbow point, and choose the number of principal components before that point.
$6.38
Get access to the full document:

100% satisfaction guarantee
Immediately available after payment
Both online and in PDF
No strings attached

Get to know the seller
Seller avatar
sergevingerhoeds

Get to know the seller

Seller avatar
sergevingerhoeds Tilburg University
Follow You need to be logged in order to follow users or courses
Sold
4
Member since
1 year
Number of followers
1
Documents
1
Last sold
5 months ago

0.0

0 reviews

5
0
4
0
3
0
2
0
1
0

Recently viewed by you

Why students choose Stuvia

Created by fellow students, verified by reviews

Quality you can trust: written by students who passed their tests and reviewed by others who've used these notes.

Didn't get what you expected? Choose another document

No worries! You can instantly pick a different document that better fits what you're looking for.

Pay as you like, start learning right away

No subscription, no commitments. Pay the way you're used to via credit card and download your PDF document instantly.

Student with book image

“Bought, downloaded, and aced it. It really can be that simple.”

Alisha Student

Frequently asked questions