100% satisfaction guarantee Immediately available after payment Both online and in PDF No strings attached 4.6 TrustPilot
logo-home
Summary

Summary table Methodology for Marketing and Strategy Research

Rating
-
Sold
9
Pages
5
Uploaded on
28-01-2018
Written in
2017/2018

Summary table with all the methods: factor analysis, AN(C)OVA, MANOVA, Multiple regression analysis, SEM (PLS). All the useful threshold values are in there to assess SPSS output.

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
January 28, 2018
Number of pages
5
Written in
2017/2018
Type
Summary

Subjects

Content preview

Analysis
process
Factor Problem Objectives: data summarization / data reduction
analysis formulation Variables: ratio/interval, sample size 4-5 N per variable
Exploratory factor analysis Confirmatory factor analysis
Find an underlying structure A priori ideas of underlying structure
Assumptions that factors cause correlations Relationships between variables and factors
between variables. Errors uncorrelated before conducting the analysis. Errors could
correlate
Analyze correlation matrix Analyze variance-covariance matrix
Purpose: generation of hypothesis Purpose: testing of hypothesis
Constructing Useful matrix based on:
correlation - KMO measure of sampling adequacy. Does the sample represent the population? KMO
matrix above .50
- Bartlett’s test of sphericity: test H0 that variables are uncorrelated in the population.
Rejection is needed because you want correlation. Sig <0.05
Selecting Principal components analysis Common factor analysis
extraction Total variance (1,000) Common variance
method Unities Communalities
Primary concern: minimum number of Primary concern: identify the underlying
factors that will account for maximum dimensions and their common variance
variance (data reduction). Factors are (data summarization). Known as principal
principal components axis factoring.
Extraction result: factor matrix. Factor loading: correlation between variable and factor.
Minimum: around 0.5. Significant: above 0.5. Desirable: above 0.7.
Determining - A priori determination
number of - Eigenvalues > 1 (also called latent root criterion)
factors - Scree plot
- Percentage of variance (in total >0.60)
Rotating Each factor should have significant loadings for only some variables, each variable with only a
factors few, most ideal only 1. Rotation for interpretation reasons
Orthogonal rotation (Varimax) Oblique rotation (Oblimin)
Axes maintained at right angles Axes NOT maintained at right angles
Assumes factors are not correlated Assumes factors are correlated
Given objective of data reduction or Meaningfulness of corelated constructs for a
subsequent use in other analysis contexts specific context of the study
Use rotated factor matrix Use pattern matrix
If a correlation >.30, use oblique (see factor correlation matrix). However, theory is most
important!
Interpreting Factor can be interpreted in terms of the variables that load high on it
factors
Using factors - Reliability: Cronbach’s alpha: above 0.7
in other Validity:
analyses - Factor scores: composite measure created for each observation on each factor extracted in
the factor analysis
- Surrogate variables: selection of a single variable with the highest factor loading to
represent a factor in the data reduction stage
- Summated scores: method of combining several variables that measure the same concept
into a single variable to increase reliability of the measurement.
Which reduction method to select?

, Need for simplicity  surrogate variables
Replication in other studies  summated scales
esire for orthogonality of the measures  factor scores
Determining Residuals: comparing differences between observed correlations (as given in input correlation
model fit matrix) and reproduced correlations (as estimated from the factor matrix).
SPSS Cross loading: variable who has two or more factor loadings exceeding the threshold value
Orthogonal rotation  rotated factor matrix
Oblique rotation  pattern matrix
Remove variables when:
- Factor loadings: <.30
- Cross loader: if highest correlation and second highest correlation <│.20│
- Communalities after extraction >.20 (see table communalities)
AN(C)OVA Identify Independent variable: at least one is categorical (different categories), levels are independent
independent (except repeated-measure ANOVA) so called factors.
Categorical and Dependent variable: must be metrically scaled, like Likert scale.
IV + Metric dependent ANCOVA: independent variables contain both categorical (still factors) and metric variables.
DV variables Covariates are the metric independent variables, to include statistical control variables.
Decompose F= between groups/ within groups (the larger, the more different means)
ANOCAVA the total
+ Metric IV variation
Measure the Assumptions:
effects - Normality (no problem if N of each group >30)
- Independence of errors
Test the - Independent scores
significance - Sample size
- Homogeneity of variance
Interpret the Effect size: >0.01 small >0.06 medium >0.14 high
results Test of main effect hypotheses:
SPSS - H0: the group averages of the diverse groups are equal
- H1: the group averages of the diverse groups are unequal (desirable)
Test of interaction effect
- H0: no interaction effect occurs
- H1: an interaction effect occurs
Interaction effect ordinal/disordinal:
- No interaction: lines are parallel
- Ordinal: Lines don’t cross, direction of change is always the same
- Disordinal with non-crossover: direction of change differs, order is the same
- Disordinal with crossover: the order is even different
Homogeneity of variance  Levene’s test.
- H0= equal variances, so homogeneity (desired, so non significance)
- H1= unequal variances, so heterogeneity.  when group have equal sizes, it’s not harmful.
In case of unequal sizes, use Welch statistic.
Post hoc analysis:
- Games Howell: in case of heterogeneity
- Hochberg: in case of homogeneity and unequal group sizes
- Tukey: in case of homogeneity and equal group sizes
Group sizes equal or unequal  biggest N / smallest N
- Outcome <1.5 than equal group sizes
- Outcome >1.5 than unequal group sizes
$5.53
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
jbok

Get to know the seller

Seller avatar
jbok Radboud Universiteit Nijmegen
Follow You need to be logged in order to follow users or courses
Sold
9
Member since
8 year
Number of followers
7
Documents
1
Last sold
1 year 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