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Marketing Research Methods Summary - Rijksuniversiteit Groningen

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Compact summary for the course Marketing Research Methods for the Msc Marketing Management at the university of Groningen

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Voorbeeld van de inhoud

Tentamenstof Marketing Research Methods
Week 1 - experimental design & data preparation
Academic research
Academic research = studying a subject in detail to discover new information or reach a
new understanding → producing new knowledge
→ follows a logical “hourglass” structure, starting broad, narrowing down to data collection
and analysis, then broadening again for discussion

The research flow
Problem (action-oriented) → RQ (information-oriented) → literature (theoretical background)
→ conceptual model (structured overview) → propositions (qualitative) or hypotheses
(quantitative)

Conceptualization = drawing boundaries around terms to make them tangible and
measurable to remove vagueness and ambiguity
→ conceptual model defines relationship between key constructs
1.​ Concepts and dimensions = what you measure
2.​ Relations between them:
-​ Dependent/independent variable
-​ Antecedents/outcomes
-​ Moderating variable = change the strength/direction of X → Y
-​ Mediating variables = explain why X affects Y (the underlying process)

Operationalization = translating a concept into something measurable to make abstract
concepts measurable and allow replication across studies (define how variables are
quantitatively measured, using existing validated scales and indicators)

Measurement level = determines which statistical test can be used
1.​ Nominal = labels and tags with no order
2.​ Ordinal = Ordering categories with direction
3.​ Interval = equal distance between categories, but no true zero
4.​ Ratio = all interval scale properties with a true zero point

Experimental research design
Research design types
-​ Exploratory = discover ideas and insights → interviews, qualitative methods
-​ Descriptive = describe market characteristics → surveys, panels
-​ Causal = determine cause-effect relationship → experiments
Causality conditions
1.​ Concomitant variation = X and Y vary together with no third variable
correlated

, 2.​ Time order = X precedes Y, must happen before the effect
3.​ Absence of other causes = control for alternative explanations (achieved via
random assignment)

Experiments = manipulation of one or more IVs and measurement of their effect on one or
more DVs while controlling all other variables
→ strong causal inference, but low external validity
1.​ What IVs (manipulations) will be used, and how?
2.​ How will we measure the DVs?
3.​ How will we control extraneous variables?
4.​ Who are the test units (participants)?
5.​ Will we use a within-subjects or between-subjects design?

Experimental design
1.​ Within-subjects design = repeated measures; each participant experiences all levels
of the IV
→ controls for individual differences, increases statistical power and requires fewer
participants, but threats to validity (maturation and instrumentation effects)
2.​ Between-subjects design = each participant experiences only one level of the IV
→ avoids contamination across conditions, but requires more participants (>75 per
cell) and randomization needed to ensure fairness

Internal validity = whether the IV truly cause the effect on the DV
External validity = generalizability of results to other settings, populations or stimuli
→ higher internal validity means lower external validity

Experiment types
-​ True experiments = fully controlled, random assignment, allows process
measurement
-​ Field experiment = random assignment in real-world settings; less control
-​ Quasi-experiments = no random assignment; lower internal validity

Fully randomized design = testing the effect of a single experimental variable
Full factorial design = testing multiple IVs that may interact with each other


Handling missing data
-​ Listwise deletion = remove entire cases
-​ Pairwise deletion = exclude only in analyses where data is missing (SPSS default)
-​ Imputation = replace with mean value

, Week 2 - PCA, Factor Analysis & Reliability Analysis
Why do we need data reduction?
Marketing concepts (brand image, attitude, preferences etc) often measured using
multiple-item scales (questions)
→ Too many overlapping variables cause
-​ Multicollinearity = IVs highly correlated
-​ Complexity (hard to interpret results)
-​ Noise (redundant information)

Methods to reduce data complexity while keeping as much information as possible
1.​ PCA = solely data reduction, not explaining; find uncorrelated variables
(components) that explain maximal variance in the data → often used to create
perceptual maps
2.​ EFA = interpretation; looking for a small number of dimensions that capture a large
part of the variance, while trying to make the dimensions interpretable in terms of
the original variables
3.​ Reliability analysis = testing the reliability of the found underlying dimension by
measuring the internal consistency of a known set of items in each dimension
→ implemented after PCA/EFA

Standardization = rescaling variables so that they all have the same unit of measurement: a
mean of 0 and a standard deviation of 1 (z-score transformation)
→ puts all variables on the same scale, ensuring they contribute equally to the analysis.

Principal component analysis (PCA)
= transforms many (to some extent) correlated variables into a smaller number of
uncorrelated components → explain the maximum possible variance in the data; linear
combinations of standardized variables (C1, C2, etc), ranked according to initial variability
they explain to keep the strongest ones




Variance explained = how much of the total variability in the data is captured by each
component
Total variability = sum of variability of the individual variables → variability of the
components is smaller, because part of the information is lost

Steps in PCA
1.​ Standardize the variables = to ensure each variable has equal weights
→ so that all variables have a mean = 0, variance = 1

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Geüpload op
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