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Module 3 Quiz :Digital Marketing Analytics in Practice (Digital Marketing Specialization) Answers 2025

Question 1

Which is NOT a potential benefit of a loyalty loop?

❌ Improved product quality
❌ Improved brand awareness
❌ Improved brand perception
✅ None of the above are potential benefits

Explanation:
A strong loyalty loop can improve product quality (via feedback), brand perception, and even awareness through advocacy. All listed items are benefits.


Question 2

Which of the following is true of qualitative data?

❌ It can never be operationalized into quantitative data
❌ It cannot be expressed in figures
❌ No statistical inferences can be made
✅ None of the above

Explanation:
Qualitative data can be coded into quantitative form, summarized numerically, and analyzed statistically when appropriately designed.


Question 3

Which of the following characterizes a well-functioning loyalty loop?

❌ Customers become employees
❌ Loyalty to an ineffective manager worsens decisions
❌ Suppliers offer bulk discounts
✅ Customers advocate my product

Explanation:
A key sign of a healthy loyalty loop is customer advocacy, where loyal customers promote the brand.


Question 4

Over the last 30 years, the amount of available consumer data has…

❌ Stayed the same
❌ Increased, then sharply decreased
❌ Decreased
✅ Increased

Explanation:
Digital platforms, devices, and tracking have caused an explosive growth in consumer data.


Question 5

R is used primarily for biologists and never for statistics or regressions.

❌ True
✅ False

Explanation:
R is widely used for statistics, regressions, data analysis, and visualization across many fields.


Question 6

The visual appeal of a figure is unimportant as long as it is accurate.

❌ True
✅ False

Explanation:
Poor visual design can obscure insights or mislead, even if the data is accurate.


Question 7

X is positively correlated with Y. From this we can determine that…

❌ X causes Y
❌ Y causes X
❌ X and Y are the same thing
✅ None of the above

Explanation:
Correlation does not imply causation. No causal conclusion can be drawn from correlation alone.


Question 8

Which is sometimes appropriate when refining data for presentation?

❌ Excluding categories you find unimportant
❌ Removing troublesome data points for convenience
❌ Fabricating data to strengthen conclusions
✅ None of the above

Explanation:
Data refinement must be methodologically justified. Arbitrary exclusion or fabrication is unethical.


Question 9

If Bellabeat advertised online and on TV and saw increased sales…

✅ DMA can help identify which channel delivered better ROI
❌ They should discontinue one channel immediately
❌ They should add billboards expecting similar results
❌ They should invest equally in both going forward

Explanation:
DMA (Digital Marketing Analytics) helps attribute performance and optimize spend across channels.


Question 10

Fill in the blanks: Omitting data is ____, while altering data is ____

✅ Sometimes justified; never justified
❌ Never justified; sometimes justified
❌ Never justified; also never justified
❌ Sometimes justified; also sometimes justified

Explanation:
Omitting data can be justified with transparency (e.g., outliers with rationale). Altering data is unethical.


🧾 Summary Table

Question Correct Answer Key Concept
Q1 None of the above Loyalty loop benefits
Q2 None of the above Qualitative data
Q3 Customer advocacy Loyalty loop
Q4 Increased Data growth
Q5 False R programming
Q6 False Visual design
Q7 None of the above Correlation vs causation
Q8 None of the above Data ethics
Q9 DMA attribution Marketing analytics
Q10 Sometimes / Never Ethical data use