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Graded Quiz: Exploratory Data Analysis :Data Analysis with Python (Applied Data Science Specialization) Answers 2025

1. Question 1

While exploring a dataset with Pandas, Elina wants summary statistics (count, mean, std). What should she use?

  • ❌ head()

  • ❌ tail()

  • describe()

  • ❌ summary()

Explanation:
describe() gives statistical summaries like count, mean, std, min, max — exactly what Elina needs.


2. Question 2

Pearson correlation is close to zero. What does this indicate?

  • ❌ It indicates that the mean of the data is near zero.

  • ❌ It indicates uncertainty between the two variables.

  • ❌ It indicates minimal deviation between variables.

  • It indicates that two variables are not correlated.

Explanation:
A correlation close to zero means no linear relationship exists between the variables.


3. Question 3

You want to reshape grouped data so one variable appears in rows and another in columns. Which method?

  • ❌ merge()

  • ❌ groupby()

  • pivot()

  • ❌ pcolor()

Explanation:
pivot() restructures data into a matrix-like table with rows, columns, and values.


4. Question 4

df_grp = df_test.groupby([‘body-style’], as_index=False).mean()
What are df_grp[‘price’] values?

  • ❌ It averages the body-style variable data values.

  • ❌ It writes the mean value of each body style price to the data frame. (Too vague)

  • ❌ It averages the price for all body labels.

  • It averages the price for each body style.

Explanation:
Grouping by body-style and taking mean computes the average price for each body-style category.


5. Question 5

Peak RPM vs price shows low/high RPM produce low/high prices with no clear trend. What does this indicate?

  • Weak or no correlation

  • ❌ Strong negative correlation

  • ❌ Uncertain correlation

  • ❌ Strong positive correlation

Explanation:
If no consistent pattern exists, the correlation is weak or absent.


🧾 Summary Table

Ques Correct Answer Key Concept
1 describe() Summary statistics in Pandas
2 Variables not correlated Pearson correlation interpretation
3 pivot() Reshaping data
4 Averages price for each body style groupby + mean
5 Weak or no correlation Scatter pattern interpretation