Machine Learning 1: UNIT 2: Classification MCQs
1. By default, SGD classifier follows this strategy for multi-class classification:
A)
OvO strategy
B)
OvA strategy
C)
Both
D)
None
Ans: B
2.
SGD
Classifiers and Linear Classifiers are strictly
A) Binary Classifier
B) Multiclass classifier
C) Both
D) None
Ans: A
3.
The greater the value for ROC AUC, better the model:
A)
True
B)
False
Ans: A
4.
The maximum value of the ROC AUC is
A) 0.8
B) 0.9
C) 1
D) 0.7
Ans: C
5.
Recall can be increased by increasing the decision threshold. True or
False ?
A) False
B) True
Ans: A
6.
Precision can be increased by increasing the decision threshold. True or
False?
A)
True
B)
False
Ans: A
7.
Which of these is a good measure to decide which threshold to use?
A)
Confusion matrix
B)
F1 score
C)
ROC curve
D)
Precision & Recall
versus Threshold Curve
Ans: D
8.
SVM Classifier scales poorly with the size of training dataset. For SVM,
which strategy for multi-class classifier should be applied?
A)
OvA
B)
OvO
Ans: B
9.
Is RandomForestClassifier a multinomial classifier?
A)
Yes
B)
No
Ans: A
10. For RandomForestClassifier, do
we need to run either OvA or OvO classifier at all?
A)
Yes
B)
No
Ans: B
11. Which of these classifiers
support multilabel classification?
A)
SGD Classifier
B)
SVM Classifier
C)
KNeighbours Classifier
D)
None
Ans: C
12. For MNIST dataset multiclass
classification, SGD Classifiers trains how many binary classifiers with OvA
strategy?
A)
8
B)
10
C)
12
D)
45
Ans: B
13. For MNIST dataset multiclass
classification, SGD Classifiers train how many classifiers using OvO strategy?
A) 8
B) 10
C) 12
D) 45
Ans: D
14. Classifying MNIST dataset image
into [large or small, odd or even] classification lables is an example of:
A)
Binary Classification
B)
Multiclass Classification
C)
Multilabel Classification
D)
Multioutput Classification
Ans: C
15. In multilabel classification,
which of the following 'average' method for calculating F1 score calculates the
unweighted mean of the f1 score of individual labels?
A)
macro
B)
binary
C)
micro
D)
weighted
Ans: A
16. In multilabel classification,
which of the following average method for calculating F1 score calculates the
metrics for each label, and find their average weighted by support (the number
of true instances for each label)?
A) Macro
B) Binary
C) Micro
D) Weighted
Ans: D
17. Which of the following methods
would not be a good measure for skewed datasets. For example, 5 and Not 5
classiifer in MNIST has a skewed dataset in which there are more 'Not 5's as
compared to '5's?
A)
cross_val_score using accuracy
B)
confusion matrix
C)
Cross_val_score using precision
D)
None
Ans: A
18. Multiclass classifiers are also
known as:
A) Mutlilabel classifiers
B) Multinomial classifiers
C) Multioutput classifiers
D) None
Ans: B
19. MNIST - 5 and Not 5 problem is
what kind of a problem?
A)
Classification
B)
Regression
C)
Clustering
D)
None
Ans: A
20. MNIST - 5 and Not 5
Classification is what kind of a classification problem?
A)
Binary Classification
B)
Multi-class
C)
Multi-label
D)
Multi-output
Ans: A
21. Why do we use random_state in
Stochastic Gradient Descent classifier?
A)
For generating reproducible results
B)
To specify the training size of the batch for
each iteration
C)
Both
D)
None
Ans: A
22. Which of these may have to be
performed before analyzing and training the dataset?
A) Shuffling
B) Cross-Validation
C) F1 Score
D) All of the above
Ans: A
23. For the below confusion matrix,
what is the total number of training datasets?
Not 5 |
5 |
|
Not 5 |
53272 |
1307 |
5 |
1077 |
4344 |
A) 50000
B) 60000
C) 70000
D) 80000
Ans: B
24. For the below confusion matrix,
what is the count of True Positive?
Not 5 |
5 |
|
Not 5 |
53272 |
1307 |
5 |
1077 |
4344 |
A)
53272
B)
1077
C)
1307
D)
4344
Ans: D
25. For the below confusion matrix,
what is the count of True Negatives?
Not 5 |
5 |
|
Not 5 |
53272 |
1307 |
5 |
1077 |
4344 |
A) 53272
B) 1077
C) 1307
D) 4344
Ans: A
26. For the below confusion matrix,
what is the count of False Negatives?
Not 5 |
5 |
|
Not 5 |
53272 |
1307 |
5 |
1077 |
4344 |
A) 53272
B) 1077
C) 1307
D) 4344
Ans: B
27. For the below confusion matrix,
what is the count of False Positive?
Not 5 |
5 |
|
Not 5 |
53272 |
1307 |
5 |
1077 |
4344 |
A) 53272
B) 1077
C) 1307
D) 4344
Ans: C
28. For the below confusion matrix,
what is the accuracy?
Not 5 |
5 |
|
Not 5 |
53272 |
1307 |
5 |
1077 |
4344 |
A)
95%
B)
90%
C)
96%
D)
98%
Ans: C
29. For the below confusion matrix,
what is the recall?
Not 5 |
5 |
|
Not 5 |
53272 |
1307 |
5 |
1077 |
4344 |
A)
0.7
B)
0.8
C)
0.9
D)
0.95
Ans: B
30. For the below confusion matrix,
what is the precision?
Not 5 |
5 |
|
Not 5 |
53272 |
1307 |
5 |
1077 |
4344 |
A)
0.73
B)
0.76
C)
0.78
D)
0.82
Ans: B
31. F1 score is:
A)
absolute mean of precision and recall
B)
harmonic mean of precision and recall
C)
squared mean of precision and recall
D)
All of the above
Ans: B
32. For the below confusion matrix,
what is the F1 score?
Not 5 |
5 |
|
Not 5 |
53272 |
1307 |
5 |
1077 |
4344 |
A)
0.72
B)
0.784
C)
0.82
D)
0.84
Ans: B
33. For a model to detect videos
that are unsafe for kids, we need (safe video = postive class)
A)
High precision, low recall
B)
High recall, low precision
C)
High Precision, High Recall
D)
Low Precision, Low Recall
Ans: A
34. For a model to detect
shoplifters in surveillance images, we need (shoplifter is postive class)
A)
High precision, low recall
B)
High recall, low precision
C)
High Precision, High Recall
D)
Low Precision, Low Recall
Ans: B
35. Which of the following can be
treated as a multi-output classification problem?
A) Removing noise from MNIST image
B) Classifying MNIST dataset into 0 to 9
C) Predicted the demand for rental bikes
D) None
Ans: A
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