Friday, February 4, 2022

Machine learning MCQ - Calculate the entropy of a decision tree given the dataset

Multiple choices questions in Machine learning. Interview questions on machine learning, quiz questions for data scientist answers explained, machine learning exam questions, question bank in machine learning, What is entropy? Why entropy is important in decision tree? How to calculate entropy for a dataset?

Machine Learning MCQ - Calculate the entropy of a decision tree given the dataset

< Previous                      

Next >

 

1. For the dataset given in Table 1 below to learn a decision tree, find the approximate entropy H(Passed). This decision tree predicts whether students pass or not (Y for yes or N for no), based on their past CGPA scores (H for high, A for average, and L for Low) and whether they prepared or not (Y or N).

CGPA

Prepared

Passed

H

H

M

M

L

L

F

T

F

T

F

T

T

T

F

T

F

T

 

a) 0.92

b) 0.66

c) 1.92

d) 1.32

Answer: (a) 0.92

 

How to calculate entropy?

The formula for calculating the entropy is as follows;

Here, pi is the probability of getting the class i when randomly selecting the one from the available classes. In our example, we need to find the entropy of ‘Passed’ which has only two classes, F or T.

 

H(Passed)      = - (p(Passed = F) log p(Passed = F) + p(Passed = T) log p(Passed = T)) 

                        = -(2/6 log2(2/6)+4/6 log2 (4/6))

                        = -(1/3 log2(1/3)+2/3 log2 (2/3))

                        = -(- 0.52826 – 0.38997)

                        = 0.92

 

What is entropy?

Entropy is an information theory metric that measures the impurity or uncertainty in a group of observations. 

 

How does entropy measurement help in decision tree?

Entropy determines how a decision tree chooses to split data to minimize this impurity as much as possible at the leaf (or the end-outcome) nodes. It means the objective function is to decrease the impurity (i.e. uncertainty or surprise) of the target column or in other words, to increase the homogeneity of the variable at every split of the given data.

 

 

< Previous                      

Next >

 

************************

Related links:

What is entropy?

How does entropy helps in decision tree?

How to calculate entropy for a given dataset?

Machine learning solved mcq, machine learning solved mcq

No comments:

Post a Comment

Featured Content

Multiple choice questions in Natural Language Processing Home

MCQ in Natural Language Processing, Quiz questions with answers in NLP, Top interview questions in NLP with answers Multiple Choice Que...

All time most popular contents