All Coursera Quiz Answers

Applied Machine Learning in Python Module 1 Quiz Answer

Hello Friends in this article i am gone to share Applied Machine Learning in Python Coursera Module 1 Quiz Answers with you..

Applied Machine Learning in Python Quiz Answer


Also visit this link:  Applied Machine Learning in Python Module 4 Quiz Answer


 

Module 1 Quiz Answer

Question 1) Select the option that correctly completes the sentence:

Training a model using labeled data and using this model to predict the labels for new data is known as ___________.

  • Supervised Learning
  • Density Estimation 
  • Clustering 
  • Unsupervised Learning

 

Question 2) Select the option that correctly completes the sentence:

Modeling the features of an unlabeled dataset to find hidden structure is known as _________.

  • Supervised Learning 
  • Regression
  • Unsupervised Learning 
  • Classification

 

Question 3) Select the option that correctly completes the sentence:

Training a model using categorically labelled data to predict labels for new data is known as _________. 

  • Regression 
  • Clustering
  • Classification
  • Feature Extraction

 

Question 4) Select the option that correctly completes the sentence:

Training a model using labelled data where the labels are continuous quantities to predict labels for new data is known as  _________.

  • Feature Extraction
  • Regression
  • Classification
  • Clustering

 

Question 5) Using the data for classes 0, 1, and 2 plotted below, what class

would a KNeighborsClassifier classify the new point as for k = 1 and k=3?

Using the data for classes 0, 1, and 2 plotted below, what class would a KNeighborsClassifier classify the new point as for k = 1 and k=3?

• k=1: Class 1

• k=3: Class 2

 

Question 6) Which of the following is true for the nearest neighbor classifier (Select all that apply):

  • A higher value of k leads to a more complex decision boundary
  • Partitions observations into k clusters where each observation belongs to the cluster with the nearest mean
  • Memorizes the entire training set
  • Given a data instance to classify, computes the probability of each possible class using a statistical model of the input features

 

Question 7) Why is it important to examine your dataset as a first step in applying machine learning? (Select all that apply):

  • See what type of cleaning or preprocessing still needs to be done
  • You might notice missing data
  • Gain insight on what machine learning model might be appropriate, if any
  • Get a sense for how difficult the problem might be
  • It is not important

 

Question 8) The key purpose of splitting the dataset into training and test sets is:

  • To estimate how well the learned model will generalize to new data
  • To reduce the amount of labelled data needed for evaluating classifier accuracy
  • To reduce the number of features we need to consider as input to the learning algorithm
  • To speed up the training process

 

Question 9) The purpose of setting the random_state parameter in train_test_spIit is: (Select all that apply)

  • To avoid predictable splitting of the data
  • To make experiments easily reproducible by always using the same partitioning of the data
  • To avoid bias in data splitting
  • To split the data into similar subsets so that bias is not introduced into the final results

 

Question 10) a dataset with 10,000 observations and 50 features plus one label, what would be the dimensions of X_train, y_train, X_test, and y_test? Assume a train/test split of 75%/25%.

  • X_train: (7500, 50)
  • y_train: (7500, )
  • X_test: (2500, 50)
  • y_test: (2500, )