Practice Chinese Restaurant Process (CRP) - 8.3 | 8. Non-Parametric Bayesian Methods | Advance Machine Learning
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Practice Questions

Test your understanding with targeted questions related to the topic.

Question 1

Easy

What does the Chinese Restaurant Process metaphor illustrate in data clustering?

πŸ’‘ Hint: Think about how customers choose tables.

Question 2

Easy

What is the concentration parameter Ξ± in the context of CRP?

πŸ’‘ Hint: Consider how it affects customer behavior.

Practice 4 more questions and get performance evaluation

Interactive Quizzes

Engage in quick quizzes to reinforce what you've learned and check your comprehension.

Question 1

What is the primary purpose of the Chinese Restaurant Process?

  • To define a fixed number of clusters
  • To model dynamic clustering based on data
  • To categorize data into static groups

πŸ’‘ Hint: Think about how customers choose tables in the restaurant.

Question 2

True or False: The concentration parameter (Ξ±) affects the probability of forming new clusters in CRP.

  • True
  • False

πŸ’‘ Hint: Is new table creation dependent on Ξ±?

Solve and get performance evaluation

Challenge Problems

Push your limits with challenges.

Question 1

Given a scenario with 10 customers and 3 existing tables with 2, 3, and 5 customers respectively, if Ξ± is 5, calculate the probability of a new customer joining each table and starting a new one.

πŸ’‘ Hint: Use the joining probability formula for each table.

Question 2

Explain how you might adapt the CRP in a scenario where the data is time-sensitive and clusters evolve over time.

πŸ’‘ Hint: Consider how customer behavior impacts clustering in a real situation.

Challenge and get performance evaluation