Are you looking for NPTEL Introduction to Machine Learning Assignment Answers? If it’s yes then here you will find NPTEL Introduction to Machine Learning Answers for Week 0 to Week 12 Assignment Answers. If you are preparing for the Introduction to Machine Learning Assignment/Exam this page will help you in finding the latest and updated answers.

The course is 100% free to enroll and you can watch all the modules on the official website, only the certification costs you which is optional so you can take part in the certification exam or skip it.

NPTEL Introduction to Machine Learning Assignment Answers [Week 0-12]

For your better understanding, I have separated all the Week’s Assignments so that you can easily find them one by one. Just tap on the Week and the assignment with its solution will appear in front of you.

Week 0

In the NPTEL Introduction to Machine Learning Assignment Week 0 Answers, there are a total of 15 questions. Week 0 deals with Probability Theory, Linear Algebra, and Convex Optimization.

In the NPTEL Introduction to Machine Learning Assignment Week 1 Answers, there are a total of 10 questions. Week 1 deals with Introduction: Statistical Decision Theory – Regression, Classification, Bias Variance.

In the NPTEL Introduction to Machine Learning Assignment Week 2 Answers, there are a total of 10 questions. Week 2 deals with Linear Regression, Multivariate Regression, Subset Selection, Shrinkage Methods, Principal Component Regression, Partial Least squares

In the NPTEL Introduction to Machine Learning Assignment Week 3 Answers, there are a total of 9 questions. Week 3 deals with Linear Classification, Logistic Regression, and Linear Discriminant Analysis.

In the NPTEL Introduction to Machine Learning Assignment Week 4 Answers, there are a total of 6 questions. Week 4 deals with Perceptron, Support Vector Machines.

In the NPTEL Introduction to Machine Learning Assignment Week 5 Answers, there are a total of 11 questions. Week 5 deals with Neural Networks – Introduction, Early Models, Perceptron Learning, Backpropagation, Initialization, Training & Validation, Parameter Estimation – MLE, MAP, Bayesian Estimation.

In the NPTEL Introduction to Machine Learning Assignment Week 6 Answers, there are a total of 8 questions. Week 6 deals with Decision Trees, Regression Trees, Stopping Criterion & Pruning loss functions, Categorical Attributes, Multiway Splits, Missing Values, Decision Trees – Instability Evaluation Measures.

In the NPTEL Introduction to Machine Learning Assignment Week 7 Answers, there are a total of 8 questions. Week 7 deals with Bootstrapping & Cross Validation, Class Evaluation Measures, ROC curve, MDL, Ensemble Methods – Bagging, Committee Machines and Stacking, Boosting.

In the NPTEL Introduction to Machine Learning Assignment Week 8 Answers, there are a total of 8 questions. Week 8 deals with Gradient Boosting, Random Forests, Multi-class Classification, Naive Bayes, Bayesian Networks.

In the NPTEL Introduction to Machine Learning Assignment Week 9 Answers, there are a total of 10 questions. Week 9 deals with Undirected Graphical Models, HMM, Variable Elimination, Belief Propagation

In the NPTEL Introduction to Machine Learning Assignment Week 10 Answers, there are a total of 10 questions. Week 10 deals with Partitional Clustering, Hierarchical Clustering, Birch Algorithm, CURE Algorithm, Density-based Clustering.

In the NPTEL Introduction to Machine Learning Assignment Week 11 Answers, there are a total of 5 questions. Week 11 deals with Gaussian Mixture Models, and Expectation Maximization.

In the NPTEL Introduction to Machine Learning Assignment Week 12 Answers, there are a total of 7 questions. Week 12 deals with Learning Theory, Introduction to Reinforcement Learning, and Optional videos (RL framework, TD learning, Solution Methods, Applications).

If you want NPTEL Introduction to Machine Learning Answers All Week assignments on one page then click on the below button and it will take you to the page where all the answers have been given. The correct answers are marked in Green Color with a tick sign.

NPTEL Introduction to Machine Learning Assignment Answers

About NPTEL Introduction to Machine Learning Course?

NPTEL Introduction to Machine Learning Course is an online free course by IIT Madras that has been developed by Prof. Balaraman Ravindran. The main aim of this course is to provide the basic concepts of machine learning from a mathematically well-motivated perspective. Along with all these, it also covers the different learning paradigms and some of the popular algorithms and architectures used in each of these paradigms.

It also provides a Certificate for passing the final exam which costs ₹1000 exam fee. But the exam is optional so you can also leave the certificate if it is not mandatory.

Certification Criteria

  • Average Assignment Score: 25% of the average of the best 8 assignments out of the total 12 assignments given in the course.
  • Exam Score: 75% of the proctored certification exam score out of 100
  • Final Score: Average assignment score + Exam score
  • The certificate will have your name, photograph, and score in the final exam with the breakup. It will have the logos of NPTEL and IIT Madras. It will be e-verifiable at nptel.ac.in/noc.
  • Only the e-certificate will be made available. Hard copies will not be dispatched.

Note: You will be eligible for a certificate only if the average assignment score >= 10/25 and exam score >= 30/75. If one of the 2 criteria is not met, you will not get the certificate even if the Final score >= 40/100.

Wrap Up

I hope now you know the correct answer to all the NPTEL Introduction to Machine Learning exam and quiz. If this article helped you find the NPTEL Introduction to Machine Learning Course Answer don’t forget to share it with your friends who are looking for NPTEL Introduction to Machine Learning Assignment Answers.

Disclaimer: These Answers are only for educational purposes so please don’t use them for any cheating purposes. We urge you to do assignments on your own.

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