Matrix Factorization and Advanced Techniques

Inquiry

In this course you will learn a variety of matrix factorization and hybrid machine learning techniques for recommender systems. Starting with basic matrix factorization, you will understand both the intuition and the practical details of building recommender systems based on reducing the dimensionality of the user-product preference space. Then you will learn about techniques that combine the strengths of different algorithms into powerful hybrid recommenders.

Matrix Factorization is a two-part, two-week module on matrix factorization recommender techniques. It includes an assignment and quiz (both due in the second week), and an honors assignment (also due in the second week). Please pace yourself carefully -- it will be difficult to finish in two weeks unless you start the assignments during the first week.

Hybrid Recommenders is a three-part, two-week module on hybrid and machine learning recommendaton algorithms and advanced recommender techniques. It includes a quiz (due in the second week), and an honors assignment (also due in the second week). Please pace yourself carefully -- it will be difficult to finish the honors track in two weeks unless you start the assignments during the first week.

Community Rating

Studied or Worked here? Share Your Review

Your email address will not be published. Required fields are marked *

Please do not post:

  • Aggressive or discriminatory language
  • Profanities (of any kind)
  • Trade secrets or confidential information

Thank you once again for doing your part to keep Edarabia the most trusted education source.