Back to Nearest Neighbor Collaborative Filtering
University of Minnesota

Nearest Neighbor Collaborative Filtering

In this course, you will learn the fundamental techniques for making personalized recommendations through nearest-neighbor techniques. First you will learn user-user collaborative filtering, an algorithm that identifies other people with similar tastes to a target user and combines their ratings to make recommendations for that user. You will explore and implement variations of the user-user algorithm, and will explore the benefits and drawbacks of the general approach. Then you will learn the widely-practiced item-item collaborative filtering algorithm, which identifies global product associations from user ratings, but uses these product associations to provide personalized recommendations based on a user's own product ratings.

Status: Data Mining
Status: Data Manipulation
Course13 hours

Featured reviews

SS

5.0Reviewed Mar 30, 2019

Thank you so very much to open my eye see more view of recommendation field not only algorithms but use case and many trouble-shooting in worldwide business, moreover interview with noble professor.

HL

5.0Reviewed Jul 7, 2019

Great learning experience about collaborative filtering!

DR

5.0Reviewed Jun 14, 2017

Very satisfied to do this, the videos are too long, very good quality and a lot of practical information.I love it!

SB

4.0Reviewed May 14, 2020

Excel coursework is good, evaluations are not that good.

DA

4.0Reviewed Oct 23, 2016

I think this is very useful for introductory, but it lacks some references for who wants go deeper.

DG

4.0Reviewed Feb 1, 2020

I found this course very informative and clears lot of concept in Item based and used based collaborative filtering. Spreadsheet assignment helped me to clearly understand the algorithms.

PS

5.0Reviewed Jan 7, 2017

I love it. Would be cool to be able download all materials in one big .zip file (e.g for searching using grep) ;-)

LL

5.0Reviewed Jul 19, 2017

a great class, I learned some insight in these algorithms

NR

5.0Reviewed Feb 3, 2018

Extremely informative course! It would be great if the assignments are created on python or R in the next season's offering. Thanks for the knowledge!

AR

5.0Reviewed Aug 3, 2017

Awesome as always, Joe and Michael rock. The interview with Brad Miller was stellar, felt like listening to the legends of rock-n-roll!

EM

4.0Reviewed Oct 24, 2016

Very good content ! Very interesting interviews with expert in the field that shows real examples. However the exercise needs a bit more work to be very useful.

JR

4.0Reviewed Jul 18, 2021

Very good course, but the quiz on Week 4 is unclear

All reviews

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