Chevron Left
返回到 Nearest Neighbor Collaborative Filtering

学生对 明尼苏达大学 提供的 Nearest Neighbor Collaborative Filtering 的评价和反馈

301 个评分


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....



Dec 11, 2019

i found this course very helpful and informative. it explains the theory while providing real-world examples on recommender systems. the assignment helps in clearing up any confusion with the material


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.


1 - Nearest Neighbor Collaborative Filtering 的 25 个评论(共 68 个)

创建者 Karthik N

Aug 10, 2018

创建者 Yonaton H

Sep 22, 2019

创建者 Alex B

Aug 25, 2019

创建者 Jack B

Oct 24, 2017

创建者 Srikanth K S

Jan 5, 2017

创建者 Domenico P

Nov 20, 2017

创建者 LU W

Aug 31, 2018

创建者 naveen r

Feb 4, 2018

创建者 Laurent B

Feb 5, 2018

创建者 Ashish P

Mar 31, 2020

创建者 Daniel M

Jun 23, 2019

创建者 Akash S C

Jul 21, 2019

创建者 Danill B

Jul 31, 2018

创建者 Anyu S

Apr 29, 2018

创建者 Daniil O

Jun 19, 2019

创建者 Arun R

Dec 1, 2019

创建者 Ankit A

Jun 21, 2018

创建者 Alberto G

Mar 26, 2018

创建者 Zhenyu Z

Feb 21, 2018

创建者 Deleted A

Mar 7, 2017

创建者 Gregory R

Apr 19, 2017

创建者 Jose R

May 27, 2018

创建者 Konstantinos P

Apr 10, 2017

创建者 Deleted A

Apr 2, 2020

创建者 nic w

Sep 2, 2017