Machine Learning Lecture 31 "Random Forests / Bagging" -Cornell CS4780 SP17
Lecture Notes:
http://www.cs.cornell.edu/courses/cs4780/2018fa/lectures/lecturenote18.html
If you want to take the course for credit and obtain an official certificate, there is now a revamped version (with much higher quality videos) offered through eCornell ( https://tinyurl.com/eCornellML ). Note, however, that eCornell does charge tuition for this version.
Видео Machine Learning Lecture 31 "Random Forests / Bagging" -Cornell CS4780 SP17 канала Kilian Weinberger
http://www.cs.cornell.edu/courses/cs4780/2018fa/lectures/lecturenote18.html
If you want to take the course for credit and obtain an official certificate, there is now a revamped version (with much higher quality videos) offered through eCornell ( https://tinyurl.com/eCornellML ). Note, however, that eCornell does charge tuition for this version.
Видео Machine Learning Lecture 31 "Random Forests / Bagging" -Cornell CS4780 SP17 канала Kilian Weinberger
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