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Definition of Supervised Machine Learning
From
Crash Course: Statistics
HS
C
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00:05 - 01:15
1m 10s
Defines supervised machine learning and describes some of the uses in which it is better for modeling than other statstical models.
computer science
statistics
statistical predictions
supervised machine learning
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