Machine Learning Basic Concepts - edX
Machine Learning, Data Science, Data Mining, Data Analysis, Sta-tistical Learning, Knowledge Discovery in Databases, Pattern Dis-covery. ... parameters. +Can be extended easily with news examples. Cons:-Requires large space to store the entire training dataset.-Slow! Given n examples and d features. The method takes
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