May 2019
Intermediate to advanced
162 pages
4h 24m
English
In the last section, we got comfortable with the idea of supervised machine learning. Now, we will learn how exactly a machine learns underneath the hood. This section is going to examine a common optimization technique used by many machine learning algorithms, called hill climbing. It is predicated on the fact that each problem has an ideal state and a way to measure how close or how far we are from that. It is important to note that not all machine learning algorithms use this approach.
Read now
Unlock full access