The Ultimate Guide To Supervised Learning | Explained On Binary Classification Example | Part 1

AI For Beginners ยท Beginner ยท๐Ÿ“„ Research Papers Explained ยท1y ago
๐Ÿ”ฅ The first part of "The Ultimate Guide To Supervised Learning" explains the concept of supervised learning on an example of Titanic survival dataset. The example is a binary classification task which aims to predict if a passenger would survive the accident or not. The video aims to explain the learning process of the supervised algorithms in high-level to grasp intuition of how the overall pipeline works. The second part will cover the types of supervised learning models and other important points. ๐Ÿ” Key points covered: 0:00 - What is supervised learning? (recap). 0:14 - Example of theโ€ฆ
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Chapters (5)

What is supervised learning? (recap).
0:14 Example of the Titanic survival dataset.
0:36 Understand the concept at high-level.
1:19 Understand the concept at low-level.
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