Linear Digressions   /     Maximal Margin Classifiers

Description

Maximal margin classifiers are a way of thinking about supervised learning entirely in terms of the decision boundary between two classes, and defining that boundary in a way that maximizes the distance from any given point to the boundary. It's a neat way to think about statistical learning and a prerequisite for understanding support vector machines, which we'll cover next week--stay tuned!

Subtitle
Maximal margin classifiers are a way of thinking …
Duration
00:14:21
Publishing date
2017-12-04 04:03
Link
http://feedproxy.google.com/~r/udacity-linear-digressions/~3/bBDJf13efwA/maximal-margin-classifiers
Contributors
  Ben Jaffe and Katie Malone
author  
Enclosures
http://feedproxy.google.com/~r/udacity-linear-digressions/~5/UzAg-6hy3Qc/364651949-linear-digressions-maximal-margin-classifiers.mp3
audio/mpeg