Lecture 2 - An Application of Supervised Learning - Autonomous Deriving
author: Andrew Ng,
Stanford University
published: May 18, 2009, recorded: April 2009, views: 12026
released under terms of: Creative Commons Attribution Non-Commercial (CC-BY-NC)
published: May 18, 2009, recorded: April 2009, views: 12026
released under terms of: Creative Commons Attribution Non-Commercial (CC-BY-NC)
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An Application of Supervised Learning - Autonomous Deriving, ALVINN, Linear Regression, Gradient Descent, Batch Gradient Descent, Stochastic Gradient Descent (Incremental Descent), Matrix Derivative Notation for Deriving Normal Equations, Derivation of Normal Equations
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