reading list for "Machine Learning II"
Jan. 13th, 2009 08:51 amNando de Freitas's new class has quite a remarkable selection of readings, both technical and "inspirational".
and it sounds like we will also navigate much Geoff Hinton territory, including contrastive divergence learning. On the first lecture, Nando motivated many fascinating questions about the wisdom of crowds, learning by imagination (i.e. simulation-based learning), change blindness, cognitive coherence1, learning by imitation, cultural transmission.
We will also have a different "scribe" every lecture, supposedly a common practice in Berkeley and Stanford. A scribe is a student who is responsible for taking notes for the entire class.
1 - by this I mean the phenomenon by which people make up explanations to justify their actions, post-hoc
Larry Wasserman - All of Statistics
Luc Devroye, László Györfi, Gábor Lugosi - A Probabilistic Theory of Pattern Recognition
Cristian Gouriéroux, Alain Monfort - Simulation-Based Econometric Methods
Tor Norretranders - The User Illusion
Jeff Hawkins, Sandra Blakeslee - On Intelligence
Gerd Gigerenzer - Gut Feelings: The Intelligence of the Unconscious
and it sounds like we will also navigate much Geoff Hinton territory, including contrastive divergence learning. On the first lecture, Nando motivated many fascinating questions about the wisdom of crowds, learning by imagination (i.e. simulation-based learning), change blindness, cognitive coherence1, learning by imitation, cultural transmission.
We will also have a different "scribe" every lecture, supposedly a common practice in Berkeley and Stanford. A scribe is a student who is responsible for taking notes for the entire class.
1 - by this I mean the phenomenon by which people make up explanations to justify their actions, post-hoc