Implicit Representation Networks
- đ¤ Speaker: David Barber (University College London) đ Website
- đ Date & Time: Wednesday 02 July 2014, 11:00 - 12:00
- đ Venue: Engineering Department, CBL Room BE-438.
Abstract
I’ll discuss some thoughts on deep learning and finding low dimensional representations of data. I’ll discuss some novel ways to train deep networks and also argue that the standard autoencoder structure is not optimal.
Series This talk is part of the Machine Learning @ CUED series.
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Wednesday 02 July 2014, 11:00-12:00