Composing Graphical Models With Neural Networks with David Duvenaud
EPISODE 96
|
JANUARY
15,
2018
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About this Episode
In this episode, we hear from David Duvenaud, assistant professor in the Computer Science and Statistics departments at the University of Toronto. David joined me after his talk at the Deep Learning Summit on "Composing Graphical Models With Neural Networks for Structured Representations and Fast Inference."
In our conversation, we discuss the generalized modeling and inference framework that David and his team have created, which combines the strengths of both probabilistic graphical models and deep learning methods. He gives us a walkthrough of his use case which is to automatically segment and categorize mouse behavior from raw video, and we discuss how the framework is applied here and for other use cases. We also discuss some of the differences between the frequentist and bayesian statistical approaches.
This show is part of a series of shows recorded at the RE•WORK Deep Learning Summit in Montreal back in October. This was a great event and, in fact, their next event, the Deep Learning Summit San Francisco is right around the corner on January 25th and 26th, and will feature more leading researchers and technologists like the ones you'll hear here on the show this week, including Ian Goodfellow of Google Brain, Daphne Koller of Calico Labs, and more! Definitely check it out and use the code TWIMLAI for 20% off of registration.
About the Guest
David Duvenaud
University of Toronto
Resources
- Composing graphical models with neural networks for structured representations and fast inference
- Composing graphical models with neural networks Use Case Video
- Teaching Agents how to communicate - OpenAI
- Learning to learn by gradient descent by gradient descent
- Register for the RE•WORK Deep Learning Summit here!
- TWIML Presents: Series Page