Making intelligence intelligible with Dr. Rich Caruana

Subscribers:
344,000
Published on ● Video Link: https://www.youtube.com/watch?v=qLhaWxY7RIc



Duration: 30:06
1,727 views
28


Episode 26 | May 30, 2018

In the world of machine learning, there’s been a notable trade-off between accuracy and intelligibility. Either the models are accurate but difficult to make sense of, or easy to understand but prone to error. That’s why Dr. Rich Caruana, Principal Researcher at Microsoft Research, has spent a good part of his career working to make the simple more accurate and the accurate more intelligible.

Today, Dr. Caruana talks about how the rise of deep neural networks has made understanding machine predictions more difficult for humans, and discusses an interesting class of smaller, more interpretable models that may help to make the black box nature of machine learning more transparent.

See more at https://www.microsoft.com/en-us/research/blog/category/podcast/




Other Videos By Microsoft Research


2018-06-20From Algorithms to Application Impact at Pacific Northwest National Lab (PNNL)
2018-06-13Harry Shum Speaks at the 2018 Allen School of Computer Science & Engineering Graduation
2018-06-13Teaching Computers to See with Dr. Gang Hua
2018-06-13Ethics and Diversity in AI
2018-06-13Mobile Sharing and Companion Experiences for Microsoft Teams Meetings
2018-06-13Mobile Sharing and Companion Experiences for Microsoft Teams Meetings (Audio Description)
2018-06-11On Intrinsic Rewards and Continual Learning
2018-06-11Differential Privacy for Growing Databases
2018-06-11Why Aren't More Users More Happy With Our VMs?
2018-06-11Accessibility in the AI Frontier
2018-06-11Making intelligence intelligible with Dr. Rich Caruana
2018-06-11The democratization of data science with Dr. Chris White
2018-06-06Machine Learning for Placement-insensitive Inertial Motion Capture (ICRA 2018)
2018-06-05Microsoft tests Project Natick, self-sustaining underwater datacenter
2018-06-05Fireside Chat with Dawn Woodard
2018-05-29AI and Our Future With Machines with Dr. Eric Horvitz
2018-05-29Snippets from the Revolution – An Interview with Dr. Jaime Teevan
2018-05-29PNW PLSE Workshop: Helping Designers Explore the Space of Layout Variations with Constraints
2018-05-29NW-NLP 2018: Annotation Artifacts in Natural Language Inference Data
2018-05-29Unsupervised Discovery of Objects and their Interactions for Common-Sense Physical Reasoning
2018-05-29NW-NLP 2018: Ben Taskar Invited Talk; Learning and Reasoning about the World using Language



Tags:
microsoft research
podcast