Underspecification Presents Challenges for Credibility in Modern Machine Learning (Paper Explained)

Subscribers:
284,000
Published on ● Video Link: https://www.youtube.com/watch?v=gch94ttuy5s



Duration: 59:22
18,803 views
509


#ai #research #machinelearning

Deep Learning models are often overparameterized and have many degrees of freedom, which leads to many local minima that all perform equally well on the test set. But it turns out that even though they all generalize in-distribution, the performance of these models can be drastically different when tested out-of-distribution. Notably, in many cases, a good model can actually be found among all these candidates, but it seems impossible to select it. This paper describes this problem, which it calls underspecification, and gives several theoretical and practical examples.

OUTLINE:
0:00 - Into & Overview
2:00 - Underspecification of ML Pipelines
11:15 - Stress Tests
12:40 - Epidemiological Example
20:45 - Theoretical Model
26:55 - Example from Medical Genomics
34:00 - ImageNet-C Example
36:50 - BERT Models
56:55 - Conclusion & Comments

Paper: https://arxiv.org/abs/2011.03395

Abstract:
ML models often exhibit unexpectedly poor behavior when they are deployed in real-world domains. We identify underspecification as a key reason for these failures. An ML pipeline is underspecified when it can return many predictors with equivalently strong held-out performance in the training domain. Underspecification is common in modern ML pipelines, such as those based on deep learning. Predictors returned by underspecified pipelines are often treated as equivalent based on their training domain performance, but we show here that such predictors can behave very differently in deployment domains. This ambiguity can lead to instability and poor model behavior in practice, and is a distinct failure mode from previously identified issues arising from structural mismatch between training and deployment domains. We show that this problem appears in a wide variety of practical ML pipelines, using examples from computer vision, medical imaging, natural language processing, clinical risk prediction based on electronic health records, and medical genomics. Our results show the need to explicitly account for underspecification in modeling pipelines that are intended for real-world deployment in any domain.

Authors: Alexander D'Amour, Katherine Heller, Dan Moldovan, Ben Adlam, Babak Alipanahi, Alex Beutel, Christina Chen, Jonathan Deaton, Jacob Eisenstein, Matthew D. Hoffman, Farhad Hormozdiari, Neil Houlsby, Shaobo Hou, Ghassen Jerfel, Alan Karthikesalingam, Mario Lucic, Yian Ma, Cory McLean, Diana Mincu, Akinori Mitani, Andrea Montanari, Zachary Nado, Vivek Natarajan, Christopher Nielson, Thomas F. Osborne, Rajiv Raman, Kim Ramasamy, Rory Sayres, Jessica Schrouff, Martin Seneviratne, Shannon Sequeira, Harini Suresh, Victor Veitch, Max Vladymyrov, Xuezhi Wang, Kellie Webster, Steve Yadlowsky, Taedong Yun, Xiaohua Zhai, D. Sculley

Links:
YouTube: https://www.youtube.com/c/yannickilcher
Twitter: https://twitter.com/ykilcher
Discord: https://discord.gg/4H8xxDF
BitChute: https://www.bitchute.com/channel/yannic-kilcher
Minds: https://www.minds.com/ykilcher
Parler: https://parler.com/profile/YannicKilcher
LinkedIn: https://www.linkedin.com/in/yannic-kilcher-488534136/

If you want to support me, the best thing to do is to share out the content :)

If you want to support me financially (completely optional and voluntary, but a lot of people have asked for this):
SubscribeStar: https://www.subscribestar.com/yannickilcher
Patreon: https://www.patreon.com/yannickilcher
Bitcoin (BTC): bc1q49lsw3q325tr58ygf8sudx2dqfguclvngvy2cq
Ethereum (ETH): 0x7ad3513E3B8f66799f507Aa7874b1B0eBC7F85e2
Litecoin (LTC): LQW2TRyKYetVC8WjFkhpPhtpbDM4Vw7r9m
Monero (XMR): 4ACL8AGrEo5hAir8A9CeVrW8pEauWvnp1WnSDZxW7tziCDLhZAGsgzhRQABDnFy8yuM9fWJDviJPHKRjV4FWt19CJZN9D4n




Other Videos By Yannic Kilcher


2021-01-12OpenAI CLIP: ConnectingText and Images (Paper Explained)
2021-01-06OpenAI DALL·E: Creating Images from Text (Blog Post Explained)
2020-12-26Extracting Training Data from Large Language Models (Paper Explained)
2020-12-24MEMES IS ALL YOU NEED - Deep Learning Meme Review - Episode 2 (Part 1 of 2)
2020-12-16ReBeL - Combining Deep Reinforcement Learning and Search for Imperfect-Information Games (Explained)
2020-12-132M All-In into $5 Pot! WWYD? Daniel Negreanu's No-Limit Hold'em Challenge! (Poker Hand Analysis)
2020-12-01DeepMind's AlphaFold 2 Explained! AI Breakthrough in Protein Folding! What we know (& what we don't)
2020-11-29Predictive Coding Approximates Backprop along Arbitrary Computation Graphs (Paper Explained)
2020-11-22Fourier Neural Operator for Parametric Partial Differential Equations (Paper Explained)
2020-11-15[News] Soccer AI FAILS and mixes up ball and referee's bald head.
2020-11-10Underspecification Presents Challenges for Credibility in Modern Machine Learning (Paper Explained)
2020-11-02Language Models are Open Knowledge Graphs (Paper Explained)
2020-10-26Rethinking Attention with Performers (Paper Explained)
2020-10-17LambdaNetworks: Modeling long-range Interactions without Attention (Paper Explained)
2020-10-11Descending through a Crowded Valley -- Benchmarking Deep Learning Optimizers (Paper Explained)
2020-10-04An Image is Worth 16x16 Words: Transformers for Image Recognition at Scale (Paper Explained)
2020-10-03Training more effective learned optimizers, and using them to train themselves (Paper Explained)
2020-09-18The Hardware Lottery (Paper Explained)
2020-09-13Assessing Game Balance with AlphaZero: Exploring Alternative Rule Sets in Chess (Paper Explained)
2020-09-07Learning to summarize from human feedback (Paper Explained)
2020-09-02Self-classifying MNIST Digits (Paper Explained)



Tags:
deep learning
machine learning
arxiv
explained
neural networks
ai
artificial intelligence
paper
google
pipeline
ml pipeline
deep networks
epidemiology
theoretical
underspecification
overparameterization
overfitting
generalization
out of distribution
bert
gender
stereotypes
distribution shift
analysis
performance
bias
correlation
problems
quality assurance