VOS: Learning What You Don't Know by Virtual Outlier Synthesis (Paper Explained)

Subscribers:
284,000
Published on ● Video Link: https://www.youtube.com/watch?v=i-J4T3uLC9M



Duration: 35:58
13,455 views
426


#vos #outliers #deeplearning
Sponsor: Assembly AI
Check them out here: https://www.assemblyai.com/?utm_source=youtube&utm_medium=social&utm_campaign=yannic1

Outliers are data points that are highly unlikely to be seen in the training distribution, and therefore deep neural networks have troubles when dealing with them. Many approaches to detecting outliers at inference time have been proposed, but most of them show limited success. This paper presents Virtual Outlier Synthesis, which is a method that pairs synthetic outliers, forged in the latent space, with an energy-based regularization of the network at training time. The result is a deep network that can reliably detect outlier datapoints during inference with minimal overhead.

OUTLINE:
0:00 - Intro
2:00 - Sponsor: Assembly AI (Link below)
4:05 - Paper Overview
6:45 - Where do traditional classifiers fail?
11:00 - How object detectors work
17:00 - What are virtual outliers and how are they created?
24:00 - Is this really an appropriate model for outliers?
26:30 - How virtual outliers are used during training
34:00 - Plugging it all together to detect outliers

Paper: https://arxiv.org/abs/2202.01197
Code: https://github.com/deeplearning-wisc/vos

Abstract:
Out-of-distribution (OOD) detection has received much attention lately due to its importance in the safe deployment of neural networks. One of the key challenges is that models lack supervision signals from unknown data, and as a result, can produce overconfident predictions on OOD data. Previous approaches rely on real outlier datasets for model regularization, which can be costly and sometimes infeasible to obtain in practice. In this paper, we present VOS, a novel framework for OOD detection by adaptively synthesizing virtual outliers that can meaningfully regularize the model's decision boundary during training. Specifically, VOS samples virtual outliers from the low-likelihood region of the class-conditional distribution estimated in the feature space. Alongside, we introduce a novel unknown-aware training objective, which contrastively shapes the uncertainty space between the ID data and synthesized outlier data. VOS achieves state-of-the-art performance on both object detection and image classification models, reducing the FPR95 by up to 7.87% compared to the previous best method. Code is available at this https URL.

Authors: Xuefeng Du, Zhaoning Wang, Mu Cai, Yixuan Li

Links:
Merch: http://store.ykilcher.com
TabNine Code Completion (Referral): http://bit.ly/tabnine-yannick
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
LinkedIn: https://www.linkedin.com/in/ykilcher
BiliBili: https://space.bilibili.com/2017636191

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


2022-03-29Author Interview - Memory-assisted prompt editing to improve GPT-3 after deployment
2022-03-28Memory-assisted prompt editing to improve GPT-3 after deployment (Machine Learning Paper Explained)
2022-03-26Author Interview - Typical Decoding for Natural Language Generation
2022-03-25Typical Decoding for Natural Language Generation (Get more human-like outputs from language models!)
2022-03-24One Model For All The Tasks - BLIP (Author Interview)
2022-03-23BLIP: Bootstrapping Language-Image Pre-training for Unified Vision-Language Understanding&Generation
2022-03-21[ML News] AI Threatens Biological Arms Race
2022-03-20Active Dendrites avoid catastrophic forgetting - Interview with the Authors
2022-03-18Avoiding Catastrophe: Active Dendrites Enable Multi-Task Learning in Dynamic Environments (Review)
2022-03-14Author Interview - VOS: Learning What You Don't Know by Virtual Outlier Synthesis
2022-03-13VOS: Learning What You Don't Know by Virtual Outlier Synthesis (Paper Explained)
2022-03-08Spurious normativity enhances learning of compliance and enforcement behavior in artificial agents
2022-03-06First Author Interview: AI & formal math (Formal Mathematics Statement Curriculum Learning)
2022-03-05OpenAI tackles Math - Formal Mathematics Statement Curriculum Learning (Paper Explained)
2022-03-04[ML News] DeepMind controls fusion | Yann LeCun's JEPA architecture | US: AI can't copyright its art
2022-03-02AlphaCode - with the authors!
2022-03-01Competition-Level Code Generation with AlphaCode (Paper Review)
2022-02-28Can Wikipedia Help Offline Reinforcement Learning? (Author Interview)
2022-02-26Can Wikipedia Help Offline Reinforcement Learning? (Paper Explained)
2022-02-23[ML Olds] Meta Research Supercluster | OpenAI GPT-Instruct | Google LaMDA | Drones fight Pigeons
2022-02-21Listening to You! - Channel Update (Author Interviews)



Tags:
deep learning
machine learning
arxiv
explained
neural networks
ai
artificial intelligence
paper
paper explained
virtual outliers
how to detect outliers
deep learning outliers
deep learning outlier detection
vos
deep learning energy
latent space outliers
density estimation
classification boundaries
generative models