Supervised Contrastive Learning
The cross-entropy loss has been the default in deep learning for the last few years for supervised learning. This paper proposes a new loss, the supervised contrastive loss, and uses it to pre-train the network in a supervised fashion. The resulting model, when fine-tuned to ImageNet, achieves new state-of-the-art. https://arxiv.org/abs/2004.11362 Abstract: Cross entropy is the most widely used loss function for supervised training of image classification models. In this paper, we propose a novel training methodology that consistently outperforms cross entropy on supervised learning tasks across different architectures and data augmentations. We modify the batch contrastive loss, which has recently been shown to be very effective at learning powerful representations in the self-supervised setting. We are thus able to leverage label information more effectively than cross entropy. Clusters of points belonging to the same class are pulled together in embedding space, while simultaneously pushing apart clusters of samples from different classes. In addition to this, we leverage key ingredients such as large batch sizes and normalized embeddings, which have been shown to benefit self-supervised learning. On both ResNet-50 and ResNet-200, we outperform cross entropy by over 1%, setting a new state of the art number of 78.8% among methods that use AutoAugment data augmentation. The loss also shows clear benefits for robustness to natural corruptions on standard benchmarks on both calibration and accuracy. Compared to cross entropy, our supervised contrastive loss is more stable to hyperparameter settings such as optimizers or data augmentations. Authors: Prannay Khosla, Piotr Teterwak, Chen Wang, Aaron Sarna, Yonglong Tian, Phillip Isola, Aaron Maschinot, Ce Liu, Dilip Krishnan Links: YouTube: / yannickilcher Twitter: / ykilcher BitChute: https://www.bitchute.com/channel/yann... Minds: https://www.minds.com/ykilcher

Do ImageNet Classifiers Generalize to ImageNet? (Paper Explained)

Yann LeCun - Self-Supervised Learning: The Dark Matter of Intelligence (FAIR Blog Post Explained)

Stanford CS330 I Unsupervised Pre-Training:Contrastive Learning l 2022 I Lecture 7

AlphaFold - The Most Useful Thing AI Has Ever Done
![Od Wielkiego Wybuchu, przez Dinozaury, po Człowieka - Historia Życia na Ziemi! [Podcast Historyczny]](https://i.ytimg.com/vi/ANgLZdszmVI/hqdefault.jpg?sqp=-oaymwEjCNACELwBSFryq4qpAxUIARUAAAAAGAElAADIQj0AgKJDeAE=&rs=AOn4CLBG2FoVhTbmicjlctCRo1plCwYKVw)
Od Wielkiego Wybuchu, przez Dinozaury, po Człowieka - Historia Życia na Ziemi! [Podcast Historyczny]

Something is jamming GPS over Europe. Here's what we found

I turned an old van into a 2-STORY tiny house

Matryoshka Representation Learning and Adaptive Semantic Search

SimCLR: A Simple Framework for Contrastive Learning of Visual Representations

Contrastive Learning in PyTorch - Part 1: Introduction

JEPA - A Path Towards Autonomous Machine Intelligence (Paper Explained)

But what is a neural network? | Deep learning chapter 1

Terence Tao: Nobody Understands Why AI Actually Works

Big Self-Supervised Models are Strong Semi-Supervised Learners (Paper Explained)

The Strange Math That Predicts (Almost) Anything

Yann LeCun: Self-Supervised Learning Explained | Lex Fridman Podcast Clips

Trump Preps for 80th Birthday, Threatens to Hit Iran, Knicks Historic Win & Elon Musk Trillionaire!?

Contrastive Learning

Yann LeCun: "Energy-Based Self-Supervised Learning"

