Open-world Contrastive Learning

08/04/2022
by   Yiyou Sun, et al.
0

Recent advance in contrastive learning has shown remarkable performance. However, the vast majority of approaches are limited to the closed-world setting. In this paper, we enrich the landscape of representation learning by tapping into an open-world setting, where unlabeled samples from novel classes can naturally emerge in the wild. To bridge the gap, we introduce a new learning framework, open-world contrastive learning (OpenCon). OpenCon tackles the challenges of learning compact representations for both known and novel classes, and facilitates novelty discovery along the way. We demonstrate the effectiveness of OpenCon on challenging benchmark datasets and establish competitive performance. On the ImageNet dataset, OpenCon significantly outperforms the current best method by 11.9 classification accuracy, respectively. We hope that our work will open up new doors for future work to tackle this important problem.

READ FULL TEXT

page 2

page 21

research
12/13/2020

Open-World Class Discovery with Kernel Networks

We study an Open-World Class Discovery problem in which, given labeled t...
research
06/20/2021

Neighborhood Contrastive Learning for Novel Class Discovery

In this paper, we address Novel Class Discovery (NCD), the task of unvei...
research
10/28/2021

InfoGCL: Information-Aware Graph Contrastive Learning

Various graph contrastive learning models have been proposed to improve ...
research
01/21/2022

Dual Contrastive Learning: Text Classification via Label-Aware Data Augmentation

Contrastive learning has achieved remarkable success in representation l...
research
01/22/2022

PiCO: Contrastive Label Disambiguation for Partial Label Learning

Partial label learning (PLL) is an important problem that allows each tr...
research
08/08/2023

Exploring Transformers for Open-world Instance Segmentation

Open-world instance segmentation is a rising task, which aims to segment...
research
07/16/2020

CSI: Novelty Detection via Contrastive Learning on Distributionally Shifted Instances

Novelty detection, i.e., identifying whether a given sample is drawn fro...

Please sign up or login with your details

Forgot password? Click here to reset