Novel Class Discovery without Forgetting
- URL: http://arxiv.org/abs/2207.10659v1
- Date: Thu, 21 Jul 2022 17:54:36 GMT
- Title: Novel Class Discovery without Forgetting
- Authors: K J Joseph, Sujoy Paul, Gaurav Aggarwal, Soma Biswas, Piyush Rai, Kai
Han, Vineeth N Balasubramanian
- Abstract summary: We identify and formulate a new, pragmatic problem setting of NCDwF: Novel Class Discovery without Forgetting.
We propose a machine learning model to incrementally discover novel categories of instances from unlabeled data.
We introduce experimental protocols based on CIFAR-10, CIFAR-100 and ImageNet-1000 to measure the trade-off between knowledge retention and novel class discovery.
- Score: 72.52222295216062
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Humans possess an innate ability to identify and differentiate instances that
they are not familiar with, by leveraging and adapting the knowledge that they
have acquired so far. Importantly, they achieve this without deteriorating the
performance on their earlier learning. Inspired by this, we identify and
formulate a new, pragmatic problem setting of NCDwF: Novel Class Discovery
without Forgetting, which tasks a machine learning model to incrementally
discover novel categories of instances from unlabeled data, while maintaining
its performance on the previously seen categories. We propose 1) a method to
generate pseudo-latent representations which act as a proxy for (no longer
available) labeled data, thereby alleviating forgetting, 2) a
mutual-information based regularizer which enhances unsupervised discovery of
novel classes, and 3) a simple Known Class Identifier which aids generalized
inference when the testing data contains instances form both seen and unseen
categories. We introduce experimental protocols based on CIFAR-10, CIFAR-100
and ImageNet-1000 to measure the trade-off between knowledge retention and
novel class discovery. Our extensive evaluations reveal that existing models
catastrophically forget previously seen categories while identifying novel
categories, while our method is able to effectively balance between the
competing objectives. We hope our work will attract further research into this
newly identified pragmatic problem setting.
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