HCV: Hierarchy-Consistency Verification for Incremental
Implicitly-Refined Classification
- URL: http://arxiv.org/abs/2110.11148v2
- Date: Fri, 22 Oct 2021 13:51:02 GMT
- Title: HCV: Hierarchy-Consistency Verification for Incremental
Implicitly-Refined Classification
- Authors: Kai Wang, Xialei Liu, Luis Herranz, Joost van de Weijer
- Abstract summary: Human beings learn and accumulate hierarchical knowledge over their lifetime.
Current incremental learning methods lack the ability to build a concept hierarchy by associating new concepts to old ones.
We propose Hierarchy-Consistency Verification (HCV) as an enhancement to existing continual learning methods.
- Score: 48.68128465443425
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Human beings learn and accumulate hierarchical knowledge over their lifetime.
This knowledge is associated with previous concepts for consolidation and
hierarchical construction. However, current incremental learning methods lack
the ability to build a concept hierarchy by associating new concepts to old
ones. A more realistic setting tackling this problem is referred to as
Incremental Implicitly-Refined Classification (IIRC), which simulates the
recognition process from coarse-grained categories to fine-grained categories.
To overcome forgetting in this benchmark, we propose Hierarchy-Consistency
Verification (HCV) as an enhancement to existing continual learning methods.
Our method incrementally discovers the hierarchical relations between classes.
We then show how this knowledge can be exploited during both training and
inference. Experiments on three setups of varying difficulty demonstrate that
our HCV module improves performance of existing continual learning methods
under this IIRC setting by a large margin. Code is available in
https://github.com/wangkai930418/HCV_IIRC.
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