Learning a Unified Classifier Incrementally via Rebalancing
University of Science and Technology of China · XLAB (Slovenia) · +3 more institutions
Abstract
Conventionally, deep neural networks are trained offline, relying on a large dataset prepared in advance. This paradigm is often challenged in real-world applications, e.g. online services that involve continuous streams of incoming data. Recently, incremental learning receives increasing attention, and is considered as a promising solution to the practical challenges mentioned above. However, it has been observed that incremental learning is subject to a fundamental difficulty -- catastrophic forgetting, namely adapting a model to new data often results in severe performance degradation on previous tasks or classes. Our study reveals that the imbalance between previous and new data is a crucial cause to this…
Citation impact
- FWCI
- 53.39
- Percentile
- 100%
- References
- 56
Authors
5- SHSaihui HouCorresponding
University of Science and Technology of China
- XPXinyu Pan
XLAB (Slovenia), Chinese University of Hong Kong, University of Hong Kong
- CCChen Change Loy
Nanyang Technological University
- ZWZilei Wang
University of Science and Technology of China
- DLDahua Lin
Chinese University of Hong Kong
Topics & keywords
- Computer science
- Forgetting
- Classifier (UML)
- Artificial intelligence
- Machine learning
- Normalization (sociology)
- Artificial neural network
- Incremental learning