Hierarchical Convolutional Neural Network with Knowledge Complementation for Long-Tailed Classification

卷积神经网络 计算机科学 人工智能 互补 机器学习 人工神经网络 模式识别(心理学) 生物 遗传学 表型 基因
作者
Hong Zhao,Zhengyu Li,Wenqi He,Yan Zhao
出处
期刊:ACM Transactions on Knowledge Discovery From Data [Association for Computing Machinery]
标识
DOI:10.1145/3653717
摘要

Existing methods based on transfer learning leverage auxiliary information to help tail generalization and improve the performance of the tail classes. However, they cannot fully exploit the relationships between auxiliary information and tail classes and bring irrelevant knowledge to the tail classes. To solve this problem, we propose a hierarchical CNN with knowledge complementation, which regards hierarchical relationships as auxiliary information and transfers relevant knowledge to tail classes. First, we integrate semantics and clustering relationships as hierarchical knowledge into the CNN to guide feature learning. Then, we design a complementary strategy to jointly exploit the two types of knowledge, where semantic knowledge acts as a prior dependence and clustering knowledge reduces the negative information caused by excessive semantic dependence (i.e., semantic gaps). In this way, the CNN facilitates the utilization of the two complementary hierarchical relationships and transfers useful knowledge to tail data to improve long-tailed classification accuracy. Experimental results on public benchmarks show that the proposed model outperforms existing methods. In particular, our model improves accuracy by 3.46% compared with the second-best method on the long-tailed tieredImageNet dataset.

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