Feature Identification for Hierarchical Contrastive Learning

Ott, Julius, Vysotskaya, Nastassia, Sun, Huawei, Servadei, Lorenzo, Wille, Robert

arXiv.org Artificial Intelligence 

ABSTRACT Hierarchical classification is a crucial task in many applications, where objects are organized into multiple levels of categories. Thus, we propose two novel hierarchical contrastive learning (HMLC) methods. The first, leverages a Gaussian Mixture Model (G-HMLC) and the second uses an attention mechanism to capture hierarchy-specific features (A-HMLC), imitating human processing. On the competitive CIFAR100 and ModelNet40 datasets, our method achieves state-of-the-art performance in linear evaluation, outperforming existing hierarchical contrastive learning methods by 2 percentage points in terms of accuracy. The effectiveness of our approach is backed by both quantitative and qualitative results, highlighting its potential for applications in computer vision and beyond.