This work investigates how hierarchically structured data can help neural networks learn conceptual representations of cathedrals. The underlying WikiScenes dataset provides a spatially organized hierarchical structure of cathedral components. We propose a novel hierarchical contrastive training approach that leverages a triplet margin loss to represent the data's spatial hierarchy in the encoder's latent space. As such, the proposed approach investigates if the dataset structure provides valuable information for self-supervised learning. We apply t-SNE to visualize the resultant latent space and evaluate the proposed approach by comparing it with other dataset-specific contrastive learning methods using a common downstream classification task. The proposed method outperforms the comparable weakly-supervised and baseline methods. Our findings suggest that dataset structure is a valuable modality for weakly-supervised learning.
@article{arxiv.2401.03312,
title = {Exploiting Data Hierarchy as a New Modality for Contrastive Learning},
author = {Arjun Bhalla and Daniel Levenson and Jan Bernhard and Anton Abilov},
journal= {arXiv preprint arXiv:2401.03312},
year = {2024}
}