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Main Authors: Malashin, Roman, Yachnaya, Valeria, Mullin, Alexander
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.12125
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author Malashin, Roman
Yachnaya, Valeria
Mullin, Alexander
author_facet Malashin, Roman
Yachnaya, Valeria
Mullin, Alexander
contents We investigate the training dynamics of deep classifiers by examining how hierarchical relationships between classes evolve during training. Through extensive experiments, we argue that the learning process in classification problems can be understood through the lens of label clustering. Specifically, we observe that networks tend to distinguish higher-level (hypernym) categories in the early stages of training, and learn more specific (hyponym) categories later. We introduce a novel framework to track the evolution of the feature manifold during training, revealing how the hierarchy of class relations emerges and refines across the network layers. Our analysis demonstrates that the learned representations closely align with the semantic structure of the dataset, providing a quantitative description of the clustering process. Notably, we show that in the hypernym label space, certain properties of neural collapse appear earlier than in the hyponym label space, helping to bridge the gap between the initial and terminal phases of learning. We believe our findings offer new insights into the mechanisms driving hierarchical learning in deep networks, paving the way for future advancements in understanding deep learning dynamics.
format Preprint
id arxiv_https___arxiv_org_abs_2502_12125
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Hypernym Bias: Unraveling Deep Classifier Training Dynamics through the Lens of Class Hierarchy
Malashin, Roman
Yachnaya, Valeria
Mullin, Alexander
Artificial Intelligence
Machine Learning
We investigate the training dynamics of deep classifiers by examining how hierarchical relationships between classes evolve during training. Through extensive experiments, we argue that the learning process in classification problems can be understood through the lens of label clustering. Specifically, we observe that networks tend to distinguish higher-level (hypernym) categories in the early stages of training, and learn more specific (hyponym) categories later. We introduce a novel framework to track the evolution of the feature manifold during training, revealing how the hierarchy of class relations emerges and refines across the network layers. Our analysis demonstrates that the learned representations closely align with the semantic structure of the dataset, providing a quantitative description of the clustering process. Notably, we show that in the hypernym label space, certain properties of neural collapse appear earlier than in the hyponym label space, helping to bridge the gap between the initial and terminal phases of learning. We believe our findings offer new insights into the mechanisms driving hierarchical learning in deep networks, paving the way for future advancements in understanding deep learning dynamics.
title Hypernym Bias: Unraveling Deep Classifier Training Dynamics through the Lens of Class Hierarchy
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2502.12125