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Main Authors: Song, Kun, Solozabal, Ruben, hao, Li, Ren, Lu, Abdar, Moloud, Li, Qing, Karray, Fakhri, Takac, Martin
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.22026
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author Song, Kun
Solozabal, Ruben
hao, Li
Ren, Lu
Abdar, Moloud
Li, Qing
Karray, Fakhri
Takac, Martin
author_facet Song, Kun
Solozabal, Ruben
hao, Li
Ren, Lu
Abdar, Moloud
Li, Qing
Karray, Fakhri
Takac, Martin
contents Hyperbolic representation learning is well known for its ability to capture hierarchical information. However, the distance between samples from different levels of hierarchical classes can be required large. We reveal that the hyperbolic discriminant objective forces the backbone to capture this hierarchical information, which may inevitably increase the Lipschitz constant of the backbone. This can hinder the full utilization of the backbone's generalization ability. To address this issue, we introduce second-order pooling into hyperbolic representation learning, as it naturally increases the distance between samples without compromising the generalization ability of the input features. In this way, the Lipschitz constant of the backbone does not necessarily need to be large. However, current off-the-shelf low-dimensional bilinear pooling methods cannot be directly employed in hyperbolic representation learning because they inevitably reduce the distance expansion capability. To solve this problem, we propose a kernel approximation regularization, which enables the low-dimensional bilinear features to approximate the kernel function well in low-dimensional space. Finally, we conduct extensive experiments on graph-structured datasets to demonstrate the effectiveness of the proposed method.
format Preprint
id arxiv_https___arxiv_org_abs_2410_22026
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Enhance Hyperbolic Representation Learning via Second-order Pooling
Song, Kun
Solozabal, Ruben
hao, Li
Ren, Lu
Abdar, Moloud
Li, Qing
Karray, Fakhri
Takac, Martin
Machine Learning
Artificial Intelligence
Hyperbolic representation learning is well known for its ability to capture hierarchical information. However, the distance between samples from different levels of hierarchical classes can be required large. We reveal that the hyperbolic discriminant objective forces the backbone to capture this hierarchical information, which may inevitably increase the Lipschitz constant of the backbone. This can hinder the full utilization of the backbone's generalization ability. To address this issue, we introduce second-order pooling into hyperbolic representation learning, as it naturally increases the distance between samples without compromising the generalization ability of the input features. In this way, the Lipschitz constant of the backbone does not necessarily need to be large. However, current off-the-shelf low-dimensional bilinear pooling methods cannot be directly employed in hyperbolic representation learning because they inevitably reduce the distance expansion capability. To solve this problem, we propose a kernel approximation regularization, which enables the low-dimensional bilinear features to approximate the kernel function well in low-dimensional space. Finally, we conduct extensive experiments on graph-structured datasets to demonstrate the effectiveness of the proposed method.
title Enhance Hyperbolic Representation Learning via Second-order Pooling
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2410.22026