SEAL: Simultaneous Label Hierarchy Exploration And Learning
- URL: http://arxiv.org/abs/2304.13374v1
- Date: Wed, 26 Apr 2023 08:31:59 GMT
- Title: SEAL: Simultaneous Label Hierarchy Exploration And Learning
- Authors: Zhiquan Tan, Zihao Wang, Yifan Zhang
- Abstract summary: We propose a new framework that explores the label hierarchy by augmenting the observed labels with latent labels that follow a prior hierarchical structure.
Our approach uses a 1-Wasserstein metric over the tree metric space as an objective function, which enables us to simultaneously learn a data-driven label hierarchy and perform (semi-supervised) learning.
- Score: 9.701914280306118
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Label hierarchy is an important source of external knowledge that can enhance
classification performance. However, most existing methods rely on predefined
label hierarchies that may not match the data distribution. To address this
issue, we propose Simultaneous label hierarchy Exploration And Learning (SEAL),
a new framework that explores the label hierarchy by augmenting the observed
labels with latent labels that follow a prior hierarchical structure. Our
approach uses a 1-Wasserstein metric over the tree metric space as an objective
function, which enables us to simultaneously learn a data-driven label
hierarchy and perform (semi-)supervised learning. We evaluate our method on
several datasets and show that it achieves superior results in both supervised
and semi-supervised scenarios and reveals insightful label structures. Our
implementation is available at https://github.com/tzq1999/SEAL.
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