A Multilayer Framework for Online Metric Learning
Wenbin Li, Yanfang Liu, Jing Huo, Yinghuan Shi, Yang Gao, Lei Wang and, Jiebo Luo

TL;DR
This paper introduces a multilayer framework for online metric learning that captures nonlinear similarities in data, improving classification performance especially with complex data distributions.
Contribution
It proposes a novel Multi-Layer Online Metric Learning (MLOML) framework that learns hierarchical nonlinear metrics using a new Mahalanobis-based online algorithm, enhancing learning ability and interpretability.
Findings
MLOML outperforms traditional online metric learning on benchmark datasets.
The framework effectively captures complex data distributions.
Theoretical analysis guarantees the properties of the proposed method.
Abstract
Online metric learning has been widely applied in classification and retrieval. It can automatically learn a suitable metric from data by restricting similar instances to be separated from dissimilar instances with a given margin. However, the existing online metric learning algorithms have limited performance in real-world classifications, especially when data distributions are complex. To this end, this paper proposes a multilayer framework for online metric learning to capture the nonlinear similarities among instances. Different from the traditional online metric learning, which can only learn one metric space, the proposed Multi-Layer Online Metric Learning (MLOML) takes an online metric learning algorithm as a metric layer and learns multiple hierarchical metric spaces, where each metric layer follows a nonlinear layers for the complicated data distribution. Moreover, the forward…
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Taxonomy
TopicsText and Document Classification Technologies · China's Ethnic Minorities and Relations
MethodsAffine Coupling · Normalizing Flows
