Evolving Metric Learning for Incremental and Decremental Features
Jiahua Dong, Yang Cong, Gan Sun, Tao Zhang, Xu Tang, Xiaowei Xu

TL;DR
This paper introduces an online Evolving Metric Learning (EML) model that effectively handles both incremental and decremental feature changes in large-scale data, using a smoothed Wasserstein metric to improve similarity measurement.
Contribution
The paper proposes a novel EML model with a two-stage process and a Wasserstein metric, enabling simultaneous handling of feature evolution and reducing computational complexity.
Findings
Outperforms existing methods on multiple datasets.
Effectively manages high-dimensional, large-scale data.
Handles both one-shot and multi-shot scenarios.
Abstract
Online metric learning has been widely exploited for large-scale data classification due to the low computational cost. However, amongst online practical scenarios where the features are evolving (e.g., some features are vanished and some new features are augmented), most metric learning models cannot be successfully applied to these scenarios, although they can tackle the evolving instances efficiently. To address the challenge, we develop a new online Evolving Metric Learning (EML) model for incremental and decremental features, which can handle the instance and feature evolutions simultaneously by incorporating with a smoothed Wasserstein metric distance. Specifically, our model contains two essential stages: a Transforming stage (T-stage) and a Inheriting stage (I-stage). For the T-stage, we propose to extract important information from vanished features while neglecting…
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Taxonomy
TopicsFace recognition and analysis · Face and Expression Recognition · Machine Learning in Healthcare
