Similarity Learning via Kernel Preserving Embedding

Authors

  • Zhao Kang University of Electronic Science and Technology of China
  • Yiwei Lu University of Electronic Science and Technology of China
  • Yuanzhang Su University of Electronic Science and Technology of China
  • Changsheng Li University of Electronic Science and Technology of China
  • Zenglin Xu University of Electronic Science and Technology of China

DOI:

https://doi.org/10.1609/aaai.v33i01.33014057

Abstract

Data similarity is a key concept in many data-driven applications. Many algorithms are sensitive to similarity measures. To tackle this fundamental problem, automatically learning of similarity information from data via self-expression has been developed and successfully applied in various models, such as low-rank representation, sparse subspace learning, semisupervised learning. However, it just tries to reconstruct the original data and some valuable information, e.g., the manifold structure, is largely ignored. In this paper, we argue that it is beneficial to preserve the overall relations when we extract similarity information. Specifically, we propose a novel similarity learning framework by minimizing the reconstruction error of kernel matrices, rather than the reconstruction error of original data adopted by existing work. Taking the clustering task as an example to evaluate our method, we observe considerable improvements compared to other state-ofthe-art methods. More importantly, our proposed framework is very general and provides a novel and fundamental building block for many other similarity-based tasks. Besides, our proposed kernel preserving opens up a large number of possibilities to embed high-dimensional data into low-dimensional space.

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Published

2019-07-17

How to Cite

Kang, Z., Lu, Y., Su, Y., Li, C., & Xu, Z. (2019). Similarity Learning via Kernel Preserving Embedding. Proceedings of the AAAI Conference on Artificial Intelligence, 33(01), 4057-4064. https://doi.org/10.1609/aaai.v33i01.33014057

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Section

AAAI Technical Track: Machine Learning