| dc.citation.conferencePlace |
ZZ |
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| dc.citation.title |
International Conference on Learning Representations |
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| dc.contributor.author |
Lee, Yonghyeon |
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| dc.contributor.author |
Yoon, Sangwoong |
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| dc.contributor.author |
Son, Minjun |
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| dc.contributor.author |
Park, Frank C. |
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| dc.date.accessioned |
2026-02-23T15:47:13Z |
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| dc.date.available |
2026-02-23T15:47:13Z |
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| dc.date.created |
2026-02-23 |
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| dc.date.issued |
2022-04-25 |
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| dc.description.abstract |
The recent success of autoencoders for representation learning can be traced in large part to the addition of a regularization term. Such regularized autoencoders “constrain” the representation so as to prevent overfitting to the data while producing a parsimonious generative model. A regularized autoencoder should in principle learn not only the data manifold, but also a set of geometry-preserving coordinates for the latent representation space; by geometry-preserving we mean that the latent space representation should attempt to preserve actual distances and angles on the data manifold. In this paper we first formulate a hierarchy for geometry-preserving mappings (isometry, conformal mapping of degree k, areapreserving mappings). We then show that a conformal regularization term of degree zero – i.e., one that attempts to preserve angles and relative distances, instead of angles and exact distances – produces data representations that are superior to other existing methods. Applying our algorithm to an unsupervised information retrieval task for CelebA data with 40 annotations, we achieve 79% precision at five retrieved images, an improvement of more than 10% compared to recent related work. Code is available at https://github.com/Gabe-YHLee/IRVAE-public. |
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| dc.identifier.bibliographicCitation |
International Conference on Learning Representations |
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| dc.identifier.uri |
https://scholarworks.unist.ac.kr/handle/201301/90540 |
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| dc.language |
영어 |
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| dc.publisher |
International Conference on Learning Representations |
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| dc.title |
Regularized Autoencoders for Isometric Representation Learning |
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| dc.type |
Conference Paper |
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| dc.date.conferenceDate |
2022-04-25 |
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