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Multi-task manifold learning using hierarchical modeling for insufficient samples
Description
In this paper, we propose a method for multi-task manifold learning. For a set of tasks of dimensionality reduction, the aim of the method is to model each given dataset as a manifold, and map it to a low-dimensional space. For this purpose, we use a hierarchical manifold modeling approach. Thus, while each data distribution is represented by a manifold model, the obtained models are further modeled by a higher-order manifold in a function space. The higher-order model mediates the information transfer between tasks, and as a result, the performance of each task is improved. The results of simulations show that the proposed method can estimate manifolds approximately, even in cases in which a tiny number of samples are provided for each task.
Journal
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- Lecture Notes in Computer Science
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Lecture Notes in Computer Science 11303 388-398, 2018-11-18
Springer
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Keywords
Details 詳細情報について
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- CRID
- 1050295724153719424
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- HANDLE
- 10228/00009160
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- Text Lang
- en
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- Article Type
- journal article
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- Data Source
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- IRDB
- OpenAIRE