1. Propagating distributions on a hypergraph by dual information regularization
- Author
-
Koji Tsuda
- Subjects
Hypergraph ,Exponential family ,business.industry ,Metabolic network ,Pattern recognition ,Information geometry ,Artificial intelligence ,business ,Algorithm ,Two step algorithm ,Regularization (mathematics) ,Mathematics - Abstract
In the information regularization framework by Corduneanu and Jaakkola (2005), the distributions of labels are propagated on a hypergraph for semi-supervised learning. The learning is efficiently done by a Blahut-Arimoto-like two step algorithm, but, unfortunately, one of the steps cannot be solved in a closed form. In this paper, we propose a dual version of information regularization, which is considered as more natural in terms of information geometry. Our learning algorithm has two steps, each of which can be solved in a closed form. Also it can be naturally applied to exponential family distributions such as Gaussians. In experiments, our algorithm is applied to protein classification based on a metabolic network and known functional categories.
- Published
- 2005
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