Semi-supervised Regression using Hessian energy with an application to semi-supervised dimensionality reduction
Kim, Kwang I., Steinke, Florian, Hein, Matthias
–Neural Information Processing Systems
Semi-supervised regression based on the graph Laplacian suffers from the fact that the solution is biased towards a constant and the lack of extrapolating power. Outgoing from these observations we propose to use the second-order Hessian energy for semi-supervised regression which overcomes both of these problems, in particular, if the data lies on or close to a low-dimensional submanifold in the feature space, the Hessian energy prefers functions which vary ``linearly with respect to the natural parameters in the data. This property makes it also particularly suited for the task of semi-supervised dimensionality reduction where the goal is to find the natural parameters in the data based on a few labeled points. The experimental result suggest that our method is superior to semi-supervised regression using Laplacian regularization and standard supervised methods and is particularly suited for semi-supervised dimensionality reduction.
Neural Information Processing Systems
Dec-31-2009
- Country:
- Europe > Germany (0.28)
- North America > United States
- New York (0.14)
- Genre:
- Research Report > New Finding (0.34)
- Technology: