"571","How to Make a Low-Dimensional Representation Suitable for Diverse Tasks","We consider training classifiers for multiple tasks as a method for improving generalization and obtaining a better low-dimensional representation. To that end, we introduce a hybrid training methodology for MLP networks; the utility of the hidden-unit representation is assessed by embedding it into a 2D space using multidimensional scaling. The proposed methodology is tested on a highly nonlinear image classification task.","http://cogprints.org/571/","Intrator, Nathan and Edelman, Shimon","UNSPECIFIED"," Intrator, Nathan and Edelman, Shimon (1996) How to Make a Low-Dimensional Representation Suitable for Diverse Tasks. [Preprint] ","","1996"