Reviews: Learning nonlinear level sets for dimensionality reduction in function approximation
–Neural Information Processing Systems
The paper proposes an interesting dimensionality reduction method for function approximation by generalizing linear level set learning methods to non linear level sets using the RevNet model structure and by introducing a loss function designed to give preference to functions that are sensitive only to few non linear coordinates. The paper is well-written and easy to understand. The methodology is clearly described and the experimental results are convincing.
Neural Information Processing Systems
Jan-23-2025, 08:51:53 GMT