consistent regularization approach
A Consistent Regularization Approach for Structured Prediction
We propose and analyze a regularization approach for structured prediction problems. We characterize a large class of loss functions that allows to naturally embed structured outputs in a linear space. We exploit this fact to design learning algorithms using a surrogate loss approach and regularization techniques. We prove universal consistency and finite sample bounds characterizing the generalization properties of the proposed method. Experimental results are provided to demonstrate the practical usefulness of the proposed approach.
Reviews: A Consistent Regularization Approach for Structured Prediction
In my view, this is a beautiful paper that will advance the field of structured prediction significantly and provides a platform for further development. Nevertheless, the paper should be better related to existing work on vector-valued regression for structured output. A recent related work is but there are others: C eline Brouard, Florence D'Alch e-Buc, Marie Szafranski. The paper is generally well written, I have only few remarks: - line 70-72: you might note already here that this amounts to a ridge regression problem in the output Hilbert space. Good to mention it already here.
A Consistent Regularization Approach for Structured Prediction
We propose and analyze a regularization approach for structured prediction problems. We characterize a large class of loss functions that allows to naturally embed structured outputs in a linear space. We exploit this fact to design learning algorithms using a surrogate loss approach and regularization techniques. We prove universal consistency and finite sample bounds characterizing the generalization properties of the proposed method. Experimental results are provided to demonstrate the practical usefulness of the proposed approach.
A Consistent Regularization Approach for Structured Prediction
Ciliberto, Carlo, Rosasco, Lorenzo, Rudi, Alessandro
We propose and analyze a regularization approach for structured prediction problems. We characterize a large class of loss functions that allows to naturally embed structured outputs in a linear space. We exploit this fact to design learning algorithms using a surrogate loss approach and regularization techniques. We prove universal consistency and finite sample bounds characterizing the generalization properties of the proposed method. Experimental results are provided to demonstrate the practical usefulness of the proposed approach.
A Consistent Regularization Approach for Structured Prediction
Ciliberto, Carlo, Rosasco, Lorenzo, Rudi, Alessandro
We propose and analyze a regularization approach for structured prediction problems. We characterize a large class of loss functions that allows to naturally embed structured outputs in a linear space. We exploit this fact to design learning algorithms using a surrogate loss approach and regularization techniques. We prove universal consistency and finite sample bounds characterizing the generalization properties of the proposed method. Experimental results are provided to demonstrate the practical usefulness of the proposed approach.