1 research outputs found
Learning Output Embeddings in Structured Prediction
A powerful and flexible approach to structured prediction consists in
embedding the structured objects to be predicted into a feature space of
possibly infinite dimension by means of output kernels, and then, solving a
regression problem in this output space. A prediction in the original space is
computed by solving a pre-image problem. In such an approach, the embedding,
linked to the target loss, is defined prior to the learning phase. In this
work, we propose to jointly learn a finite approximation of the output
embedding and the regression function into the new feature space. For that
purpose, we leverage a priori information on the outputs and also unexploited
unsupervised output data, which are both often available in structured
prediction problems. We prove that the resulting structured predictor is a
consistent estimator, and derive an excess risk bound. Moreover, the novel
structured prediction tool enjoys a significantly smaller computational
complexity than former output kernel methods. The approach empirically tested
on various structured prediction problems reveals to be versatile and able to
handle large datasets