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B1358
Title: Vector-valued infinite task learning in style transfer Authors:  Zoltan Szabo - LSE (United Kingdom) [presenting]
Abstract: Style transfer is a central problem of machine learning. In various applications of style transfer, however, there is a continuum of styles to handle. We show how one can leverage vector-valued reproducing kernel Hilbert spaces and infinite task learning to tackle this challenge in a principled way. The approach is instantiated in emotion transfer, achieving low reconstruction cost on various benchmarks.