Transcription of Taskonomy: Disentangling Task Transfer Learning
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Taskonomy: Disentangling Task Transfer LearningAmir R. Zamir1,2 Alexander Sax1 William Shen1 Leonidas Guibas1 Jitendra Malik2 Silvio Savarese11 Stanford University2 University of California, visual tasks have a relationship, or are they unre-lated? For instance, could having surface normals sim-plify estimating the depth of an image? Intuition answersthese questions positively, implying existence of astructureamong visual tasks. Knowing this structure has notable val-ues; it is the concept underlying Transfer Learning and pro-vides a principled way for identifying redundancies acrosstasks, in order to, for instance, seamlessly reuse supervi-sion among related tasks or solve many tasks in one systemwithout piling up the propose a fully computational approach for model-ing the structure of the space of visual tasks.
ing provably efficient comprehensive/universal perception models [34,4], i.e. ones that can solve a large set of tasks before becoming intractable in supervision or computation
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Chapter 3 Applying Learning Theories to Margaret, Learning, Transfer, Application for Credit Transfer through, Application for Credit Transfer through Credit for Recognised Learning, ECTS Users’ Guide, European Commission, And transfer, Multimedia learning, Student-Centered Learning, Dark knowledge, Learning in the Digital Age, FACULTY CREDENTIALS