Kernel-Based Lifelong Multitask Multiview Learning

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This is a work of the United States Government. In accordance with 17 U.S.C. 105, no copyright protection is available for such works under U.S. Law.
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Abstract

Lifelong learning capitalizes on the shared skill structure present in a stream of tasks that arrive over time to improve upon the performance of single-task learners. In contemporary lifelong learning applications, it is often the case that there are multiple sensing modalities or views associated with each task. A crucial aspect in lifelong multitask multiview learning is to capture not only the shared structure among the tasks but also across views effectively. In this work, a nonparametric kernel-based learning framework is adopted to model even nonlinear shared structures in the tasks and views in a flexible and robust way. An efficient lifelong learning formulation is derived by judicious approximation of the per-task learning objectives, based on which the shared skill libraries can be updated online in function space. Numerical tests verify the efficacy of the proposed approach.