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A Systems Theoretic Perspective on Transfer Learning

机译:迁移学习的系统理论视角

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The machine learning formulation of transfer learning is incomplete from a systems theoretic perspective. It focuses on algorithm parameters, features, and samples, and neglects the perspective offered by considering system structure and system dynamics. Furthermore, while the machine learning formulation serves to classify methods and literature, the systems theoretic formulation presented herein serves to provide a framework for the top-down design of transfer learning systems, including a novel definition of transfer learning and identification of key design parameters. We dichotomize the transfer learning problem into a question of transferring system structure and dynamics. We formulate our framework in the context of input-output systems. We use an actuator system as a case study throughout the paper to ground the discussion in a real-world transfer problem.
机译:从系统理论的角度来看,迁移学习的机器学习公式是不完整的。它着重于算法参数,功能和样本,而忽略了通过考虑系统结构和系统动力学而提供的观点。此外,虽然机器学习公式用于对方法和文献进行分类,但本文介绍的系统理论公式用于为自上而下的转移学习系统设计提供框架,包括转移学习的新颖定义和关键设计参数的标识。我们将转移学习问题分为转移系统结构和动力学的问题。我们在输入输出系统的上下文中制定我们的框架。在整篇文章中,我们将使用执行器系统作为案例研究,以使讨论基于现实世界中的转移问题。

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