Limits of End-to-End Learning

April 26, 2017 ยท Declared Dead ยท ๐Ÿ› Asian Conference on Machine Learning

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Authors Tobias Glasmachers arXiv ID 1704.08305 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 171 Venue Asian Conference on Machine Learning Last Checked 3 months ago
Abstract
End-to-end learning refers to training a possibly complex learning system by applying gradient-based learning to the system as a whole. End-to-end learning system is specifically designed so that all modules are differentiable. In effect, not only a central learning machine, but also all "peripheral" modules like representation learning and memory formation are covered by a holistic learning process. The power of end-to-end learning has been demonstrated on many tasks, like playing a whole array of Atari video games with a single architecture. While pushing for solutions to more challenging tasks, network architectures keep growing more and more complex. In this paper we ask the question whether and to what extent end-to-end learning is a future-proof technique in the sense of scaling to complex and diverse data processing architectures. We point out potential inefficiencies, and we argue in particular that end-to-end learning does not make optimal use of the modular design of present neural networks. Our surprisingly simple experiments demonstrate these inefficiencies, up to the complete breakdown of learning.
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