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AnytimeNet: Controlling Time-Quality Tradeoffs in Deep Neural Network Architectures

机译:AnytimeNet:控制深度神经网络架构中的时间质量权衡

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Deeper neural networks, especially those with extremely large numbers of internal parameters, impose a heavy computational burden in obtaining sufficiently high-quality results. These burdens are impeding the application of machine learning and related techniques to time-critical computing systems. To address this challenge, we are proposing an architectural approach for neural networks that adaptively trades off computation time and solution quality to achieve high-quality solutions with timeliness. We propose a novel and general framework, AnytimeNet, that gradually inserts additional layers, so users can expect monotonically increasing quality of solutions as more computation time is expended. The framework allows users to select on the fly when to retrieve a result during runtime. Extensive evaluation results on classification tasks demonstrate that our proposed architecture provides adaptive control of classification solution quality according to the available computation time.
机译:更深的神经网络,尤其是内部参数数量巨大的神经网络,在获得足够高质量的结果时会承受沉重的计算负担。这些负担阻碍了机器学习和相关技术在时间紧迫的计算系统中的应用。为了应对这一挑战,我们提出了一种神经网络的体系结构方法,该方法可以自适应地权衡计算时间和解决方案质量,从而及时获得高质量的解决方案。我们提出了一个新颖而通用的框架AnytimeNet,该框架逐渐插入了其他层,因此随着更多的计算时间被花费,用户可以期望解决方案的质量单调提高。该框架允许用户在运行时动态选择何时检索结果。关于分类任务的大量评估结果表明,我们提出的体系结构根据可用的计算时间提供了对分类解决方案质量的自适应控制。

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