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Efficient Neural Network Approximation via Bayesian Reasoning

机译:高效通过贝叶斯推理的神经网络近似

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Approximate Computing (AxC) trades off between the accuracy required by the user and the precision provided by the computing system to achieve several optimizations such as performance improvement, energy, and area reduction. Several AxC techniques have been proposed so far in the literature. They work at different abstraction levels and propose both hardware and software implementations. The standard issue of all existing approaches is the lack of a methodology to estimate the impact of a given AxC technique on the application-level accuracy. This paper proposes a probabilistic approach based on Bayesian networks to quickly estimate the impact of a given approximation technique on application-level accuracy. Moreover, we have also shown how Bayesian networks allow a backtrack analysis that automatically identifies the most sensitive components. That influence analysis dramatically reduces the space exploration for approximation techniques. Preliminary results on a simple artificial neural network shown the efficiency of the proposed approach.
机译:近似计算(AXC)在用户所需的准确性和计算系统提供的精度之间交易,以实现几种优化,例如性能提高,能量和面积减少。在文献中已经提出了几种AXC技术。他们在不同的抽象级别工作,并提出了硬件和软件实现。所有现有方法的标准问题是缺乏方法来估计给定AXC技术对应用程序级精度的影响。本文提出了一种基于贝叶斯网络的概率方法,快速估计给定近似技术对应用程序级精度的影响。此外,我们还展示了贝叶斯网络如何允许回溯分析,它会自动识别最敏感的组件。影响分析显着降低了近似技术的空间探索。简单的人工神经网络上的初步结果显示了所提出的方法的效率。

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