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Spatial and Temporal Probabilistic Inference Using a Memristive Associative Memory

机译:使用忆阻联想记忆的时空概率推断

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摘要

While Bayesian inference can enhance intelligent probabilistic computing systems, such systems are often computationally expensive and not well suited for implementation on von Neumann architectures. Naive Bayes Nearest Neighbour (NBNN) is a simplified algorithm that performs Bayesian inference. In this paper, we propose a simplified, parallel, and efficient memristive architecture that approximates NBNN. Also, we introduce a simple, and a novel way to incorporate the prior knowledge (probabilities) within the memristive crossbar to enhance classification accuracy with minimal increase in power consumption. We test the algorithm and architecture on the spatial MNIST dataset of handwritten characters. We extend the same architecture to the MSR-Action3D video dataset containing spatial, temporal, and depth information, in order to determine how well our architecture scales, as well as to compare accuracy with methods that use machine learning components. Compared to other Bayesian/probabilistic systems, our approach consumes about half of the power due to the use of low power memristive devices. The power numbers are obtained from SPICE hardware simulations. Our architecture can be used in inference applications where speed and low power are of great importance, and a slight loss in accuracy is tolerable.
机译:尽管贝叶斯推理可以增强智能概率计算系统,但是这样的系统通常在计算上很昂贵,并且不太适合在冯·诺依曼体系结构上实现。朴素贝叶斯最近邻居(NBNN)是执行贝叶斯推理的简化算法。在本文中,我们提出了一种近似NBNN的简化,并行,高效的忆阻架构。另外,我们介绍了一种简单而新颖的方法,将忆阻纵横式开关内的先验知识(概率)合并到了一起,从而以最小的功耗增加来提高分类精度。我们在手写字符的空间MNIST数据集上测试了算法和体系结构。我们将相同的体系结构扩展到包含空间,时间和深度信息的MSR-Action3D视频数据集,以便确定我们的体系结构扩展的程度,以及将准确性与使用机器学习组件的方法进行比较。与其他贝叶斯/概率系统相比,由于使用了低功率忆阻器件,我们的方法消耗了大约一半的功率。功率编号是从SPICE硬件仿真获得的。我们的体系结构可用于推理应用,在这些应用中,速度和低功耗非常重要,并且可以容忍精度略有下降。

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