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Online Linear Subspace Learning in an Analog Array Computing Architecture

机译:模拟阵列计算架构中的在线线性子空间学习

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We map to an analog array computing framework a recently presented algorithm for online learning of linear subspaces using local learning rules. We demonstrate that the considered algorithm is well suited for implementation in analog array computing architectures, and that the computation of neural activity dynamics required in the learning can be realized in an efficient homeostatic manner using an analog continuous-time circuit.
机译:我们映射到模拟阵列计算框架,最近呈现的算法用于使用本地学习规则的线性子空间的在线学习算法。我们证明所考虑的算法非常适合于在模拟阵列计算架构中实现,并且可以使用模拟连续时间电路以高效的稳态方式实现学习中所需的神经活动动态的计算。

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