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A Unified Framework of Online Learning Algorithms for Training Recurrent Neural Networks

机译:用于培训经常性神经网络的在线学习算法的统一框架

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We present a framework for compactly summarizing many recent results in efficient and/or biologically plausible online training of recurrent neural networks (RNN). The framework organizes algorithms according to several criteria: (a) past vs. future facing, (b) tensor structure, (c) stochastic vs. deterministic, and (d) closed form vs. numerical. These axes reveal latent conceptual connections among several recent advances in online learning. Furthermore, we provide novel mathematical intuitions for their degree of success. Testing these algorithms on two parametric task families shows that performances cluster according to our criteria. Although a similar clustering is also observed for pairwise gradient alignment, alignment with exact methods does not explain ultimate performance. This suggests the need for better comparison metrics.
机译:我们提出了一个紧凑型概念最近结果的框架,其有效和/或生物学上可符合的经常性神经网络(RNN)的合理的在线培训。 该框架根据若干标准组织算法:(a)过去与未来面对面,(b)张量结构,(c)随机与确定性,(d)封闭形式与数值。 这些轴揭示了在线学习最近的几个进步之间的潜在概念性联系。 此外,我们为他们的成功程度提供了新的数学直觉。 在两个参数任务系列上测试这些算法显示,根据我们的标准表演集群。 虽然也观察到相似的聚类,但对成对梯度对准也观察到,但是与精确方法的对齐不解释最终性能。 这表明需要更好的比较度量。

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