动态皮层记忆网络的分析

S. Otte, A. Zell, M. Liwicki
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引用次数: 8

摘要

最近推出的动态皮层记忆(DCM)是长短期记忆(LSTM)的扩展,提供了系统的门间连接基础设施。本文更详细地研究了DCM网络的行为,并探讨了其在基于梯度的序列学习领域的潜力。因此,针对神经信号处理系统的特定关键特征,即对噪声的鲁棒性和时间翘曲能力,对DCM网络进行了分析。在所有的实验中,我们证明了dcm比lstm收敛得更快,并且产生了更好的结果。因此,与纯LSTM网络相比,DCM网络总体上需要更少的权重来获得相同甚至更好的结果。此外,提出了一种有前途的神经实现的实时在线信号滤波方法,该方法在无延迟的情况下仍然提供比传统低通滤波器更好的精确滤波性能。我们还表明,神经网络可以做显式时间翘曲,甚至比动态时间翘曲(DTW)算法更好,动态时间翘曲(DTW)算法是为此任务开发的专门方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An analysis of Dynamic Cortex Memory networks
The recently introduced Dynamic Cortex Memory (DCM) is an extension of the Long Short Term Memory (LSTM) providing a systematic inter-gate connection infrastructure. In this paper the behavior of DCM networks is studied in more detail and their potential in the field of gradient-based sequence learning is investigated. Hereby, DCM networks are analyzed regarding particular key features of neural signal processing systems, namely, their robustness to noise and their ability of time warping. Throughout all experiments we show that DCMs converge faster and yield better results than LSTMs. Hereby, DCM networks require overall less weights than pure LSTM networks to achieve the same or even better results. Besides, a promising neurally implemented just-in-time online signal filter approach is presented, which is latency-free and still provides an accurate filtering performance much better than conventional low-pass filters. We also show that the neural networks can do explicit time warping even better than the Dynamic Time Warping (DTW) algorithm, which is a specialized method developed for this task.
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