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Learning Sequential Data with the Help of Linear Systems

机译:借助线性系统学习顺序数据

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The aim of the paper is to show that linear dynamical systems can be quite useful when dealing with sequence learning tasks. According to the complexity of the problem to face, linear dynamical systems may directly contribute to provide a good solution at a reduced computational cost, or indirectly provide support at a pre-training stage for nonlinear models. We present and discuss several approaches, both linear and nonlinear, where linear dynamical systems play an important role. These approaches are empirically assessed on two nontrivial datasets of sequences on a prediction task. Experimental results show that indeed linear dynamical systems can either directly provide a satisfactory solution, as well as they may be crucial for the success of more sophisticated nonlinear approaches.
机译:本文的目的是表明线性动力学系统在处理序列学习任务时非常有用。根据要面对的问题的复杂性,线性动力学系统可以直接以降低的计算成本提供良好的解决方案,或者在非线性模型的预训练阶段间接提供支持。我们提出并讨论了线性和非线性的几种方法,其中线性动力系统起着重要的作用。对预测任务上两个非平凡的序列数据集凭经验评估这些方法。实验结果表明,线性动力系统的确可以直接提供令人满意的解决方案,并且对于更复杂的非线性方法的成功至关重要。

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