Training and Analysing Deep Recurrent Neural Networks
Hermans, Michiel, Schrauwen, Benjamin
–Neural Information Processing Systems
Time series often have a temporal hierarchy, with information that is spread out over multiple time scales. Common recurrent neural networks, however, do not explicitly accommodate such a hierarchy, and most research on them has been focusing on training algorithms rather than on their basic architecture. In this pa- per we study the effect of a hierarchy of recurrent neural networks on processing time series. Here, each layer is a recurrent network which receives the hidden state of the previous layer as input. This architecture allows us to perform hi- erarchical processing on difficult temporal tasks, and more naturally capture the structure of time series.
Neural Information Processing Systems
Feb-14-2020, 13:57:35 GMT
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