基于gru深度学习模型的预测方法

A. Almalki, P. Wocjan
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引用次数: 2

摘要

在本研究中,世界模型采用了一种改进的RNN模型,该模型由双向门控循环单元(BGRU)进行,而不是传统的长短期记忆(LSTM)模型。与LSTM相比,BGRU在执行和训练时往往使用更少的内存,因为它使用更少的训练参数。然而,LSTM模型对于使用较长序列的数据集提供了更高的准确性。通过实际应用,BGRU模型取得了较好的性能效果。在BGRU中,内存与网络相结合。GRU中没有更新门和遗忘。遗忘门和更新门被视为一个单元,因此这是参数缩减的主要原因。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Method based upon GRU-based Deep Learning Model
In this research, the world model has a modified RNN model carried out by a bi-directional gated recurrent unit (BGRU) as opposed to a traditional long short-term memory (LSTM) model. BGRU tends to use less memory while executing and training faster than an LSTM, as it uses fewer training parameters. However, the LSTM model provides greater accuracy with datasets using longer sequences. Based upon practical implementation, the BGRU model produced better performance results. In BGRU, the memory is combined with the network. There is no update gate and forget in the GRU. The forget and update gate are treated as one unit thus it is the primary reason of parameter reduction.
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